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SW388R7 Data Analysis & Computers II Multiple Regression – Basic Relationships Slide 1 Purpose of multiple regression Different types of multiple regression Standard multiple regression Hierarchical multiple regression Stepwise multiple regression Steps in solving regression problems SW388R7 Data Analysis & Computers II Purpose of multiple regression Slide 2 The purpose of multiple regression is to analyze the relationship between metric or dichotomous independent variables and a metric dependent variable. If there is a relationship, using the information in the independent variables will improve our accuracy in predicting values for the dependent variable. SW388R7 Data Analysis & Computers II Types of multiple regression Slide 3 There are three types of multiple regression, each of which is designed to answer a different question: Standard multiple regression is used to evaluate the relationships between a set of independent variables and a dependent variable. Hierarchical, or sequential, regression is used to examine the relationships between a set of independent variables and a dependent variable, after controlling for the effects of some other independent variables on the dependent variable. Stepwise, or statistical, regression is used to identify the subset of independent variables that has the strongest relationship to a dependent variable. SW388R7 Data Analysis & Computers II Standard multiple regression Slide 4 In standard multiple regression, all of the independent variables are entered into the regression equation at the same time Multiple R and R² measure the strength of the relationship between the set of independent variables and the dependent variable. An F test is used to determine if the relationship can be generalized to the population represented by the sample. A t-test is used to evaluate the individual relationship between each independent variable and the dependent variable. SW388R7 Data Analysis & Computers II Hierarchical multiple regression Slide 5 In hierarchical multiple regression, the independent variables are entered in two stages. In the first stage, the independent variables that we want to control for are entered into the regression. In the second stage, the independent variables whose relationship we want to examine after the controls are entered. A statistical test of the change in R² from the first stage is used to evaluate the importance of the variables entered in the second stage. SW388R7 Data Analysis & Computers II Stepwise multiple regression Slide 6 Stepwise regression is designed to find the most parsimonious set of predictors that are most effective in predicting the dependent variable. Variables are added to the regression equation one at a time, using the statistical criterion of maximizing the R² of the included variables. When none of the possible addition can make a statistically significant improvement in R², the analysis stops. SW388R7 Data Analysis & Computers II Problem 1 - standard multiple regression Slide 7 In the dataset GSS2000.sav, is the following statement true, false, or an incorrect application of a statistic? Assume that there is no problem with missing data, violation of assumptions, or outliers, and that the split sample validation will confirm the generalizability of the results. Use a level of significance of 0.05. The variables "strength of affiliation" [reliten] and "frequency of prayer" [pray] have a strong relationship to the variable "frequency of attendance at religious services" [attend]. Survey respondents who were less strongly affiliated with their religion attended religious services less often. Survey respondents who prayed less often attended religious services less often. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 1 - 1 Slide 8 When a problem states that there is a relationship between some independent variables and a dependent variable, we do standard multiple regression. The variables listed first in the 1. Instatement the dataset is the following statement true, false, or an incorrect problem are GSS2000.sav, the independent variables (ivs): Assume that there is no problem with missing data, violation of application of a statistic? "strength of affiliation" [reliten]and that the split sample validation will confirm the assumptions, or outliers, and "frequency of prayer" [pray] generalizability of the results. Use a level of significance of 0.05. The variables "strength of affiliation" [reliten] and "frequency of prayer" [pray] have a strong relationship to the variable "frequency of attendance at religious services" [attend]. Survey respondents who were less strongly affiliated with their religion attended religious services less often. Survey