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<feed xmlns="http://www.w3.org/2005/Atom"><title>Modelplot[R/py] introduction</title><link href="https://modelplot.github.io/" rel="alternate"></link><link href="https://modelplot.github.io/feeds/python.tag.atom.xml" rel="self"></link><id>https://modelplot.github.io/</id><updated>2018-09-20T14:00:00+02:00</updated><entry><title>Introduction to modelplotpy</title><link href="https://modelplot.github.io/intro_modelplotpy.html" rel="alternate"></link><published>2018-09-20T14:00:00+02:00</published><updated>2018-09-20T14:00:00+02:00</updated><author><name>Pieter Marcus</name></author><id>tag:modelplot.github.io,2018-09-20:intro_modelplotpy.html</id><summary type="html">&lt;style type="text/css"&gt;/*!
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&lt;h3 id="Why-ROC-curves-are-a-bad-idea-to-explain-your-model-to-business-people"&gt;Why ROC curves are a bad idea to explain your model to business people&lt;a class="anchor-link" href="#Why-ROC-curves-are-a-bad-idea-to-explain-your-model-to-business-people"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;h3 id="Summary"&gt;Summary&lt;a class="anchor-link" href="#Summary"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;In this blog we explain four most valuable evaluation plots to assess the business value of a predictive model. These plots are cumulative gains, cumulative lift, response and cumulative response. Since these visualisations are not included in most popular model building packages or modules in R and Python, we show how you can easily create these plots for your own predictive models with our modelplotpy python module and our &lt;a href="https://modelplot.github.io/modelplotr.html"&gt;modelplotr R package (Prefer R? Read all about modelplotr here!)&lt;/a&gt;. This will help you to explain your model's business value in laymans terms to non-techies.&lt;/p&gt;
&lt;h3 id="Intro"&gt;Intro&lt;a class="anchor-link" href="#Intro"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;&lt;img src="img/cartoonrocplot.jpg" alt=" "&gt;&lt;/p&gt;
&lt;blockquote&gt;&lt;p&gt;‘...And as we can see clearly on this ROC plot, the sensitivity of the model at the value of 0.2 on one minus the specificity is quite high! Right?...’.&lt;/p&gt;
&lt;/blockquote&gt;
&lt;p&gt;If your fellow business colleagues didn't already wander away during your presentation about your fantastic predictive model, it will definitely push them over the edge when you start talking like this. Why? Because the ROC curve is not easy to quickly explain and also difficult to translate into answers on the business questions your spectators have. And these business questions were the reason you've built a model in the first place!&lt;/p&gt;
&lt;p&gt;What business questions? We build all kinds of supervised classification problems. Such as predictive models to select the best records in a dataset, which can be customers, leads, items, events... For instance: You want to know which of your active customers have the highest probability to churn; you need to select those prospects that are most likely to respond to an offer; you have to identify transactions that have a high risk to be fraudulent. During your presentation, your audience is therefore mainly focused on answering questions like &lt;em&gt;Does your model enable us to our target audience? How much better are we, using your model? What will the expected response on our campaign be?&lt;/em&gt;&lt;/p&gt;
&lt;p&gt;During our model building efforts, we should already be focused on verifying how well the model performs. Often, we do so by training the model parameters on a selection or subset of records and test the performance on a holdout set or external validation set. We look at a set of performance measures like the ROC curve and the AUC value. These plots and statistics are very helpful to check during model building and optimization whether your model is under- or overfitting and what set of parameters performs best on test data. However, these statistics are not that valuable in assessing the business value the model you developed.&lt;/p&gt;
&lt;p&gt;One reason that the ROC curve is not that useful in explaining the business value of your model, is because  it's quite hard to explain the interpretation of ‘area under the curve', ‘specificity' or ‘sensitivity' to business people. Another important reason that these statistics and plots are useless in your business meetings is that they don't help in determining how to apply your predictive model: What percentage of records should we select based on the model? Should we select only the best 10% of cases? Or should we stop at 30%? Or go on until we have selected 70%?...  This is something you want to decide &lt;em&gt;together&lt;/em&gt; with your business colleague to best match the business plans and campaign targets they have to meet. The four plots - cumulative gains, cumulative lift, response and cumulative response - we are about to introduce are in our view the best ones for that cause.&lt;/p&gt;

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&lt;h3 id="Get-modelplotpy-working-on-your-machine"&gt;Get modelplotpy working on your machine&lt;a class="anchor-link" href="#Get-modelplotpy-working-on-your-machine"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;Let's start this tutorial with installing the &lt;strong&gt;modelplotpy&lt;/strong&gt; module. Modelplotpy is already available from &lt;a href="https://github.com/modelplot/modelplotpy"&gt;Github&lt;/a&gt;, but currently it is not possible to install through the &lt;a href="https://pypi.org"&gt;Python Package Index (PyPI)  repository&lt;/a&gt;.&lt;/p&gt;
&lt;p&gt;For some users we encountered that GitHub needs to be installed on your machine first. If you don't have GitHub installed  on your machine yet, it can be downloaded from &lt;a href="https://desktop.github.com/"&gt;here&lt;/a&gt;. After installing GitHub on your machine, it helps to restart and then continue with this tutorial.&lt;/p&gt;
&lt;p&gt;Modelplotpy has to be installed through the command-line. On machines operating on macOS or Linux open the terminal and on Windows machines search for cmd.exe and hit enter. Copy and paste the command below and hit enter.&lt;/p&gt;
&lt;div class="highlight"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;pip install git+https://github.com/modelplot/modelplotpy.git
&lt;/pre&gt;&lt;/div&gt;
&lt;p&gt;Once you have been able to install modelplotpy, it's time to open Python and load it into the working directory and continue this tutorial! This tutorial has been written in Python 3.6.4 and may not work fully in Python 2.x.&lt;/p&gt;

