Chapter 7 – 1 Chapter 7 Measures of Association for Nominal and Ordinal Variables Proportional Reduction of Error (PRE) Degree of Association For Nominal.

Slides:



Advertisements
Similar presentations
Contingency Tables Chapters Seven, Sixteen, and Eighteen Chapter Seven –Definition of Contingency Tables –Basic Statistics –SPSS program (Crosstabulation)
Advertisements

Chapter 13 (Ch. 11 in 2nd Can. Ed.)
1. Nominal Measures of Association 2. Ordinal Measure s of Association
Chapter 16: Correlation.
Association Between Two Variables Measured at the Nominal Level
Chapter 7: Measures of Association for Nominal and Ordinal Variables
Measures of Association for contingency tables 4 Figure 8.2 : lambda – association; +-1: strong; near 0: weak Positive association: as value of the independent.
Describing Relationships Using Correlation and Regression
Chapter 13: The Chi-Square Test
Sociology 601 Class 13: October 13, 2009 Measures of association for tables (8.4) –Difference of proportions –Ratios of proportions –the odds ratio Measures.
Correlation CJ 526 Statistical Analysis in Criminal Justice.
Correlation Chapter 9.
QUANTITATIVE DATA ANALYSIS
PPA 415 – Research Methods in Public Administration Lecture 9 – Bivariate Association.
PPA 501 – Analytical Methods in Administration Lecture 9 – Bivariate Association.
Summary of Quantitative Analysis Neuman and Robson Ch. 11
Leon-Guerrero and Frankfort-Nachmias,
Chapter 14 Association Between Variables Measured at the Ordinal Level.
Chapter 14 in 1e Ch. 12 in 2/3 Can. Ed. Association Between Variables Measured at the Ordinal Level Using the Statistic Gamma and Conducting a Z-test for.
Week 11 Chapter 12 – Association between variables measured at the nominal level.
Chapter 8: Bivariate Regression and Correlation
Chapter 2: Organization of Information: Frequency Distributions Frequency Distributions Proportions and Percentages Percentage Distributions Comparisons.
Significance Testing 10/22/2013. Readings Chapter 3 Proposing Explanations, Framing Hypotheses, and Making Comparisons (Pollock) (pp ) Chapter 5.
Week 12 Chapter 13 – Association between variables measured at the ordinal level & Chapter 14: Association Between Variables Measured at the Interval-Ratio.
Association between Variables Measured at the Nominal Level.
Statistics 1 Course Overview
Bivariate Relationships Analyzing two variables at a time, usually the Independent & Dependent Variables Like one variable at a time, this can be done.
Chapter 3 Statistical Concepts.
Introduction to Quantitative Data Analysis (continued) Reading on Quantitative Data Analysis: Baxter and Babbie, 2004, Chapter 12.
Regression and Correlation. Bivariate Analysis Can we say if there is a relationship between the number of hours spent in Facebook and the number of friends.
Chi-Square Testing 10/23/2012. Readings Chapter 7 Tests of Significance and Measures of Association (Pollock) (pp ) Chapter 5 Making Controlled.
1 Measuring Association The contents in this chapter are from Chapter 19 of the textbook. The crimjust.sav data will be used. cjsrate: RATE JOB DONE: CJ.
In the Lab: Working With Crosstab Tables Lab: Association and the Chi-square Test Chapters 7, 8 and 9 1.
Correlation and Linear Regression. Evaluating Relations Between Interval Level Variables Up to now you have learned to evaluate differences between the.
Statistics in Applied Science and Technology Chapter 13, Correlation and Regression Part I, Correlation (Measure of Association)
Chapter 16 The Elaboration Model Key Terms. Descriptive statistics Statistical computations describing either the characteristics of a sample or the relationship.
Figure 15-3 (p. 512) Examples of positive and negative relationships. (a) Beer sales are positively related to temperature. (b) Coffee sales are negatively.
Chapter 12: Measures of Association for Nominal and Ordinal Variables
Cross-Tabs With Nominal Variables 10/24/2013. Readings Chapter 7 Tests of Significance and Measures of Association (Pollock) (pp ) Chapter 5 Making.
1 Lecture 7: Two Way Tables Graduate School Quantitative Research Methods Gwilym Pryce
Chapter 2: The Organization of Information: Frequency Distributions  Frequency Distributions  Proportions and Percentages  Percentage Distributions.
Chapter 7 – 1 Chapter 12: Measures of Association for Nominal and Ordinal Variables Proportional Reduction of Error (PRE) Degree of Association For Nominal.
Chapter 16 Data Analysis: Testing for Associations.
Contingency Tables – Part II – Getting Past Chi-Square?
Copyright © 2013, 2009, and 2007, Pearson Education, Inc. Chapter 12 Analyzing the Association Between Quantitative Variables: Regression Analysis Section.
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,
Practice Problem: Lambda (1)
Measures of Association February 25, Objectives By the end of this meeting, participants should be able to: a)Calculate ordinal measures of association.
Statistics in Applied Science and Technology Chapter14. Nonparametric Methods.
DATA ANALYSIS GRAPHS Graphs are easy to read, and highlight distribution’s shape. The are useful because they show the full range of variation and identity.
Copyright © 2014 by Nelson Education Limited Chapter 11 Introduction to Bivariate Association and Measures of Association for Variables Measured.
Measures of Association June 25, 2008 Ivan Katchanovski, Ph.D. POL 242Y-Y.
CHAPTER 8: RELATIONSHIPS BETWEEN TWO VARIABLES Leon-Guerrero and Frankfort-Nachmias, Essentials of Statistics for a Diverse Society.
Copyright © 2012 by Nelson Education Limited. Chapter 12 Association Between Variables Measured at the Ordinal Level 12-1.
McGraw-Hill/Irwin © 2003 The McGraw-Hill Companies, Inc.,All Rights Reserved. Part Four ANALYSIS AND PRESENTATION OF DATA.
Bivariate Association. Introduction This chapter is about measures of association This chapter is about measures of association These are designed to.
Chapter 1: The What and the Why of Statistics
Association Between Variables Measured at the Ordinal Level
Final Project Reminder
Final Project Reminder
INTRODUCTORY STATISTICS FOR CRIMINAL JUSTICE
Chapter 14 in 1e Ch. 12 in 2/3 Can. Ed.
Chapter 13 (1e), (Ch. 11 2/3e) Association Between Variables Measured at the Nominal Level: Phi, Cramer’s V, and Lambda.
Association Between Variables Measured at the Ordinal Level
Association Between Variables Measured at Nominal Level
THE PRINCIPLE OF PRE.
COMPARING VARIABLES OF ORDINAL OR DICHOTOMOUS SCALES: SPEARMAN RANK- ORDER, POINT-BISERIAL, AND BISERIAL CORRELATIONS.
Association Between Variables Measured At Ordinal Level
1. Nominal Measures of Association 2. Ordinal Measure s of Associaiton
Presentation transcript:

