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Analyzing the customer’s information from the dataset, including credit history, income, employment status, and other relevant features, to predict whether an applicant is likely to be a responsible cardholder. Purpose : To predict the approvement of the customer’s credit card application.

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Xue-Liu-Alexia/Credit-Card-Approval-Prediction_SAS-Model

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Credit-Card-Approval-Prediction_SAS-Model

Analyzing the customer’s information from the dataset, including credit history, income, employment status, and other relevant features, to predict whether an applicant is likely to be a responsible cardholder.

Business Problem

To predict the approval of the customer’s credit card application.

Table of Contents

  1. SAS File:
  1. Executive Summary:
  1. Presentation:
  1. Data Sets:

About Dataset

Ind_ID: Client ID

Gender: Gender information

Car_owner: Having car or not

Propert_owner: Having property or not

Children: Count of children

Annual_income: Annual income

Type_Income: Income type

Education: Education level

Marital_status: Marital_status

Housing_type: Living style

Birthday_count: Use backward count from current day (0), -1 means yesterday.

Employed_days: Start date of employment. Use backward count from current day (0). Positive value means, individual is currently unemployed.

Mobile_phone: Any mobile phone

Work_phone: Any work phone

Phone: Any phone number

EMAIL_ID: Any email ID Type_Occupation: Occupation Family_Members: Family size Another data set (Credit_card_label.csv) contains two key pieces of information

About

Analyzing the customer’s information from the dataset, including credit history, income, employment status, and other relevant features, to predict whether an applicant is likely to be a responsible cardholder. Purpose : To predict the approvement of the customer’s credit card application.

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