Mage

Posted on

# Guide to Churn Prediction : Part 5— Graphical analysis

## TLDR

In this blog, we’ll explore discrete and categorical features in the Telco Customer Churn dataset using univariate graphical methods.

## Outline

• Recap

• Before we begin

• Univariate graphical analysis

• Conclusion

## Recap

In part 4 of the series, Guide to Churn Prediction, we analyzed and explored continuous data features in the Telco Customer Churn dataset using graphical methods.

## Before we begin

This guide assumes that you are familiar with data types. If you’re unfamiliar, please read blogs on numerical and categorical data types.

## Statistical concepts

Let’s go over a couple of statistical concepts

### Balanced data

Balanced

The data is said to be balanced if the number of records in each category is equal or nearly equal.

### Imbalanced data

Imbalanced: Image by Mediamodifier from Pixabay

Data is said to be imbalanced if the number of records in one category is greater than the number of records in other categories.

Note: If the target feature has categorical data, we’ll look at how data is distributed across all of the categories and check if the feature has balanced or imbalanced data.

### Univariate graphical analysis

The main purpose of univariate graphical analysis is to understand the distribution patterns of features. To visualize these distributions, we’ll utilize Python libraries like matplotlib and seaborn. These libraries contain a variety of graphical methods (such as bar plots, count plots, KDE plots, violin plots, etc.) that help us visualize distributions in different styles.

Now, let’s perform univariate graphical analysis on discrete and categorical data features.

### Import libraries and load dataset

Let’s start with importing the necessary libraries and loading the cleaned dataset. Check out the link to part 1 to see how we cleaned the dataset.

``````1 import pandas as pd
2 import matplotlib.pyplot as plt # python library to plot graphs
3 import seaborn as sns # python library to plot graphs
4 %matplotlib inline # displays graphs on jupyter notebook
5
6 df = pd.read_csv('cleaned_dataset.csv')
7 df # prints data set
``````

Cleaned dataset

### Identify discrete and categorical features

Discrete features are of int data type, while categorical features are of object data type.

Note: Sometimes categorical data is represented in the form of numbers. So if the data type of a feature is int and has unique values (1,2,3,4,5 or 0 and 1, etc.) or categories, then it’s a categorical feature; otherwise, it’s a discrete feature.

So let’s check the data types of features using the dtypes function and identify discrete and categorical features.

``````1 df.dtypes
``````

Data types of features

### Observations:

1. ”Country,” ”State,” “City,” “Zip Code,” “Gender,” “Senior Citizen,” “Partner,” “Dependents,” “Phone Service,” ”Multiple Lines,” “Internet Service,” “Online Security,” “Online Backup,” “Device Protection,” “Tech Support,” “Streaming TV,” “Streaming Movies,” “Contract,” “Paperless Billing,” “Payment Method,” “Churn Label,” “Churn Value,” and “Churn Reason” features are of object data type, so these are categorical features.

2. “Count,” “Tenure Months,” “Churn Value,” “Churn Score,” and “CLTV” features are of the int data type. So let’s look at the values in these features and decide if they’re discrete or categorical features.

Display the int data type features using select_dtypes() function.

``````1 df.select_dtypes(int)
``````

Features of int data type

### Observations:

1. The “Count” and “Churn Value” features’ data is in the form of 1’s and 0’s. So these are categorical features.
2. “Tenure Months,” “Churn Score,” and “CLTV” are discrete features.

### Create new datasets

Based on the type of data, separate the features and create 2 new datasets.

Create a dataset ##df_disc## that contains all the discrete features and display the first 5 records using ##head()## method.

``````1 df_disc = df[['Tenure Months','Churn Score','CLTV']]
``````

Discrete features

Create a dataset df_cat that contains all the categorical features and display the first 5 records using head() method.

``````1 df_cat = df[['Country','State','City','Zip Code','Count','Gender','Senior Citizen',
2             'Partner','Dependents','Phone Service','Multiple Lines','Internet Service',
3             'Online Security','Online Backup','Device Protection','Tech Support','Streaming TV',
4             'Streaming Movies','Contract','Paperless Billing','Payment Method',
5             'Churn Label','Churn Value','Churn Reason']]
6
``````

Categorical features

### Distribution plots

We visualize discrete and categorical features distributions using graphical methods like count plots, bar plots, pie charts, etc.

Count plots: These plots are graphical representations of the count of individual values in each category of a dataset. Each bar represents a unique value or a category. The length of each bar represents the number of values in each category.

### Discrete data plots

``````1 fig = plt.figure(figsize=(14, 8)) # sets the size of the plot with width as 14 and height as 8
2 for i,columns in enumerate(df_disc.columns):
3    ax = plt.subplot(2,2,i+1) # creates subplots in 2 rows with upto 3 plots in each row
4    sns.countplot(data = df_disc, x = df_disc[columns]) # creates count plots for each feature in df_disc dataset
5    ax.set_xlabel(None) # removes the labels on x-axis
6    ax.set_title(f'Distribution of {columns}') # adds a title to each subplot
8 plt.show() # to display the plots
``````

Count plots of discrete features

Let’s take a closer look at the “Tenure Months” plot.

“Tenure Months” count plot

### Observations:

Approximately 600 customers have been with the company for one month, and nearly 400 customers have been with the company for 72 months.

### Categorical data plots

``````1 fig = plt.figure(figsize=(14, 22)) # sets the size of each subplot with width as 14 and height as 22
2 for i,columns in enumerate(df_cat.columns[4:-2]):
3    ax = plt.subplot(7,3,i+1) # creating a grid with 7 rows and 3 columns, it can display upto (7*3)=21 subplots.
4    sns.countplot(data=df_cat, x = df_cat[columns]) # creates count plots for each feature in df_cat dataset
5    ax.set_xlabel(None) # removes the labels on x-axis
6    ax.set_title(f'Distribution of {columns}') # adds a title to each subplot
7    plt.xticks(rotation = 25) #rotate the x-axis values by 25 degrees.
9 plt.show() # displays the plots
``````

Count plots of categorical features

### Observations:

The company is providing various services to the customers like phone, internet, multiple telephone lines and other additional services like online security, online backup and device protection plans.

Now, let’s take a closer look at all the plots.

### Observations:

1. All the values in the “Count” column are identical.
2. The male to female customer ratio is nearly equal, and the majority of them are non-senior.
3. The majority of the customers are either single or don’t have any dependents.

### Observations:

1. Most of the customers have a phone service subscription, and nearly half of them have multiple telephone lines.
2. The company’s internet services were used by the majority of its consumers. Fiber optic is the most popular internet connection among the company’s customers.

### Observations:

1. Customers can subscribe to additional services such as online security and backup, but just a small percentage of customers have taken advantage of these.
2. The majority of customers are on a month-to-month contract.

Now, let’s take a look at the distribution of categories in the target feature “Churn Label” and see if the data is balanced or imbalanced.

Yes represents churned customers, while No represents non-churned customers.

### Observations:

When compared to the number of non-churned consumers (~5000), the number of churned customers is quite low (~1900) i.e. the data is not evenly distributed among the categories. So this indicates that the data is imbalanced.

## Conclusion

As seen, univariate graphical analysis is the simplest way of analyzing data. This analysis helps us comprehend the data better.

Source: GIPHY

That’s it for this blog. Next in the series, we’ll perform multivariate graphical analysis and find reasons for customer churn.