Chapter 7 – 1 Chapter 7 Measures of Association for Nominal and Ordinal Variables Proportional Reduction of Error (PRE) Degree of Association For Nominal Variables –Lambda For Ordinal Variables –Gamma Using Gamma for Dichotomous Variables

Chapter 7 – 2 Measures of Association Measure of association—a single summarizing number that reflects the strength of the relationship, indicates the usefulness of predicting the dependent variable from the independent variable, and often shows the direction of the relationship.

Chapter 7 – 3 Take your best guess? The most common race/ethnicity for U.S. residents. The mode! Now, if we know that this person lives in San Diego, California, would you change your guess? With quantitative analyses we are generally trying to predict or take our best guess at value of the dependent variable. One way to assess the relationship between two variables is to consider the degree to which the extra information of the independent variable makes your guess better. If you know nothing else about a person except that he or she lives in United States and I asked you to guess his or her race/ethnicity, what would you guess?

Chapter 7 – 4 Proportional Reduction of Error (PRE) PRE—the concept that underlies the definition and interpretation of several measures of association. PRE measures are derived by comparing the errors made in predicting the dependent while ignoring the independent variable with errors made when making predictions that use information about the independent variable.

Chapter 7 – 5 Proportional Reduction of Error (PRE) where:E1 = errors of prediction made when the independent variable is ignored E2 = errors of prediction made when the prediction is based on the independent variable

Chapter 7 – 6 Two PRE Measures: Lambda & Gamma Appropriate for… Lambda NOMINAL variables Gamma ORDINAL & DICHOTOMOUS NOMINAL variables

Chapter 7 – 7 Lambda Lambda—An asymmetrical measure of association suitable for use with nominal variables and may range from 0.0 (meaning the extra information provided by the independent variable does not help prediction) to 1.0 (meaning use of independent variable results in no prediction errors). It provides us with an indication of the strength of an association between the independent and dependent variables. A lower value represents a weaker association, while a higher value is indicative of a stronger association

Chapter 7 – 8 Lambda where: E1=N total - N mode of dependent variable

Chapter 7 – 9 EXAMPLE: Victim-Offender Relationship and Type of Crime: 1993 *Source: Kathleen Maguire and Ann L. Pastore, eds., Sourcebook of Criminal Justice Statistics 1994., U.S. Department of Justice, Bureau of Justice Statistics, Washington, D.C.: USGPO, 1995, p Step One—Add percentages to the table to get the data in a format that allows you to clearly assess the nature of the relationship.