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&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[2]:&lt;/div&gt;
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    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;modelplotpy&lt;/span&gt; &lt;span class="k"&gt;as&lt;/span&gt; &lt;span class="nn"&gt;mp&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
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&lt;/div&gt;

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&lt;div class="cell border-box-sizing text_cell rendered"&gt;&lt;div class="prompt input_prompt"&gt;
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&lt;p&gt;Now we're ready to use modelplotpy. In another post, we'll go into much more detail on our modelplot packages in r and python and all its functionalities. Here, we'll focus on using modelplotpy with a business example.&lt;/p&gt;
&lt;h3 id="Example:-Predictive-models-from-sklearn-on-the-Bank-Marketing-Data-Set"&gt;Example: Predictive models from &lt;em&gt;sklearn&lt;/em&gt; on the &lt;em&gt;Bank Marketing Data Set&lt;/em&gt;&lt;a class="anchor-link" href="#Example:-Predictive-models-from-sklearn-on-the-Bank-Marketing-Data-Set"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;Let's get down to business! When we introduce the plots, we'll show you how to use them with a business example. This example is based on a publicly available dataset, called the Bank Marketing Data Set. It is one of the most popular datasets which is made available on the &lt;a href="https://archive.ics.uci.edu/ml/index.php"&gt;UCI Machine Learning Repository&lt;/a&gt;. The data set comes from a Portugese bank and deals with a frequently-posed marketing question: whether a customer did or did not acquire a term deposit, a financial product. There are 4 datasets available and the &lt;strong&gt;bank-additional-full.csv&lt;/strong&gt; is the one we use. It contains the information of 41.188 customers and 21 columns of information.&lt;/p&gt;
&lt;p&gt;To illustrate how to use modelplotpy, let's say that we work for this bank and our marketing colleagues have asked us to help to select the customers that are most likely to respond to a term deposit offer. For that purpose, we will develop a predictive model and create the plots to discuss the results with our marketing colleagues. Since we want to show you how to build the plots, not how to build a perfect model, we'll use six of these columns in our example. Here's a short description on the data we use:&lt;/p&gt;
&lt;ol&gt;
&lt;li&gt;&lt;strong&gt;y&lt;/strong&gt;: has the client subscribed a term deposit?&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;duration&lt;/strong&gt;: last contact duration, in seconds (numeric)&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;campaign&lt;/strong&gt;: number of contacts performed during this campaign and for this client&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;pdays&lt;/strong&gt;: number of days that passed by after the client was last contacted from a previous campaign&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;previous&lt;/strong&gt;: number of contacts performed before this campaign and for this client (numeric)&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;euribor3m&lt;/strong&gt;: euribor 3 month rate&lt;/li&gt;
&lt;/ol&gt;
&lt;p&gt;Let's load the data and have a quick look at it:&lt;/p&gt;

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&lt;div class="cell border-box-sizing code_cell rendered"&gt;
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&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[3]:&lt;/div&gt;
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    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;io&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;os&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;requests&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;zipfile&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;numpy&lt;/span&gt; &lt;span class="k"&gt;as&lt;/span&gt; &lt;span class="nn"&gt;np&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;pandas&lt;/span&gt; &lt;span class="k"&gt;as&lt;/span&gt; &lt;span class="nn"&gt;pd&lt;/span&gt;
&lt;span class="kn"&gt;import&lt;/span&gt; &lt;span class="nn"&gt;warnings&lt;/span&gt;
&lt;span class="n"&gt;warnings&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;filterwarnings&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;ignore&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;#r = requests.get(&amp;quot;https://archive.ics.uci.edu/ml/machine-learning-databases/00222/bank-additional.zip&amp;quot;)&lt;/span&gt;
&lt;span class="c1"&gt;# we encountered that the source at uci.edu is not always available, therefore we made a copy to our repos.&lt;/span&gt;
&lt;span class="n"&gt;r&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;requests&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;get&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;https://modelplot.github.io/img/bank-additional.zip&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;span class="n"&gt;z&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;zipfile&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;ZipFile&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;io&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;BytesIO&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;r&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;content&lt;/span&gt;&lt;span class="p"&gt;))&lt;/span&gt;
&lt;span class="c1"&gt;# You can change the path, currently the data is written to the working directory&lt;/span&gt;
&lt;span class="n"&gt;path&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;os&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;getcwd&lt;/span&gt;&lt;span class="p"&gt;()&lt;/span&gt;
&lt;span class="n"&gt;z&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;extractall&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;path&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;span class="n"&gt;bank&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;pd&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;read_csv&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;path&lt;/span&gt; &lt;span class="o"&gt;+&lt;/span&gt; &lt;span class="s2"&gt;&amp;quot;/bank-additional/bank-additional-full.csv&amp;quot;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;sep&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;;&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;# select the 6 columns&lt;/span&gt;
&lt;span class="n"&gt;bank&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="p"&gt;[[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;y&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;duration&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;campaign&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;pdays&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;previous&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;euribor3m&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;]]&lt;/span&gt;
&lt;span class="c1"&gt;# rename target class value &amp;#39;yes&amp;#39; for better interpretation&lt;/span&gt;
&lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;y&lt;/span&gt;&lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;y&lt;/span&gt; &lt;span class="o"&gt;==&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;yes&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;term deposit&amp;#39;&lt;/span&gt;

