Linear Trend Lines = b 0 + b 1 X t Where is the dependent variable being forecasted X t is the independent variable being used to explain Y. In Linear.

Slides:



Advertisements
Similar presentations
Lesson 10: Linear Regression and Correlation
Advertisements

Forecasting Using the Simple Linear Regression Model and Correlation
13- 1 Chapter Thirteen McGraw-Hill/Irwin © 2005 The McGraw-Hill Companies, Inc., All Rights Reserved.
Regresi Linear Sederhana Pertemuan 01 Matakuliah: I0174 – Analisis Regresi Tahun: Ganjil 2007/2008.
Regression Analysis Module 3. Regression Regression is the attempt to explain the variation in a dependent variable using the variation in independent.
Introduction to Regression Analysis
Chapter 12 Simple Regression
Correlation and Regression Analysis
Chapter 13 Introduction to Linear Regression and Correlation Analysis
Linear Regression and Correlation
Fall 2006 – Fundamentals of Business Statistics 1 Chapter 13 Introduction to Linear Regression and Correlation Analysis.
Pengujian Parameter Koefisien Korelasi Pertemuan 04 Matakuliah: I0174 – Analisis Regresi Tahun: Ganjil 2007/2008.
Chapter Topics Types of Regression Models
Linear Regression and Correlation Analysis
Chapter 13 Introduction to Linear Regression and Correlation Analysis
Linear Regression Example Data
Ch. 14: The Multiple Regression Model building
Korelasi dalam Regresi Linear Sederhana Pertemuan 03 Matakuliah: I0174 – Analisis Regresi Tahun: Ganjil 2007/2008.
© 2000 Prentice-Hall, Inc. Chap Forecasting Using the Simple Linear Regression Model and Correlation.
Pertemua 19 Regresi Linier
Chapter 14 Introduction to Linear Regression and Correlation Analysis
Correlation and Regression Analysis
Chapter 7 Forecasting with Simple Regression
1 1 Slide Simple Linear Regression Chapter 14 BA 303 – Spring 2011.
© 2001 Prentice-Hall, Inc.Chap 14-1 BA 201 Lecture 23 Correlation Analysis And Introduction to Multiple Regression (Data)Data.
McGraw-Hill/Irwin Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. Chapter 13 Linear Regression and Correlation.
Introduction to Linear Regression and Correlation Analysis
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 12-1 Chapter 12 Simple Linear Regression Statistics for Managers Using.
Purpose of Regression Analysis Regression analysis is used primarily to model causality and provide prediction –Predicts the value of a dependent (response)
Statistics for Business and Economics 8 th Edition Chapter 11 Simple Regression Copyright © 2013 Pearson Education, Inc. Publishing as Prentice Hall Ch.
Linear Trend Lines Y t = b 0 + b 1 X t Where Y t is the dependent variable being forecasted X t is the independent variable being used to explain Y. In.
1 FORECASTING Regression Analysis Aslı Sencer Graduate Program in Business Information Systems.
Chapter 6 & 7 Linear Regression & Correlation
OPIM 303-Lecture #8 Jose M. Cruz Assistant Professor.
Linear Trend Lines = b 0 + b 1 X t Where is the dependent variable being forecasted X t is the independent variable being used to explain Y. In Linear.
© 2003 Prentice-Hall, Inc.Chap 13-1 Basic Business Statistics (9 th Edition) Chapter 13 Simple Linear Regression.
You want to examine the linear dependency of the annual sales of produce stores on their size in square footage. Sample data for seven stores were obtained.
Business Statistics: A First Course, 5e © 2009 Prentice-Hall, Inc. Chap 12-1 Correlation and Regression.
Introduction to Linear Regression
Chap 12-1 A Course In Business Statistics, 4th © 2006 Prentice-Hall, Inc. A Course In Business Statistics 4 th Edition Chapter 12 Introduction to Linear.
Applied Quantitative Analysis and Practices LECTURE#23 By Dr. Osman Sadiq Paracha.
Statistical Methods Statistical Methods Descriptive Inferential
Regression. Population Covariance and Correlation.
Trend Projection Model b0b0 b1b1 YiYi
STATISTICS 12.0 Correlation and Linear Regression “Correlation and Linear Regression -”Causal Forecasting Method.
Aim: Review for Exam Tomorrow. Independent VS. Dependent Variable Response Variables (DV) measures an outcome of a study Explanatory Variables (IV) explains.
Business Statistics: A Decision-Making Approach, 6e © 2005 Prentice-Hall, Inc. Chap 13-1 Introduction to Regression Analysis Regression analysis is used.
Chapter 9: Correlation and Regression Analysis. Correlation Correlation is a numerical way to measure the strength and direction of a linear association.
Scatter Diagrams scatter plot scatter diagram A scatter plot is a graph that may be used to represent the relationship between two variables. Also referred.
CHAPTER 5 CORRELATION & LINEAR REGRESSION. GOAL : Understand and interpret the terms dependent variable and independent variable. Draw a scatter diagram.
Economics 173 Business Statistics Lecture 10 Fall, 2001 Professor J. Petry
© 2001 Prentice-Hall, Inc.Chap 13-1 BA 201 Lecture 18 Introduction to Simple Linear Regression (Data)Data.
STATISTICS 12.0 Correlation and Linear Regression “Correlation and Linear Regression -”Causal Forecasting Method.
1 Forecasting/ Causal Model MGS Forecasting Quantitative Causal Model Trend Time series Stationary Trend Trend + Seasonality Qualitative Expert.
Chapter 14 Introduction to Regression Analysis. Objectives Regression Analysis Uses of Regression Analysis Method of Least Squares Difference between.
WELCOME TO THE PRESENTATION ON LINEAR REGRESSION ANALYSIS & CORRELATION (BI-VARIATE) ANALYSIS.
© 2001 Prentice-Hall, Inc.Chap 13-1 BA 201 Lecture 19 Measure of Variation in the Simple Linear Regression Model (Data)Data.
BUSINESS MATHEMATICS & STATISTICS. Module 6 Correlation ( Lecture 28-29) Line Fitting ( Lectures 30-31) Time Series and Exponential Smoothing ( Lectures.
Chapter 12 Simple Regression Statistika.  Analisis regresi adalah analisis hubungan linear antar 2 variabel random yang mempunyai hub linear,  Variabel.
3-1Forecasting Weighted Moving Average Formula w t = weight given to time period “t” occurrence (weights must add to one) The formula for the moving average.
Statistics for Managers using Microsoft Excel 3rd Edition
Linear Regression and Correlation Analysis
BUSINESS MATHEMATICS & STATISTICS.
Simple Linear Regression
Regression Computer Print Out
LESSON 21: REGRESSION ANALYSIS
Correlation and Regression
PENGOLAHAN DAN PENYAJIAN
Least-Squares Regression
Presentation transcript:

Linear Trend Lines = b 0 + b 1 X t Where is the dependent variable being forecasted X t is the independent variable being used to explain Y. In Linear Trend Lines, X t is assumed to be t. b 1 is the slope of the line, determined by Excel b 0 is the y-intercept of the line, determined by Excel

Tools Data Analysis Regression

Coefficient of Determination: R-square Proportion of variation in Y around its mean that is accounted for by the regression model 0 <= R 2 <= 1 Will always increase as add more independent variables into regression model. Use adjusted R 2 to compare when more than one independent variable is used

Standard Error of the line: S e The standard deviation of estimation errors The measure of amount of scatter around the regression line Can be used as a rough rule of thumb for predicting level of accuracy.

Excel’s Trend Function =trend(known y-range, known x-range, new x) Where known y-range are the cells that hold known values for the y variable Where known x-range are the cells that hold known values for the x variable Where new x is the cell or value for which the y variable is to be forecasted

The Quadratic Trend Model

Simple Linear Regression: Example You want to examine the linear dependency of the annual sales of produce stores on their size in square footage. Sample data for seven stores were obtained. Find the equation of the straight line that fits the data best. Annual Store Square Sales Feet($1000) 1 1,726 3, ,542 3, ,816 6, ,555 9, ,292 3, ,208 5, ,313 3,760

Scatter Diagram: Example Excel Output

Equation for the Sample Regression Line: Example From Excel Printout:

Graph of the Sample Regression Line: Example Y i = X i 

Interpretation of Results: Example The slope of means that for each increase of one unit in X, we predict the average of Y to increase by an estimated units. The model estimates that for each increase of one square foot in the size of the store, the expected annual sales are predicted to increase by $1487.