respondents who prayed less often attended religious services The variable that is less often. related to is the 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic dependent variable (dv): "frequency of attendance at religious services" [attend]. SW388R7 Data Analysis & Computers II Dissecting problem 1 - 2 Slide 9 In1.order fordataset a problem to be true, is wethe following statement true, false, or an incorrect In the GSS2000.sav, will have find:of a statistic? Assume that there is no problem with missing data, violation of application •a statistically significant relationship assumptions, or outliers, and that the split sample validation will confirm the between the ivs and the dv generalizability of the results. Use a level of significance of 0.05. •a relationship of the correct strength The variables "strength of affiliation" [reliten] and "frequency of prayer" [pray] have a strong relationship to the variable "frequency of attendance at religious services" [attend]. Survey respondents who were less strongly affiliated with their religion attended religious services less often. Survey respondents who prayed less often attended religious services less often. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic The relationship of each of the independent variables to the dependent variable must be statistically significant and interpreted correctly. SW388R7 Data Analysis & Computers II Request a standard multiple regression Slide 10 To compute a multiple regression in SPSS, select the Regression | Linear command from the Analyze menu. SW388R7 Data Analysis & Computers II Specify the variables and selection method Slide 11 First, move the dependent variable attend to the Dependent text box. Second, move the independent variables reliten and pray to the Independent(s) list box. Fourth, click on the Statistics… button to specify the statistics options that we want. Third, select the method for entering the variables into the analysis from the drop down Method menu. In this example, we accept the default of Enter for direct entry of all variables, which produces a standard multiple regression. SW388R7 Data Analysis & Computers II Specify the statistics output options Slide 12 First, mark the checkboxes for Estimates on the Regression Coefficients panel. Second, mark the checkboxes for Model Fit and Descriptives. Third, click on the Continue button to close the dialog box. SW388R7 Data Analysis & Computers II Request the regression output Slide 13 Click on the OK button to request the regression output. SW388R7 Data Analysis & Computers II LEVEL OF MEASUREMENT Slide 14 Multiple regression requires that the dependent variable be metric and the independent variables be metric or dichotomous. "Frequency of attendance at religious services" [attend] is an ordinal level variable, which satisfies the level of measurement requirement if we follow the convention of treating ordinal level variables as metric variables. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. "Strength of affiliation" [reliten] and "frequency of prayer" [pray] are ordinal level variables. If we follow the convention of treating ordinal level variables as metric variables, the level of measurement requirement for multiple regression analysis is satisfied. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. SW388R7 Data Analysis & Computers II SAMPLE SIZE Slide 15 Descriptive Statistics Mean HOW OFTEN R ATTENDS RELIGIOUS SERVICES STRENGTH OF AFFILIATION HOW OFTEN DOES R PRAY Std. Deviation N 3.15 2.653 113 2.12 1.084 113 2.90 1.575 113 The minimum ratio of valid cases to independent variables for multiple regression is 5 to 1. With 113 valid cases and 2 independent variables, the ratio for this analysis is 56.5 to 1, which satisfies the minimum requirement. In addition, the ratio of 56.5 to 1 satisfies the preferred ratio of 15 to 1. SW388R7 Data Analysis & Computers II Slide 16 OVERALL RELATIONSHIP BETWEEN INDEPENDENT AND DEPENDENT VARIABLES - 1 The probability of the F statistic (49.824) for the overall regression relationship is <0.001, less than or equal to the level of significance of 0.05. We reject the null hypothesis that there is no relationship between the set of independent variables and the dependent variable (R² = 0). We support the research hypothesis that there is a statistically significant relationship between the set of independent variables and the dependent variable. ANOVAb Model 1 Regress ion Res idual Total Sum of Squares 374.757 413.685 788.442 df 2 110 112 Mean Square 187.379 3.761 F 49.824 Sig. .000 a a. Predictors : (Constant), HOW OFTEN DOES R PRAY, STRENGTH OF AFFILIATION b. Dependent Variable: HOW OFTEN R ATTENDS RELIGIOUS SERVICES SW388R7 Data Analysis & Computers II Slide 