&lt;span class="c1"&gt;# dimensions of the data&lt;/span&gt;
&lt;span class="nb"&gt;print&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;shape&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;# show the first rows of the dataset&lt;/span&gt;
&lt;span class="nb"&gt;print&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;head&lt;/span&gt;&lt;span class="p"&gt;())&lt;/span&gt;
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&lt;pre&gt;(41188, 6)
    y  duration  campaign  pdays  previous  euribor3m
0  no       261         1    999         0      4.857
1  no       149         1    999         0      4.857
2  no       226         1    999         0      4.857
3  no       151         1    999         0      4.857
4  no       307         1    999         0      4.857
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&lt;p&gt;On this data, we've applied some predictive modeling techniques from the &lt;a href="http://scikit-learn.org"&gt;&lt;strong&gt;sklearn module&lt;/strong&gt;&lt;/a&gt;. This well known module is a wrapper for many predictive modeling techniques, such as logistic regression, random forest and many, many others. Lets train a few models to evaluate with our plots.&lt;/p&gt;

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&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# to create predictive models&lt;/span&gt;
&lt;span class="kn"&gt;from&lt;/span&gt; &lt;span class="nn"&gt;sklearn.model_selection&lt;/span&gt; &lt;span class="k"&gt;import&lt;/span&gt; &lt;span class="n"&gt;train_test_split&lt;/span&gt;
&lt;span class="kn"&gt;from&lt;/span&gt; &lt;span class="nn"&gt;sklearn.ensemble&lt;/span&gt; &lt;span class="k"&gt;import&lt;/span&gt; &lt;span class="n"&gt;RandomForestClassifier&lt;/span&gt;
&lt;span class="kn"&gt;from&lt;/span&gt; &lt;span class="nn"&gt;sklearn.linear_model&lt;/span&gt; &lt;span class="k"&gt;import&lt;/span&gt; &lt;span class="n"&gt;LogisticRegression&lt;/span&gt;

&lt;span class="c1"&gt;# define target vector y&lt;/span&gt;
&lt;span class="n"&gt;y&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;y&lt;/span&gt;
&lt;span class="c1"&gt;# define feature matrix X&lt;/span&gt;
&lt;span class="n"&gt;X&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;bank&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;drop&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;y&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;axis&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;1&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;# Create the necessary datasets to build models&lt;/span&gt;
&lt;span class="n"&gt;X_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;X_test&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y_test&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;train_test_split&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;X&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;test_size&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mf"&gt;0.3&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;random_state&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;2018&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;# Instantiate a few classification models&lt;/span&gt;
&lt;span class="n"&gt;clf_rf&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;RandomForestClassifier&lt;/span&gt;&lt;span class="p"&gt;()&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;fit&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;X_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y_train&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;span class="n"&gt;clf_mult&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;LogisticRegression&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;multi_class&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;multinomial&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;solver&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;newton-cg&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;fit&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;X_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y_train&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
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&lt;p&gt;In another post, we'll go into much more detail on our modelplot packages in R and Python and all its functionalities. For now, we focus on explaining to our marketing colleagues how good our predictive model can help them select customers for their term deposit campaign.&lt;/p&gt;

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&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="n"&gt;obj&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;modelplotpy&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;feature_data&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="n"&gt;X_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;X_test&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt;
                     &lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;label_data&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="n"&gt;y_train&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;y_test&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt;
                     &lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;dataset_labels&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;train data&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;test data&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt;
                     &lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;models&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="n"&gt;clf_rf&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;clf_mult&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt;
                     &lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;model_labels&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;random forest&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;multinomial logit&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;]&lt;/span&gt;
                     &lt;span class="p"&gt;)&lt;/span&gt;

