Discussion 7

ManojMartha
LinearandLogisticsRegression.pptx

Simple Regression Model

Regression Analysis

Regression models (both linear and non-linear) are used for predicting a real value, like salary for example. If your independent variable is time, then you are forecasting future values, otherwise your model is predicting present but unknown values. Regression technique vary from Linear Regression to SVR and Random Forests Regression.

In this part, you will understand and learn how to implement the following Machine Learning Regression models:

Simple Linear Regression

Logistic Regression

Support Vector for Regression (SVR)

Decision Tree Classification

Linear Regression in R

Simple Linear Regression Use Cases

Real State

Demand forecasting:

Medical

Logistics Regression Model

Logistic Regression

Logistic Regression

Logistic Regression

Logistic Regression

Logistic Regression Plot

Use Cases

Medical

Finance

Marketing

Engineering

Discussion

Compare and contrast linear and logistic regression methods. Support your answer with use cases for each regression model

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