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The Data Analysis Workshop

You're reading from   The Data Analysis Workshop Solve business problems with state-of-the-art data analysis models, developing expert data analysis skills along the way

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781839211386
Length 626 pages
Edition 1st Edition
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Authors (3):
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Konstantin Palagachev Konstantin Palagachev
Author Profile Icon Konstantin Palagachev
Konstantin Palagachev
Gururajan Govindan Gururajan Govindan
Author Profile Icon Gururajan Govindan
Gururajan Govindan
Shubhangi Hora Shubhangi Hora
Author Profile Icon Shubhangi Hora
Shubhangi Hora
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Toc

Table of Contents (12) Chapters Close

Preface
1. Bike Sharing Analysis 2. Absenteeism at Work FREE CHAPTER 3. Analyzing Bank Marketing Campaign Data 4. Tackling Company Bankruptcy 5. Analyzing the Online Shopper's Purchasing Intention 6. Analysis of Credit Card Defaulters 7. Analyzing the Heart Disease Dataset 8. Analyzing Online Retail II Dataset 9. Analysis of the Energy Consumed by Appliances 10. Analyzing Air Quality Appendix

Splitting the Features

In the previous section, we saw how the missing values are filled with different types of imputation.

In this section, we will be splitting the dependent variables in the DataFrame into y and the independent variables into X. The dependent variables are an outcome of a process. In our case, this process is whether a company is bankrupt or not. Independent variables (also called features) are the input to our process, which in this case is the rest of the variables.

Splitting the features acts as a precursor to our next step, where we select the most important X variables that determine the dependent variable.

We will need to split the features for mean-imputed DataFrames, as shown in the following code:

#First DataFrame
X0=mean_imputed_df1.drop('Y',axis=1)
y0=mean_imputed_df1.Y
#Second DataFrame
X1=mean_imputed_df2.drop('Y',axis=1)
y1=mean_imputed_df2.Y
#Third DataFrame
X2=mean_imputed_df3.drop('Y',axis=1)
y2=mean_imputed_df3...
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