&lt;span class="c1"&gt;# transform data generated with prepare_scores_and_deciles into aggregated data for chosen plotting scope &lt;/span&gt;
&lt;span class="n"&gt;ps&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;obj&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plotting_scope&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;select_model_label&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;random forest&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;],&lt;/span&gt; &lt;span class="n"&gt;select_dataset_label&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;test data&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;])&lt;/span&gt;
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&lt;pre&gt;Default scope value no_comparison selected, single evaluation line will be plotted.
The label with smallest class is term deposit
Target class term deposit, dataset test data and model random forest.
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&lt;p&gt;What just happened? In the &lt;strong&gt;modelplotpy&lt;/strong&gt; a class is instantiated and the &lt;strong&gt;plotting_scope&lt;/strong&gt; function specifies the scope of the plots you want to show. In general, there are 3 methods (functions) that can be applied to the modelplotpy class but you don't have to specify them since they are chained to each other. These functions are:&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;&lt;strong&gt;prepare_scores_and_deciles&lt;/strong&gt;: scores the customers in the train dataset and test dataset with their probability to acquire a term deposit&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;aggregate_over_deciles&lt;/strong&gt;: aggregates all scores to deciles and calculates the information to show&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;plotting_scope&lt;/strong&gt;. allows you to specify the scope of the analysis.&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;In the second line of code, we specified the scope of the analysis. We've not specified the "scope" parameter, therefore the default - &lt;em&gt;no comparison&lt;/em&gt; - is chosen. As the output notes, you can use modelplotpy to evaluate your model(s) from several perspectives:&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;Interpret just one model (the default)&lt;/li&gt;
&lt;li&gt;Compare the model performance across different datasets&lt;/li&gt;
&lt;li&gt;Compare the performance across different models&lt;/li&gt;
&lt;li&gt;Compare the performance across different target classes&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;Here, we will keep it simple and evaluate - from a business perspective - how well a selected model will perform in a selected dataset for one target class. We did specify values for some parameters, to focus on the &lt;strong&gt;random forest&lt;/strong&gt; model on the &lt;strong&gt;test data&lt;/strong&gt;. The default value for the target class is &lt;strong&gt;term deposit&lt;/strong&gt; ; since we want to focus on customers that do take term deposits, this default is perfect.&lt;/p&gt;
&lt;h3 id="Let's-introduce-the-Gains,-Lift-and-(cumulative)-Response-plots."&gt;Let's introduce the Gains, Lift and (cumulative) Response plots.&lt;a class="anchor-link" href="#Let's-introduce-the-Gains,-Lift-and-(cumulative)-Response-plots."&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;Before we throw more code and output at you, let's get you familiar with the plots we so strongly advocate to use to assess a predictive model's business value. Although each plot sheds light on the business value of your model from a different angle, they all use the same data:&lt;/p&gt;
&lt;ul&gt;
&lt;li&gt;Predicted probability for the target class&lt;/li&gt;
&lt;li&gt;Equally sized groups based on this predicted probability&lt;/li&gt;
&lt;li&gt;Actual number of observed target class observations in these groups&lt;/li&gt;
&lt;/ul&gt;
&lt;p&gt;It's common practice to split the data to score into 10 equally large groups and call these groups deciles. Observations that belong to the top-10% with highest model probability in a set, are in decile 1 of that set; the next group of 10% with high model probability are decile 2 and finally the 10% observations with the lowest model probability on the target class belong to decile 10.&lt;/p&gt;
&lt;p&gt;Each of our four plots places the deciles on the x axis and another measure on the y axis. The deciles are plotted from left to right so the observations with the highest model probability are on the left side of the plot. This results in plots like this:&lt;/p&gt;
&lt;p&gt;&lt;img src="img/decileplot.png" alt=" "&gt;&lt;/p&gt;
&lt;p&gt;Now that it's clear what is on the horizontal axis of each of the plots, we can go into more detail on the metrics for each plot on the vertical axis. For each plot, we'll start with a brief explanation what insight you gain with the plot from a business perspective. After that, we apply it to our banking data and show some neat features of modelplotpy to help you explain the value of your wonderful predictive models to others.&lt;/p&gt;
&lt;h4 id="1.-Cumulative-gains-plot"&gt;1. Cumulative gains plot&lt;a class="anchor-link" href="#1.-Cumulative-gains-plot"&gt;&amp;#182;&lt;/a&gt;&lt;/h4&gt;&lt;p&gt;The cumulative gains plot - often named 'gains plot' - helps you answer the question:&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;&lt;em&gt;&lt;span style="color:orange"&gt;When we apply the model and select the best X deciles, what % of the actual target class observations can we expect to target?&lt;/span&gt;&lt;/em&gt;&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;Hence, the cumulative gains plot visualises the percentage of the target class members you have selected if you would decide to select up until decile X. This is a very important business question, because in most cases, you want to use a predictive model to target a &lt;strong&gt;subset&lt;/strong&gt; of observations - customers, prospects, cases,... - instead of targeting all cases. And since we won't build perfect models all the time, we will miss some potential. And that's perfectly all right, because if we are not willing to accept that, we should not use a model in the first place. Or build a perfect model, that scores all actual target class members with a 100% probability and all the cases that do not belong to the target class with a 0% probability. However, if you're such a wizard, you don't need these plots any way or you should have a careful look at your model - maybe you're cheating?....&lt;/p&gt;
&lt;p&gt;So, we'll have to accept we will lose some. &lt;em&gt;What percentage&lt;/em&gt; of the actual target class members you do select with your model at a given decile, that's what the cumulative gains plot tells you. The plot comes with two reference lines to tell you how good/bad your model is doing: The &lt;em&gt;random model line&lt;/em&gt; and the &lt;em&gt;wizard model line&lt;/em&gt;. The random model line tells you what proportion of the actual target class you would expect to select when no model is used at all. This vertical line runs from the origin (with 0% of cases, you can only have 0% of the actual target class members) to the upper right corner (with 100% of the cases, you have 100% of the target class members). It's the rock bottom of how your model can perform; are you close to this, then your model is not much better than a coin flip. The wizard model is the upper bound of what your model can do. It starts in the origin and rises as steep as possible towards 100%. If less than 10% of all cases belong to the target category, this means that it goes steep up from the origin to the value of decile 1 and cumulative gains of 100% and remains there for all other deciles as it is a cumulative measure. Your model will always move between these two reference lines - closer to a wizard is always better -  and looks like this:&lt;/p&gt;
&lt;p&gt;&lt;img src="img/cumgainsplot.png" alt=" "&gt;&lt;/p&gt;
&lt;p&gt;Back to our business example. How many of the term deposit buyers can we select with the top-20% of our predictive models? Let's find out! To generate the cumulative gains plot, we can simply call the function &lt;strong&gt;plot_cumgains()&lt;/strong&gt;:&lt;/p&gt;

