Skip to content

This repository contains introductory notebooks for Decision tree

Notifications You must be signed in to change notification settings

sanketmaneDS/Decision_Tree

Repository files navigation

Decision_Tree

Use decision trees to prepare a model on fraud data treating those who have taxable_income <= 30000 as "Risky" and others are "Good"

Data Description :

Undergrad : person is under graduated or not

Marital.Status : marital status of a person

Taxable.Income : Taxable income is the amount of how much tax an individual owes to the government

Work Experience : Work experience of an individual person

Urban : Whether that person belongs to urban area or not

Decision Tree

Assignment

About the data:

Let’s consider a Company dataset with around 10 variables and 400 records.

The attributes are as follows:

 Sales -- Unit sales (in thousands) at each location

 Competitor Price -- Price charged by competitor at each location

 Income -- Community income level (in thousands of dollars)

 Advertising -- Local advertising budget for company at each location (in thousands of dollars)

 Population -- Population size in region (in thousands)

 Price -- Price company charges for car seats at each site

 Shelf Location at stores -- A factor with levels Bad, Good and Medium indicating the quality of the shelving location for the car seats at each site

 Age -- Average age of the local population

 Education -- Education level at each location

 Urban -- A factor with levels No and Yes to indicate whether the store is in an urban or rural location

 US -- A factor with levels No and Yes to indicate whether the store is in the US or not

The company dataset looks like this:

Problem Statement: A cloth manufacturing company is interested to know about the segment or attributes causes high sale. Approach - A decision tree can be built with target variable Sale (we will first convert it in categorical variable) & all other variable will be independent in the analysis.

About

This repository contains introductory notebooks for Decision tree

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published