Simple Linear Regression

Slides:



Advertisements
Similar presentations
Chapter 9: Simple Regression Continued
Advertisements

Test of (µ 1 – µ 2 ),  1 =  2, Populations Normal Test Statistic and df = n 1 + n 2 – 2 2– )1– 2 ( 2 1 )1– 1 ( 2 where ] 2 – 1 [–
Chapter 12 Simple Linear Regression
6-1 Introduction To Empirical Models 6-1 Introduction To Empirical Models.
Simple Linear Regression. G. Baker, Department of Statistics University of South Carolina; Slide 2 Relationship Between Two Quantitative Variables If.
1 Simple Linear Regression and Correlation The Model Estimating the Coefficients EXAMPLE 1: USED CAR SALES Assessing the model –T-tests –R-square.
EPI 809/Spring Probability Distribution of Random Error.
Simple Linear Regression and Correlation
Chapter 12 Simple Linear Regression
1 1 Slide © 2014 Cengage Learning. All Rights Reserved. May not be scanned, copied or duplicated, or posted to a publicly accessible website, in whole.
Introduction to Regression Analysis
Chapter 12 Linear Regression and Correlation
1-1 Regression Models  Population Deterministic Regression Model Y i =  0 +  1 X i u Y i only depends on the value of X i and no other factor can affect.
Chapter 10 Simple Regression.
Correlation and Simple Regression Introduction to Business Statistics, 5e Kvanli/Guynes/Pavur (c)2000 South-Western College Publishing.
9. SIMPLE LINEAR REGESSION AND CORRELATION
Simple Linear Regression
Statistics for Business and Economics
SIMPLE LINEAR REGRESSION
Chapter Topics Types of Regression Models
1 Simple Linear Regression Chapter Introduction In this chapter we examine the relationship among interval variables via a mathematical equation.
Chapter 11 Multiple Regression.
Simple Linear Regression Analysis
SIMPLE LINEAR REGRESSION
Statistics 350 Lecture 17. Today Last Day: Introduction to Multiple Linear Regression Model Today: More Chapter 6.
Lecture 19 Simple linear regression (Review, 18.5, 18.8)
Simple Linear Regression and Correlation
Simple Linear Regression Analysis
Simple Linear Regression. Introduction In Chapters 17 to 19, we examine the relationship between interval variables via a mathematical equation. The motivation.
Linear Regression/Correlation
© 2011 Pearson Education, Inc. Statistics for Business and Economics Chapter 10 Simple Linear Regression.
Correlation & Regression
SIMPLE LINEAR REGRESSION
Introduction to Linear Regression and Correlation Analysis
Regression Analysis Regression analysis is a statistical technique that is very useful for exploring the relationships between two or more variables (one.
Chapter 12 Multiple Regression and Model Building.
Copyright © 2012 Pearson Education, Inc. All rights reserved. Chapter 3 Simple Linear Regression.
1 Least squares procedure Inference for least squares lines Simple Linear Regression.
Statistics for Business and Economics Chapter 10 Simple Linear Regression.
1 1 Slide © 2008 Thomson South-Western. All Rights Reserved Chapter 11 Inferences About Population Variances n Inference about a Population Variance n.
1 1 Slide © 2008 Thomson South-Western. All Rights Reserved Chapter 15 Multiple Regression n Multiple Regression Model n Least Squares Method n Multiple.
+ Chapter 12: Inference for Regression Inference for Linear Regression.
© 2001 Prentice-Hall, Inc. Statistics for Business and Economics Simple Linear Regression Chapter 10.
Introduction to Linear Regression
1 Chapter 12 Simple Linear Regression. 2 Chapter Outline  Simple Linear Regression Model  Least Squares Method  Coefficient of Determination  Model.
Inference for Regression Simple Linear Regression IPS Chapter 10.1 © 2009 W.H. Freeman and Company.
Introduction to Regression Analysis. Dependent variable (response variable) Measures an outcome of a study  Income  GRE scores Dependent variable =
Economics 173 Business Statistics Lecture 10 Fall, 2001 Professor J. Petry
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Simple Linear Regression Analysis Chapter 13.
McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Simple Linear Regression Analysis Chapter 13.
Chapter 11: Linear Regression and Correlation Regression analysis is a statistical tool that utilizes the relation between two or more quantitative variables.
1 Simple Linear Regression and Correlation Least Squares Method The Model Estimating the Coefficients EXAMPLE 1: USED CAR SALES.
Regression Analysis Deterministic model No chance of an error in calculating y for a given x Probabilistic model chance of an error First order linear.
Chapter 12 Simple Linear Regression n Simple Linear Regression Model n Least Squares Method n Coefficient of Determination n Model Assumptions n Testing.
1 1 Slide The Simple Linear Regression Model n Simple Linear Regression Model y =  0 +  1 x +  n Simple Linear Regression Equation E( y ) =  0 + 
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Multiple Regression Chapter 14.
11-1 Copyright © 2014, 2011, and 2008 Pearson Education, Inc.
Introduction. We want to see if there is any relationship between the results on exams and the amount of hours used for studies. Person ABCDEFGHIJ Hours/
Simple Linear Regression and Correlation (Continue..,) Reference: Chapter 17 of Statistics for Management and Economics, 7 th Edition, Gerald Keller. 1.
Bivariate Regression. Bivariate Regression analyzes the relationship between two variables. Bivariate Regression analyzes the relationship between two.
© 2011 Pearson Education, Inc Statistics for Business and Economics Chapter 10 Simple Linear Regression.
Inference about the slope parameter and correlation
AP Statistics Chapter 14 Section 1.
Chapter 11: Simple Linear Regression
Chapter 11: Simple Linear Regression
Quantitative Methods Simple Regression.
Chapter 12 Inference on the Least-squares Regression Line; ANOVA
Review of Chapter 2 Some Basic Concepts: Sample center
Simple Linear Regression
Simple Linear Regression
Presentation transcript:

Simple Linear Regression Chapter 11 Simple Linear Regression Slides for Optional Sections No optional sections

Probabilistic Models General form of Probabilistic Models Y = Deterministic Component + Random Error where E(y) = Deterministic Component

Probabilistic Models First Order (Straight-Line) Probabilistic Model

Probabilistic Models 5 steps of Simple Linear Regression Hypothesize the deterministic component Use sample data to estimate unknown model parameters Specify probability distribution of , estimate standard deviation of the distribution Statistically evaluate model usefulness Use for prediction, estimatation, once model is useful

Fitting the Model: The Least Squares Approach Reaction Time versus Drug Percentage Subject Amount of Drug x (%) Reaction Time y (seconds) 1 2 3 4 5

Fitting the Model: The Least Squares Approach Least Squares Line has: Sum of errors (SE) = 0 Sum of Squared errors (SSE) is smallest of all straight line models Formulas: Slope: y-intercept

Fitting the Model: The Least Squares Approach

Model Assumptions Mean of the probability distribution of ε is 0 Variance of the probability distribution of ε is constant for all values of x Probability distribution of ε is normal Values of ε are independent of each other

An Estimator of 2 Estimator of 2 for a straight-line model

Assessing the Utility of the Model: Making Inferences about the Slope 1 Sampling Distribution of

Assessing the Utility of the Model: Making Inferences about the Slope 1 A Test of Model Utility: Simple Linear Regression One-Tailed Test Two-Tailed Test H0: β1=0 Ha: β1<0 (or Ha: β1>0) Ha: β1≠0 Rejection region: t< -tα (or t< -tα when Ha: β1>0) Rejection region: |t|> tα/2 Where tα and tα/2 are based on (n-2) degrees of freedom

Assessing the Utility of the Model: Making Inferences about the Slope 1 A 100(1-α)% Confidence Interval for 1 where

The Coefficient of Correlation A measure of the strength of the linear relationship between two variables x and y

The Coefficient of Determination

Using the Model for Estimation and Prediction Sampling errors and confidence intervals will be larger for Predictions than for Estimates Standard error of Standard error of the prediction

Using the Model for Estimation and Prediction 100(1-α)% Confidence interval for Mean Value of y at x=xp 100(1-α)% Confidence interval for an Individual New Value of y at x=xp where tα/2 is based on (n-2) degrees of freedom