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&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot the cumulative gains plot&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_cumgains&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
&lt;div class="output"&gt;


&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;


&lt;div class="output_subarea output_stream output_stdout output_text"&gt;
&lt;pre&gt;The cumulative gains plot is saved in C:\TEMP\jupyter-blog/Cumulative gains plot.png
&lt;/pre&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;




&lt;div class="output_png output_subarea "&gt;
&lt;img 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
"
&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[6]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[6]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32a51e668&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;/div&gt;
&lt;/div&gt;

&lt;/div&gt;
&lt;div class="cell border-box-sizing text_cell rendered"&gt;&lt;div class="prompt input_prompt"&gt;
&lt;/div&gt;&lt;div class="inner_cell"&gt;
&lt;div class="text_cell_render border-box-sizing rendered_html"&gt;
&lt;p&gt;We only have to specify the input with the plotting_scope output. There are several parameters available to customize the plot, though. If we want to emphasize the model performance at a given point, we can add both highlighting to the plot and add some explanatory text below the plot. Both are optional, though:&lt;/p&gt;

&lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;
&lt;div class="cell border-box-sizing code_cell rendered"&gt;
&lt;div class="input"&gt;
&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[7]:&lt;/div&gt;
&lt;div class="inner_cell"&gt;
    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot the cumulative gains plot and annotate the plot at decile = 2&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_cumgains&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;highlight_decile&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;2&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
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    &lt;div class="prompt"&gt;&lt;/div&gt;


&lt;div class="output_subarea output_stream output_stdout output_text"&gt;
&lt;pre&gt;When we select 20% with the highest probability according to model random forest, this selection holds 79% of all term deposit cases in dataset test data.
The cumulative gains plot is saved in C:\TEMP\jupyter-blog/Cumulative gains plot.png
&lt;/pre&gt;
&lt;/div&gt;
&lt;/div&gt;

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    &lt;div class="prompt"&gt;&lt;/div&gt;




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&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
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&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32c9f48d0&amp;gt;&lt;/pre&gt;
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&lt;p&gt;Our 'highlight_decile' parameter adds some guiding elements to the plot at decile 2 as well as a text box below the graph with the interpretation of the plot at decile 2 in words. This interpretation is also printed to the console. Our simple model - only 6 pedictors were used - seems to do a nice job selecting the customers interested in buying term deposites. &lt;em&gt;When we select 20% with the highest probability according to random forest, this selection holds 79% of all term deposit cases in test data.&lt;/em&gt; With a perfect model, we would have selected 100%, since less than 20% of all customers in the test set buy term deposits. A random pick would only hold 20% of the customers with term deposits. How much better than random we do, brings us to plot number 2!&lt;/p&gt;
&lt;h4 id="2.-Cumulative-lift-plot"&gt;2. Cumulative lift plot&lt;a class="anchor-link" href="#2.-Cumulative-lift-plot"&gt;&amp;#182;&lt;/a&gt;&lt;/h4&gt;&lt;p&gt;The cumulative lift plot, often referred to as lift plot or index plot, helps you answer the question:&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;&lt;em&gt;&lt;span style="color:orange"&gt;When we apply the model and select the best X deciles, how many times better is that than using no model at all?&lt;/span&gt;&lt;/em&gt;&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;The lift plot helps you in explaining how much better selecting based on your model is compared to taking random selections instead. Especially when models are not yet used within a certain organisation or domain, this really helps business understand what selecting based on models can do for them.&lt;/p&gt;
&lt;p&gt;The lift plot only has one reference line: the 'random model'.  With a random model we mean that each observation gets a random number and all cases are devided into deciles based on these random numbers. The % of actual target category observations in each decile would be equal to the overall % of actual target category observations in the total set. Since the lift is calculated as the ratio of these two numbers, we get a horizontal line at the value of 1. Your model should however be able to do better, resulting in a high ratio for decile 1. How high the lift can get, depends on your quality of your model, but also on the % of target class observations in the data: If 50% of your data belongs to the target class of interest, a perfect model would only do twice as good (lift: 2) as a random selection. With a smaller target class value, say 10%, the model can potentially be 10 times better (lift: 10) than a random selection. Therefore, no general guideline of a 'good' lift can be specified. Towards decile 10, since the plot is cumulative, with 100% of cases, we have the whole set again and therefore the cumulative lift will always end up at a value of 1. It looks like this:&lt;/p&gt;
&lt;p&gt;&lt;img src="img/cumliftplot.png" alt=" "&gt;&lt;/p&gt;
&lt;p&gt;To generate the cumulative lift plot for our random forest model predicting term deposit buying, we call the function &lt;strong&gt;plot_cumlift()&lt;/strong&gt;. Let's add some highlighting to see how much better a selection based on our model containing deciles 1 and 2 would be, compared to a random selection of 20% of all customers:&lt;/p&gt;