17 OVERALL RELATIONSHIP BETWEEN INDEPENDENT AND DEPENDENT VARIABLES - 2 The Multiple R for the relationship between the set of independent variables and the dependent variable is 0.689, which would be characterized as strong using the rule of thumb than a correlation less than or equal to 0.20 is characterized as very weak; greater than 0.20 and less than or equal to 0.40 is weak; greater than 0.40 and less than or equal to 0.60 is moderate; greater than 0.60 and less than or equal to 0.80 is strong; and greater than 0.80 is very strong. Model Summary Model 1 R R Square a .689 .475 Adjus ted R Square .466 Std. Error of the Es timate 1.939 a. Predictors : (Constant), HOW OFTEN DOES R PRAY, STRENGTH OF AFFILIATION SW388R7 Data Analysis & Computers II Slide 18 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 1 For the independent variable strength of affiliation, the probability of the t statistic (-5.857) for the b coefficient is <0.001 which is less than or equal to the level of significance of 0.05. We reject the null hypothesis that the slope associated with strength of affiliation is equal to zero (b = 0) and conclude that there is a statistically significant relationship between strength of affiliation and frequency of attendance at religious services. Coefficientsa Model 1 (Cons tant) STRENGTH OF AFFILIATION HOW OFTEN DOES R PRAY Uns tandardized Coefficients B Std. Error 7.167 .442 Standardized Coefficients Beta t 16.206 Sig. .000 -1.138 .194 -.465 -5.857 .000 -.554 .134 -.329 -4.145 .000 a. Dependent Variable: HOW OFTEN R ATTENDS RELIGIOUS SERVICES SW388R7 Data Analysis & Computers II Slide 19 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 2 Coefficientsa Model 1 (Cons tant) STRENGTH OF AFFILIATION HOW OFTEN DOES R PRAY Uns tandardized Coefficients B Std. Error 7.167 .442 Standardized Coefficients Beta t 16.206 Sig. .000 -1.138 .194 -.465 -5.857 .000 -.554 .134 -.329 -4.145 .000 a. Dependent Variable: HOW OFTEN R ATTENDS RELIGIOUS SERVICES The b coefficient associated with strength of affiliation (-1.138) is negative, indicating an inverse relationship in which higher numeric values for strength of affiliation are associated with lower numeric values for frequency of attendance at religious services. Since both variables are ordinal level, we will have to look at the coding for each before we can make a correct interpretation. For ordinal level variables the numeric codes can be associated with labels in ascending or descending order. SW388R7 Data Analysis & Computers II Slide 20 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 3 The independent variable strength of affiliation is an ordinal variable that is coded so that higher numeric values are associated with survey respondents who were less strongly affiliated with their religion. SW388R7 Data Analysis & Computers II Slide 21 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 4 The dependent variable frequency of attendance at religious services is also an ordinal variable. It is coded so that lower numeric values are associated with survey respondents who attended religious services less often. Therefore, the negative value of b implies that survey respondents who were less strongly affiliated with their religion attended religious services less often. SW388R7 Data Analysis & Computers II Slide 22 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 5 For the independent variable frequency of prayer, the probability of the t statistic (-4.145) for the b coefficient is <0.001 which is less than or equal to the level of significance of 0.05. We reject the null hypothesis that the slope associated with frequency of prayer is equal to zero (b = 0) and conclude that there is a statistically significant relationship between frequency of prayer and frequency of attendance at religious services. Coefficientsa Model 1 (Cons tant) STRENGTH OF AFFILIATION HOW OFTEN DOES R PRAY Uns tandardized Coefficients B Std. Error 7.167 .442 Standardized Coefficients Beta t 16.206 Sig. .000 -1.138 .194 -.465 -5.857 .000 -.554 .134 -.329 -4.145 .000 a. Dependent Variable: HOW OFTEN R ATTENDS RELIGIOUS SERVICES SW388R7 Data Analysis & Computers II Slide 23 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 6 Coefficientsa Model 1 (Cons tant) STRENGTH OF AFFILIATION HOW OFTEN DOES R PRAY Uns tandardized Coefficients B Std. Error 7.167 .442 Standardized Coefficients Beta t 16.206 Sig. .000 -1.138 .194 -.465 -5.857 .000 -.554 .134 -.329 -4.145 .000 a. Dependent Variable: HOW OFTEN R ATTENDS RELIGIOUS SERVICES The b coefficient associated with how often does r pray (-0.554) is negative, indicating an inverse relationship in which higher numeric values for how often does r pray are associated with lower numeric values for frequency