CORRELATION ANALYSIS.

Slides:



Advertisements
Similar presentations
Chapter 16: Correlation.
Advertisements

Lesson 10: Linear Regression and Correlation
Correlation and regression
13- 1 Chapter Thirteen McGraw-Hill/Irwin © 2005 The McGraw-Hill Companies, Inc., All Rights Reserved.
Correlation and Linear Regression.
Correlation and regression Dr. Ghada Abo-Zaid
Learning Objectives Copyright © 2002 South-Western/Thomson Learning Data Analysis: Bivariate Correlation and Regression CHAPTER sixteen.
Learning Objectives Copyright © 2004 John Wiley & Sons, Inc. Bivariate Correlation and Regression CHAPTER Thirteen.
Probabilistic & Statistical Techniques Eng. Tamer Eshtawi First Semester Eng. Tamer Eshtawi First Semester
Learning Objectives 1 Copyright © 2002 South-Western/Thomson Learning Data Analysis: Bivariate Correlation and Regression CHAPTER sixteen.
Describing Relationships Using Correlation and Regression
Correlation Chapter 9.
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.
SIMPLE LINEAR REGRESSION
REGRESSION AND CORRELATION
Regression Chapter 10 Understandable Statistics Ninth Edition By Brase and Brase Prepared by Yixun Shi Bloomsburg University of Pennsylvania.
Correlation 1. Correlation - degree to which variables are associated or covary. (Changes in the value of one tends to be associated with changes in the.
Correlation and Regression Analysis
Correlation and Regression 1. Bivariate data When measurements on two characteristics are to be studied simultaneously because of their interdependence,
Correlation & Regression Math 137 Fresno State Burger.
Correlation vs. Causation What is the difference?.
Correlation and Linear Regression
McGraw-Hill/Irwin Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. Chapter 13 Linear Regression and Correlation.
Lecture 16 Correlation and Coefficient of Correlation
Introduction to Linear Regression and Correlation Analysis
Correlation Scatter Plots Correlation Coefficients Significance Test.
Linear Regression and Correlation
Scatter Plots and Linear Correlation. How do you determine if something causes something else to happen? We want to see if the dependent variable (response.
Copyright © Cengage Learning. All rights reserved. 13 Linear Correlation and Regression Analysis.
Chapter 14 – Correlation and Simple Regression Math 22 Introductory Statistics.
Learning Objective Chapter 14 Correlation and Regression Analysis CHAPTER fourteen Correlation and Regression Analysis Copyright © 2000 by John Wiley &
Chapter 6 & 7 Linear Regression & Correlation
Copyright © 2010 Pearson Education, Inc Chapter Seventeen Correlation and Regression.
Chapter 12 Examining Relationships in Quantitative Research Copyright © 2013 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin.
WELCOME TO THETOPPERSWAY.COM.
Introduction to Linear Regression
2 Variable Stats Does the amount of time spent on homework improve your grade? If you eat more junk food will you gain weight? Does the amount of rainfall.
 Graph of a set of data points  Used to evaluate the correlation between two variables.
Examining Relationships in Quantitative Research
© Copyright McGraw-Hill Correlation and Regression CHAPTER 10.
Chapter 16 Data Analysis: Testing for Associations.
CORRELATIONAL RESEARCH STUDIES
CORRELATION. Correlation key concepts: Types of correlation Methods of studying correlation a) Scatter diagram b) Karl pearson’s coefficient of correlation.
Chapter Thirteen Copyright © 2006 John Wiley & Sons, Inc. Bivariate Correlation and Regression.
Creating a Residual Plot and Investigating the Correlation Coefficient.
Chapter 4 Summary Scatter diagrams of data pairs (x, y) are useful in helping us determine visually if there is any relation between x and y values and,
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.
Correlation & Regression Analysis
Chapter 8: Simple Linear Regression Yang Zhenlin.
Chapter 16: Correlation. So far… We’ve focused on hypothesis testing Is the relationship we observe between x and y in our sample true generally (i.e.
Copyright © 2010 Pearson Education, Inc Chapter Seventeen Correlation and Regression.
Regression Analysis. 1. To comprehend the nature of correlation analysis. 2. To understand bivariate regression analysis. 3. To become aware of the coefficient.
Linear Regression and Correlation Chapter GOALS 1. Understand and interpret the terms dependent and independent variable. 2. Calculate and interpret.
Chapter 15: Correlation. Correlations: Measuring and Describing Relationships A correlation is a statistical method used to measure and describe the relationship.
©The McGraw-Hill Companies, Inc. 2008McGraw-Hill/Irwin Linear Regression and Correlation Chapter 13.
Chapter 14 Introduction to Regression Analysis. Objectives Regression Analysis Uses of Regression Analysis Method of Least Squares Difference between.
GOAL: I CAN USE TECHNOLOGY TO COMPUTE AND INTERPRET THE CORRELATION COEFFICIENT OF A LINEAR FIT. (S-ID.8) Data Analysis Correlation Coefficient.
Chapter 13 Linear Regression and Correlation. Our Objectives  Draw a scatter diagram.  Understand and interpret the terms dependent and independent.
Correlation and Simple Linear Regression
Correlation and Regression
CHAPTER fourteen Correlation and Regression Analysis
Regression Analysis PhD Course.
CORRELATION ANALYSIS.
STEM Fair Graphs.
Correlation & Regression
Chapter Thirteen McGraw-Hill/Irwin
Presentation transcript:

CORRELATION ANALYSIS

Introduction Correlation shows association between two or more random variables Correlation analysis shows both the nature and strength of relationship between two variables Correlation lies between +1 to -1

A zero correlation indicates that there is no relationship between the variables A correlation of –1 indicates a perfect negative correlation A correlation of +1 indicates a perfect positive correlation

Types of Correlation Types Type 1 Type 2 Type 3 There are three types of correlation Types Type 1 Type 2 Type 3

Type1 Positive Negative No Perfect If two related variables are such that when one increases (decreases), the other also increases (decreases). If two variables are such that when one increases (decreases), the other decreases (increases) If both the variables are independent

Type 2 Linear Non – linear When plotted on a graph it tends to be a perfect line When plotted on a graph it is not a straight line

Diagrammatic Representation of Correlation

Type 3 Simple Multiple Partial Two independent and one dependent variable One dependent and more than one independent variables One dependent variable and more than one independent variable but only one independent variable is considered and other independent variables are considered constant

Methods of Studying Correlation Scatter Diagram Method Karl Pearson Coefficient Correlation of Method Spearman’s Rank Correlation Method

Correlation: Linear Relationships Strong relationship = good linear fit Very good fit Moderate fit Points clustered closely around a line show a strong correlation. The line is a good predictor (good fit) with the data. The more spread out the points, the weaker the correlation, and the less good the fit..

Coefficient of Correlation A measure of the strength of the linear relationship between two variables that is defined in terms of the (sample) covariance of the variables divided by their (sample) standard deviations Represented by “r” r lies between +1 to -1 Magnitude and Direction

-1 < r < +1 The + and – signs are used for positive linear correlations and negative linear correlations, respectively

Product Moment Method Shared variability of X and Y variables on the top Individual variability of X and Y variables on the bottom

Interpreting Correlation Coefficient r strong correlation: r > .70 or r < –.70 moderate correlation: r is between .30 & .70 or r is between –.30 and –.70 weak correlation: r is between 0 and .30 or r is between between 0 and –.30 .

Coefficient of Determination Coefficient of determination lies between 0 to 1 Represented by r2 The coefficient of determination is a measure of how well the regression line represents the data If the regression line passes exactly through every point on the scatter plot, it would be able to explain all of the variation The further the line is away from the points, the less it is able to explain

r 2, is useful because it gives the proportion of the variance (fluctuation) of one variable that is predictable from the other variable It is a measure that allows us to determine how certain one can be in making predictions from a certain model/graph  The coefficient of determination is the ratio of the explained variation to the total variation The coefficient of determination is such that 0 <  r 2 < 1,  and denotes the strength of the linear association between x and y   

The Coefficient of determination represents the percent of the data that is the closest to the line of best fit For example, if r = 0.922, then r 2 = 0.850 Which means that 85% of the total variation in y can be explained by the linear relationship between x and y (as described by the regression equation) The other 15% of the total variation in y remains unexplained

Spearman’s rank coefficient A method to determine correlation when the data is not available in numerical form and as an alternative the method, the method of rank correlation is used. Thus when the values of the two variables are converted to their ranks, and there from the correlation is obtained, the correlations known as rank correlation.

Computation of Rank correlation Spearman’s rank correlation coefficient ρ can be calculated when Actual ranks given Ranks are not given but grades are given but not repeated Ranks are not given and grades are given and repeated

Testing the significance of correlation coefficient Significance of r can be tested with the help of Probable error .