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&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot the cumulative lift plot and annotate the plot at decile = 2&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_cumlift&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;highlight_decile&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;2&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
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&lt;pre&gt;When we select 20% with the highest probability according to model random forest in dataset test data, this selection for target class term deposit is 3.99 times than selecting without a model.
The cumulative lift plot is saved in C:\TEMP\jupyter-blog/Cumulative lift plot.png
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
"
&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[8]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[8]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32ca42e48&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;/div&gt;
&lt;/div&gt;

&lt;/div&gt;
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&lt;div class="text_cell_render border-box-sizing rendered_html"&gt;
&lt;p&gt;A term deposit campaign targeted at a selection of 20% of all customers based on our random forest model can be expected to have a 4 times higher response (396%) compared to a random sample of customers. Not bad, right? The cumulative lift really helps in getting a positive return on marketing investments. It should be noted, though, that since the cumulative lift plot is relative, it doesn't tell us how high the actual reponse will be on our campaign...&lt;/p&gt;
&lt;h4 id="3.-Response-plot"&gt;3. Response plot&lt;a class="anchor-link" href="#3.-Response-plot"&gt;&amp;#182;&lt;/a&gt;&lt;/h4&gt;&lt;p&gt;One of the easiest to explain evaluation plots is the response plot. It simply plots the percentage of target class observations per decile. It can be used to answer the following business question:&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;&lt;em&gt;&lt;span style="color:orange"&gt;When we apply the model and select decile X, what is the expected % of target class observations in that decile?&lt;/span&gt;&lt;/em&gt;&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;The plot has one reference line: The % of target class cases in the total set. It looks like this:&lt;/p&gt;
&lt;p&gt;&lt;img src="img/responseplot.png" alt=" "&gt;&lt;/p&gt;
&lt;p&gt;A good model starts with a high response value in the first decile(s) and suddenly drops quickly towards 0 for later deciles. This indicates good differentiation between target class members - getting high model scores - and all other cases. An interesting point in the plot is the location where your model's line intersects the random model line. From that decile onwards, the % of target class cases is lower than a random selection of cases would hold.&lt;/p&gt;
&lt;p&gt;To generate the response plot for our term deposit model, we can simply call the function &lt;strong&gt;plot_response()&lt;/strong&gt;. Let's immediately highlight the plot to have the interpretation of the response plot at decile 1 added to the plot:&lt;/p&gt;

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&lt;/div&gt;
&lt;div class="cell border-box-sizing code_cell rendered"&gt;
&lt;div class="input"&gt;
&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[9]:&lt;/div&gt;
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    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot the response plot and annotate the plot at decile = 2&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_response&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;highlight_decile&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;1&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
&lt;div class="output"&gt;


&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;


&lt;div class="output_subarea output_stream output_stdout output_text"&gt;
&lt;pre&gt;When we select decile 1 from model random forest in dataset test data the percentage of term deposit cases in the selection is 56%.
The response plot is saved in C:\TEMP\jupyter-blog/Response plot.png
&lt;/pre&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;




&lt;div class="output_png output_subarea "&gt;
&lt;img 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&gt;
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    &lt;div class="prompt output_prompt"&gt;Out[9]:&lt;/div&gt;




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&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
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&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[9]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32ca51a90&amp;gt;&lt;/pre&gt;
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&lt;/div&gt;

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&lt;p&gt;As the plot shows and the text below the plot states: &lt;em&gt;When we select decile 1 from model random forest in dataset test data the percentage of term deposit cases in the selection is 55%.&lt;/em&gt;. This is quite good, especially when compared to the overall likelihood of 11%. The response in the second decile is much lower, about 28%. From decile 3 onwards, the expected response will be lower than the overall likelihood of 10.4%. However, most of the time, our model will be used to select the highest decile &lt;em&gt;up until&lt;/em&gt; some decile. That makes it even more relevant to have a look at the cumulative version of the response plot. And guess what, that's our final plot!&lt;/p&gt;
&lt;h4 id="4.-Cumulative-response-plot"&gt;4. Cumulative response plot&lt;a class="anchor-link" href="#4.-Cumulative-response-plot"&gt;&amp;#182;&lt;/a&gt;&lt;/h4&gt;&lt;p&gt;Finally, one of the most used plots: The cumulative response plot. It answers the question burning on each business reps lips:&lt;/p&gt;
&lt;p&gt;&lt;strong&gt;&lt;em&gt;&lt;span style="color:orange"&gt;When we apply the model and select up until decile X, what is the expected % of target class observations in the selection?&lt;/span&gt;&lt;/em&gt;&lt;/strong&gt;&lt;/p&gt;
&lt;p&gt;The reference line in this plot is the same as in the response plot: the % of target class cases in the total set.&lt;/p&gt;
&lt;p&gt;&lt;img src="img/cumresponseplot.png" alt=" "&gt;&lt;/p&gt;
&lt;p&gt;Whereas the response plot crosses the reference line, in the cumulative response plot it never crosses it but ends up at the same point for decile 10: Selecting all cases up until decile 10 is the same as selecting all cases, hence the % of target class cases will be exactly the same. This plot is most often used to decide - together with business colleagues - up until what decile to select for a campaign.&lt;/p&gt;
&lt;p&gt;Back to our banking business case. To generate the cumulative response plot, we call the function &lt;strong&gt;plot_cumresponse()&lt;/strong&gt;. Let's highlight it at decile 3 to see what the overall expected response will be if we select prospects for a term deposit offer based on our random forest model:&lt;/p&gt;

