x # Regression Analysis

IIT Kharagpur, , Prof. Soumen Maity

Updated On 02 Feb, 19

##### Overview

Regression analysis is one of the most powerful methods in statistics for determining the relationships between variables and using these relationships to forecast future observations. The foundation of regression analysis is very helpful for any kind of modelling exercises. Regression models are used to predict and forecast future outcomes. Its popularity in finance is very high; it is also very popular in other disciplines like life and biological sciences, management, engineering, etc. In this online course, you will learn how to derive simple and multiple linear regression models, learn what assumptions underline the models, learn how to test whether your data satisfy those assumptions and what can be done when those assumptions are not met, and develop strategies for building best models. We will also learn how to create dummy variables and interpret their effects in multiple regression analysis; to build polynomial regression models and generalized linear models.

INTENDED AUDIENCE: B.Sc, M.Sc, B.Tech, M.Tech
PREREQUISITES: Probability and Statistics
INDUSTRY SUPPORT: It will be recognized by several industries &amp; academic institutes

## Lecture 26: Mod-01 Lec-26 Lecture-26-Dummy Variables (Contd...2)

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###### Lecture Details

Regression Analysis by Prof.Soumen Maity, Department of Mathematics ,IIT Kharagpur. For more details on NPTEL visit httpnptel.iitm.ac.in

###### Course Details

COURSE LAYOUT
Week 1:Simple Linear Regression (Part A, B, C)
Week 2:Simple Linear Regression (Part D, E)
Week 3:Multiple Linear Regression (Part A, B, C)
Week 4:Multiple Linear Regression (Part D)
Selecting the best regression equation (Part A, B)
Week 5:Selecting the best regression equation (Part C, D)
Week 6:Multicollinearity (Part A, B, C)
Week 7:Model Adequacy Checking (Part A, B, C)
Week 8:Test for influential observations
Transformations and weighting to correct model inadequacies (Part A)
Week 9:Transformations and weighting to correct model inadequacies (Part B, C)
Week 10:Dummy variables (Part A, B, C)
Week 11:Polynomial Regression Models (Part A, B, C)
Week 12:Generalized Linear Model (Part A, B)
Non-Linear Estimation

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2% Sam

Excellent course helped me understand topic that i couldn't while attendinfg my college. 