Chapter 7 – 10 Victim-Offender Relationship & Type of Crime: 1993 Now calculate E1 E1=N total – N mode = 9,898,980 – 5,045,040 = 4,835,940

Chapter 7 – 11 Victim-Offender Relationship & Type of Crime: 1993 Now calculate E2 E2=[N (rape/sexual assault column total) – N (rape/sexual assault column mode) ] + [N (robbery column total) – N (robbery column mode) ] + [N (assault column total) – N (assault column mode) ] =[472,760 – 350,670] + …

Chapter 7 – 12 Victim-Offender Relationship and Type of Crime: 1993 Now calculate E2 E2=[N (rape/sexual assault column total) – N (rape/sexual assault column mode) ] + [N (robbery column total) – N (robbery column mode) ] + [N (assault column total) – N (assault column mode) ] =[472,760 – 350,670] + [1,161,900 – 930,860] + …

Chapter 7 – 13 Victim-Offender Relationship and Type of Crime: 1993 Now calculate E2 E2=[N (rape/sexual assault column total) – N (rape/sexual assault column mode) ] + [N (robbery column total) – N (robbery column mode) ] + [N (assault column total) – N (assault column mode) ] =[472,760 – 350,670] + [1,161,900 – 930,860] + [8,264,320 – 4,272,230] = 4,345,220

Chapter 7 – 14 Victim-Offender Relationship and Type of Crime: 1993 Lambda=[E1– E2] / E1 =[4,835,940 – 4,345,220] / 4,835,940 =.10 So, we know that t en percent of the errors in predicting the relationship between victim and offender (stranger vs. non- stranger) can be reduced by taking into account the type of crime that was committed.

Chapter 7 – 15 Asymmetrical Measure of Association A measure whose value may vary depending on which variable is considered the independent variable and which the dependent variable. Lambda is an asymmetrical measure of association.

Chapter 7 – 16 Symmetrical Measure of Association A measure whose value will be the same when either variable is considered the independent variable or the dependent variable. Gamma is a symmetrical measure of association…

Chapter 7 – 17 Before Computing GAMMA: It is necessary to introduce the concept of paired observations. Paired observations – Observations compared in terms of their relative rankings on the independent and dependent variables.

Chapter 7 – 18 Types of Pairs Same order pair (Ns) – Paired observations that show a positive association; the member of the pair ranked higher on the independent variable is also ranked higher on the dependent variable. Inverse order pair (Nd) – Paired observations that show a negative association; the member of the pair ranked higher on the independent variable is ranked lower on the dependent variable.

Chapter 7 – 19 Counting Pairs – Sample Data

Chapter 7 – 20 Counting Same Order Pairs

Chapter 7 – 21 Counting Inverse Order Pairs

Chapter 7 – 22 Gamma—a symmetrical measure of association suitable for use with ordinal variables or with dichotomous nominal variables. It can vary from 0.0 (meaning the extra information provided by the independent variable does not help prediction) to  1.0 (meaning use of independent variable results in no prediction errors) and provides us with an indication of the strength and direction of the association between the variables. When there are more Ns pairs, gamma will be positive; when there are more Nd pairs, gamma will be negative. Gamma

Chapter 7 – 23 Gamma

Chapter 7 – 24 Interpreting Gamma The sign depends on the way the variables are coded: + the two “high” values are associated, as are the two “lows” –the “highs” are associated with the “lows”.00 to.24“no relationship”.25 to.49“weak relationship”.50 to.74“moderate relationship”.75 to 1.00“strong relationship”

Chapter 7 – 25 Measures of association—a single summarizing number that reflects the strength of the relationship. This statistic show the magnitude and/or direction of a relationship between variables. Magnitude—the closer to the absolute value of 1 the stronger the association. If the measure equals 0, there is no relationship between the two variables. Direction—the sign on the measure indicates if the relationship is positive or negative. In a positive relationship, when one variable is high, so is the other. In a negative relationship, when one variable is high, the other is low. Measures of Association