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&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[10]:&lt;/div&gt;
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    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot the cumulative response plot and annotate the plot at decile = 3&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_cumresponse&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;highlight_decile&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;3&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
&lt;div class="output"&gt;


&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;


&lt;div class="output_subarea output_stream output_stdout output_text"&gt;
&lt;pre&gt;When we select deciles 1 until 3 according to model random forest in dataset test data the percentage of term deposit cases in the selection is 33%.
The cumulative response plot is saved in C:\TEMP\jupyter-blog/Cumulative response plot.png
&lt;/pre&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;




&lt;div class="output_png output_subarea "&gt;
&lt;img 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    &lt;div class="prompt output_prompt"&gt;Out[10]:&lt;/div&gt;




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&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
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    &lt;div class="prompt output_prompt"&gt;Out[10]:&lt;/div&gt;




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&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32cb44be0&amp;gt;&lt;/pre&gt;
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&lt;p&gt;&lt;em&gt;When we select deciles 1 until 3 according to model random forest in dataset test data the percentage of term deposit cases in the selection is 33%.&lt;/em&gt; Since the test data is an independent set, not used to train the model, we can expect the response on the term deposit campaign to be 33%.&lt;/p&gt;
&lt;p&gt;The cumulative response percentage at a given decile is a number your business colleagues can really work with: Is that response big enough to have a successfull campaign, given costs and other expectations? Will the absolute number of sold term deposits meet the targets? Or do we lose too much of all potential term deposit buyers by only selecting the top 30%? To answer that question, we can go back to the cumulative gains plot. And that's why there's no absolute winner among these plots and we advice to use them all. To make that happen, there's also a function to easily combine all four plots.&lt;/p&gt;
&lt;h4 id="All-four-plots-together"&gt;All four plots together&lt;a class="anchor-link" href="#All-four-plots-together"&gt;&amp;#182;&lt;/a&gt;&lt;/h4&gt;&lt;p&gt;With the function call &lt;strong&gt;plot_all&lt;/strong&gt; we get all four plots on one grid. We can easily save it to a file to include it in a presentation or share it with colleagues.&lt;/p&gt;

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&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[11]:&lt;/div&gt;
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    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# plot all four evaluation plots and save to file&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_all&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;save_fig&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="kc"&gt;True&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;save_fig_filename&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s1"&gt;&amp;#39;Selection model Term Deposits&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
&lt;div class="output"&gt;


&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;


&lt;div class="output_subarea output_stream output_stdout output_text"&gt;
&lt;pre&gt;The plot all plot is saved in Selection model Term Deposits
&lt;/pre&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt"&gt;&lt;/div&gt;




&lt;div class="output_png output_subarea "&gt;
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    &lt;div class="prompt output_prompt"&gt;Out[11]:&lt;/div&gt;




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&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
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    &lt;div class="prompt output_prompt"&gt;Out[11]:&lt;/div&gt;




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&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32cc21cf8&amp;gt;&lt;/pre&gt;
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&lt;p&gt;Neat! With these plots, we are able to talk with business colleagues about the actual value of our predictive model, without having to bore them with technicalities any nitty gritty details. We've translated our model in business terms and visualised it to simplify interpretation and communication. Hopefully, this helps many of you in discussing how to optimally take advantage of your predictive model building efforts.&lt;/p&gt;
&lt;h3 id="Get-more-out-of-modelplotpy:-using-different-scopes"&gt;Get more out of modelplotpy: using different scopes&lt;a class="anchor-link" href="#Get-more-out-of-modelplotpy:-using-different-scopes"&gt;&amp;#182;&lt;/a&gt;&lt;/h3&gt;&lt;p&gt;As we mentioned discussed earlier, the modelplotpy also enables to make interesting comparisons, using the &lt;strong&gt;scope&lt;/strong&gt; parameter. Comparisons between different models, between different datasets and (in case of a multiclass target) between different target classes. Curious? Please have a look at the package documentation or read our other posts on modelplot.&lt;/p&gt;
&lt;p&gt;However, to give one example, we could compare whether random forest was indeed the best choice to select the top-30% customers for a term deposit offer:&lt;/p&gt;

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&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[12]:&lt;/div&gt;
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&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="c1"&gt;# set plotting scope to model comparison&lt;/span&gt;
&lt;span class="n"&gt;ps2&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="n"&gt;obj&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plotting_scope&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;scope&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="s2"&gt;&amp;quot;compare_models&amp;quot;&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;select_dataset_label&lt;/span&gt;&lt;span class="o"&gt;=&lt;/span&gt;&lt;span class="p"&gt;[&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;test data&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;])&lt;/span&gt;

&lt;span class="c1"&gt;# plot the cumulative response plot and annotate the plot at decile = 3&lt;/span&gt;
&lt;span class="n"&gt;mp&lt;/span&gt;&lt;span class="o"&gt;.&lt;/span&gt;&lt;span class="n"&gt;plot_cumresponse&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;ps2&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt; &lt;span class="n"&gt;highlight_decile&lt;/span&gt; &lt;span class="o"&gt;=&lt;/span&gt; &lt;span class="mi"&gt;3&lt;/span&gt;&lt;span class="p"&gt;)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

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&lt;pre&gt;compare models
The label with smallest class is [&amp;#39;term deposit&amp;#39;]
When we select deciles 1 until 3 according to model multinomial logit in dataset test data the percentage of term deposit cases in the selection is 33%.
When we select deciles 1 until 3 according to model random forest in dataset test data the percentage of term deposit cases in the selection is 33%.
The cumulative response plot is saved in C:\TEMP\jupyter-blog/Cumulative response plot.png
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
"
&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[12]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;Figure size 432x288 with 0 Axes&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[12]:&lt;/div&gt;




&lt;div class="output_text output_subarea output_execute_result"&gt;
&lt;pre&gt;&amp;lt;matplotlib.axes._subplots.AxesSubplot at 0x1e32d54bcc0&amp;gt;&lt;/pre&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;/div&gt;
&lt;/div&gt;

&lt;/div&gt;
&lt;div class="cell border-box-sizing text_cell rendered"&gt;&lt;div class="prompt input_prompt"&gt;
&lt;/div&gt;&lt;div class="inner_cell"&gt;
&lt;div class="text_cell_render border-box-sizing rendered_html"&gt;
&lt;p&gt;Seems like the algorithm used will not make a big difference in this case. Hopefully you agree by now that using these plots really can make a difference in explaining the business value of your predictive models!&lt;/p&gt;
&lt;p&gt;In case you experience issues when using modelplotpy, please let us know via the &lt;a href="https://github.com/pbmarcus/modelplotpy/issues" target="_blank"&gt;issues section on Github&lt;/a&gt;. Any other feedback or suggestions,  please let us know via &lt;a href="mailto:pb.marcus@hotmail.com"&gt;pb.marcus@hotmail.com&lt;/a&gt; or &lt;a href="mailto:jurriaan.nagelkerke@gmail.com"&gt;jurriaan.nagelkerke@gmail.com&lt;/a&gt;. Happy modelplotting!&lt;/p&gt;
&lt;p&gt;&lt;img src="img/cartoon2d.jpg" alt=" "&gt;&lt;/p&gt;

&lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;
&lt;div class="cell border-box-sizing code_cell rendered"&gt;
&lt;div class="input"&gt;
&lt;div class="prompt input_prompt"&gt;In&amp;nbsp;[14]:&lt;/div&gt;
&lt;div class="inner_cell"&gt;
    &lt;div class="input_area"&gt;
&lt;div class=" highlight hl-ipython3"&gt;&lt;pre&gt;&lt;span&gt;&lt;/span&gt;&lt;span class="kn"&gt;from&lt;/span&gt; &lt;span class="nn"&gt;IPython.core.display&lt;/span&gt; &lt;span class="k"&gt;import&lt;/span&gt; &lt;span class="n"&gt;display&lt;/span&gt;&lt;span class="p"&gt;,&lt;/span&gt;&lt;span class="n"&gt;HTML&lt;/span&gt;
&lt;span class="n"&gt;display&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;HTML&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="s2"&gt;&amp;quot;&amp;lt;style&amp;gt;.container { width:100% !important; }&amp;lt;/style&amp;gt;&amp;quot;&lt;/span&gt;&lt;span class="p"&gt;))&lt;/span&gt;
&lt;span class="n"&gt;display&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="n"&gt;HTML&lt;/span&gt;&lt;span class="p"&gt;(&lt;/span&gt;&lt;span class="s1"&gt;&amp;#39;&amp;lt;style&amp;gt;.prompt{width: 0px; min-width: 0px; visibility: collapse}&amp;lt;/style&amp;gt;&amp;#39;&lt;/span&gt;&lt;span class="p"&gt;))&lt;/span&gt;
&lt;span class="c1"&gt;#np.set_printoptions(linewidth=110)&lt;/span&gt;
&lt;/pre&gt;&lt;/div&gt;

    &lt;/div&gt;
&lt;/div&gt;
&lt;/div&gt;

&lt;div class="output_wrapper"&gt;
&lt;div class="output"&gt;


&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[14]:&lt;/div&gt;



&lt;div class="output_html rendered_html output_subarea output_execute_result"&gt;
&lt;style&gt;.container { width:100% !important; }&lt;/style&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;div class="output_area"&gt;

    &lt;div class="prompt output_prompt"&gt;Out[14]:&lt;/div&gt;



&lt;div class="output_html rendered_html output_subarea output_execute_result"&gt;
&lt;style&gt;.prompt{width: 0px; min-width: 0px; visibility: collapse}&lt;/style&gt;
&lt;/div&gt;

&lt;/div&gt;

&lt;/div&gt;
&lt;/div&gt;

&lt;/div&gt;
 


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</summary><category term="modelplot"></category><category term="python"></category><category term="modelplotpy"></category><category term="blog"></category></entry></feed>