of attendance at religious services. Since both variables are ordinal level, we will have to look at the coding for each before we can make a correct interpretation. For ordinal level variables the numeric codes can be associated with labels in ascending or descending order. SW388R7 Data Analysis & Computers II Slide 24 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 7 The independent variable frequency of prayer is an ordinal variable that is coded so that higher numeric values are associated with survey respondents who prayed less often. SW388R7 Data Analysis & Computers II Slide 25 RELATIONSHIP OF INDIVIDUAL INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 8 The dependent variable frequency of attendance at religious services is also an ordinal variable. It is coded so that lower numeric values are associated with survey respondents who attended religious services less often. Therefore, the negative value of b implies that survey respondents who prayed less often attended religious services less often. SW388R7 Data Analysis & Computers II Answer to problem 1 Slide 26 The independent and dependent variables were metric (ordinal). The ratio of cases to independent variables was 56.5 to 1. The overall relationship was statistically significant and its strength was characterized correctly. The b coefficient for all variables was statistically significant and the direction of the relationships were characterized correctly. The answer to the question is true with caution. The caution is added because of the ordinal variables. SW388R7 Data Analysis & Computers II Problem 2 – hierarchical regression Slide 27 In the dataset GSS2000.sav, is the following statement true, false, or an incorrect application of a statistic? Assume that there is no problem with missing data, violation of assumptions, or outliers, and that the split sample validation will confirm the generalizability of the results. Use a level of significance of 0.05. After controlling for the effects of the variables "age" [age] and "sex" [sex], the addition of the variables "happiness of marriage" [hapmar], "condition of health" [health], and "attitude toward life" [life] reduces the error in predicting "general happiness" [happy] by 36.1%. After controlling for age and sex, the variables happiness of marriage, condition of health, and attitude toward life each make an individual contribution to reducing the error in predicting general happiness. Survey respondents who were less happy with their marriages were less happy overall. Survey respondents who said they were not as healthy were less happy overall. Survey respondents who felt life was less exciting were less happy overall. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 2 - 1 Slide 28 The variables listed first in the problem statement are the independent variables (ivs) 14.effect In the is the following statement true, false, or an incorrect whose wedataset want toGSS2000.sav, control application ofthe a statistic? Assume that there is no problem with missing data, violation of before we test for assumptions, or outliers, relationship: "age"[age] and and that the split sample validation will confirm the "sex"generalizability [sex], of the results. Use a level of significance of 0.05. After controlling for the effects of the variables "age" [age] and "sex" [sex], the addition of the variables "happiness of marriage" [hapmar], "condition of health" [health], and "attitude toward life" [life] reduces the error in predicting "general happiness" [happy] by 36.1%. After controlling for age and sex, the variables happiness of marriage, condition of health, The we add after the an individual contribution to reducing the error in andvariables attitudethat toward life in each make control variables are the independent predicting general happiness. Survey respondents who were less with their marriages The happy variable that to be variables that we think will have a were lessrelationship happy overall. Survey respondents who said they were not asor healthy predicted relatedwere to is less statistical to the the dependent variable happy overall. Survey respondents who felt life was less exciting were less happy overall. dependent variable: (dv): "general happiness" "happiness of marriage" [hapmar], [happy] "condition of health" [health], and 1. True "attitude toward life" [life] 2. True with caution 3. False 4. Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 2 - 2 Slide 29 In order for a problem to be true, the relationship the true, addedfalse, variables 14. In the dataset GSS2000.sav, is the followingbetween statement or an incorrect and the dependent variable must be application of a statistic? Assume that there is no problem with missing data, violation of statistically significant, and the strength of assumptions, or outliers, and that the sample after validation willthe confirm the the split relationship including control generalizability of the results. Use avariables level ofmust significance of 0.05. be correctly stated. After controlling for the effects of the variables "age" [age] and "sex" [sex], the addition of the variables "happiness of marriage" [hapmar], "condition of health" [health], and "attitude toward life" [life] reduces the error in predicting "general happiness" [happy] by 36.1%. After controlling for age and sex, the variables happiness of marriage, condition of health, and attitude toward life each make an individual contribution to reducing the error in predicting general happiness. Survey respondents who were less happy with their marriages were less happy overall. Survey respondents who said they were not as healthy were less happy overall. Survey respondents who felt life was less exciting were less happy overall. 1.WeTrue are generally not interested whether not the control 2.in True withorcaution variables have a statistically 3.significant False relationship to the variables. 4.dependent Inappropriate application of a statistic The relationship between each of the independent variables entered after the control variables and the dependent variable must be statistically significant and interpreted correctly. SW388R7 Data Analysis & Computers II Request a hierarchical multiple regression Slide 30 To compute a multiple regression in SPSS, select the Regression | Linear command from the Analyze menu. SW388R7 Data Analysis & Computers II Specify independent variables to control for Slide 31 First, move the dependent variable happy to the Dependent text box. Second, move the independent variables to control for age and sex to the Independent(s) list box. Fourth, click on the Next button to tell SPSS to add another block of variables to the regression analysis. Third, select the method for entering the variables into the analysis from the drop down Method menu. In this example, we accept the default of Enter for direct entry of all variables in the first block which will force the controls into the regression. SW388R7 Data Analysis & Computers II Add the other independent variables Slide 32 SPSS identifies that we will now be adding variables to a second block. First, move the other independent variables hapmar, health and life to the Independent(s) list box for block 2. Second, click on the Statistics… button to specify the statistics options that we want. SW388R7 Data Analysis & Computers II Specify the statistics output options Slide 33 First, mark the checkboxes for Estimates on the Regression Coefficients panel. Second, mark the checkboxes for Model Fit, Descriptives, and R squared change. The R squared change statistic will tell us whether or not the variables added after the controls have a relationship to the dependent variable. Third, click on the Continue button to close the dialog box. SW388R7 Data Analysis & Computers II Request the regression output Slide 34 Click on the OK button to request the regression output. SW388R7 Data Analysis & Computers II LEVEL OF MEASUREMENT Slide 35 Multiple regression requires that the dependent variable be metric and the independent variables be metric or dichotomous. "General happiness" [happy] is an ordinal level variable, which satisfies the level of measurement requirement if we follow the convention of treating ordinal level variables as metric variables. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. "Age" [age] is an interval level variable, which satisfies the level of measurement requirements for multiple regression analysis. "Happiness of marriage" [hapmar], "condition of health" [health], and "attitude toward life" [life] are ordinal level variables. If we follow the convention of treating ordinal level variables as metric variables, the level of measurement requirement for multiple regression analysis is satisfied. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. "Sex" [sex] is a dichotomous or dummy-coded nominal variable which may be included in multiple regression analysis. SW388R7 Data Analysis & Computers II SAMPLE SIZE Slide 36 Descriptive Statistics GENERAL HAPPINESS AGE OF RESPONDENT RESPONDENTS SEX HAPPINESS OF MARRIAGE CONDITION OF HEALTH IS LIFE EXCITING OR DULL Mean 1.63 45.50 1.61 Std. Deviation .626 15.221 .490 1.42 .540 90 1.80 .810 90 1.49 .525 90 The minimum ratio of valid cases to independent variables for multiple regression is 5 to 1. With 90 valid cases and 5 independent variables, the ratio for this analysis is 18.0 to 1, which satisfies the minimum requirement. In addition, the ratio of 18.0 to 1 satisfies the preferred ratio of 15 to 1. N 90 90 90 SW388R7 Data Analysis & Computers II Slide 37 OVERALL RELATIONSHIP BETWEEN INDEPENDENT AND DEPENDENT VARIABLES ANOVAc Model 1 2 Regress ion Res idual Total Regress ion Res idual Total Sum of Squares .006 34.894 34.900 12.601 22.299 34.900 df 2 87 89 5 84 89 Mean Square .003 .401 F .007 Sig. .993 a 2.520 .265 9.493 .000 b a. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT b. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT, IS LIFE EXCITING OR DULL, HAPPINESS OF MARRIAGE, CONDITION OF HEALTH c. Dependent Variable: GENERAL HAPPINESS The probability of the F statistic (9.493) for the overall regression relationship for all indpendent variables is <0.001, less than or equal to the level of significance of 0.05. We reject the null hypothesis that there is no relationship between the set of all independent variables and the dependent variable (R² = 0). We support the research hypothesis that there is a statistically significant relationship between the set of all independent variables and the dependent variable. SW388R7 Data Analysis & Computers II Slide 38 REDUCTION IN ERROR IN PREDICTING DEPENDENT VARIABLE - 1 Model Summary Change Statis tics Model 1 2 R R Square a .013 .000 b .601 .361 Adjus ted R Square -.023 .323 Std. Error of the Es timate .633 .515 R Square Change .000 .361 F Change .007 15.814 df1 df2 2 3 87 84 Sig. F Change .993 .000 a. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT b. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT, IS LIFE EXCITING OR DULL, HAPPINESS OF MARRIAGE, CONDITION OF HEALTH The R Square Change statistic for the increase in R² associated with the added variables (happiness of marriage, condition of health, and attitude toward life) is 0.361. Using a proportional reduction in error interpretation for R², information provided by the added variables reduces our error in predicting general happiness by 36.1%. SW388R7 Data Analysis & Computers II Slide 39 REDUCTION IN ERROR IN PREDICTING DEPENDENT VARIABLE - 2 Model Summary Change Statis tics Model 1 2 R R Square .013 a .000 b .601 .361 Adjus ted R Square -.023 .323 Std. Error of the Es timate .633 .515 R Square Change .000 .361 F Change .007 15.814 df1 df2 2 3 87 84 Sig. F Change .993 .000 a. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT b. Predictors : (Constant), RESPONDENTS SEX, AGE OF RESPONDENT, IS LIFE EXCITING OR DULL, HAPPINESS OF MARRIAGE, CONDITION OF HEALTH The probability of the F statistic (15.814) for the change in R² associated with the addition of the predictor variables to the regression analysis containing the control variables is <0.001, less than or equal to the level of significance of 0.05. We reject the null hypothesis that there is no improvement in the relationship between the set of independent variables and the dependent variable when the predictors are added (R² Change = 0). We support the research hypothesis that there is a statistically significant improvement in the relationship between the set of independent variables and the dependent variable. SW388R7 Data Analysis & Computers II Slide 40 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 1 Coefficientsa Model 1 2 Uns tandardized Coefficients B Std. Error 1.594 .341 .000 .005 .011 .140 .432 .341 -.001 .004 -.013 .115 Standardized Coefficients Beta t 4.677 .107 .078 1.268 -.385 -.113 (Cons tant) AGE OF RESPONDENT .012 RESPONDENTS SEX .008 (Cons tant) AGE OF RESPONDENT -.035 RESPONDENTS SEX -.010 HAPPINESS OF .599 .104 added individual .517 5.741 If there is a relationship between each MARRIAGE independent variable and the dependent variable, the probability CONDITION OF HEALTH .101b coefficient .072 (slope of.131 1.408 of the statistical test of the the regression IS line) LIFE EXCITING OR than or equal to the level of significance. The will be less .170states that .108 b is equal .142 null hypothesis for this test to zero, 1.570 DULL indicating a flat regression line and no relationship. a. Dependent Variable: GENERAL HAPPINESS If we reject the null hypothesis and find that there is a relationship between the variables, the sign of the b coefficient indicates the direction of the relationship for the data values. If b is greater than or equal to zero, the relationship is positive or direct. If b is less than zero, the relationship is negative or inverse. If the variable is dichotomous or ordinal, the direction of the coding must be taken into account to make a correct interpretation. Sig. .000 .915 .938 .208 .701 .911 .000 .163 .120 SW388R7 Data Analysis & Computers II Slide 41 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 2 Coefficientsa Model 1 2 (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX HAPPINESS OF MARRIAGE CONDITION OF HEALTH IS LIFE EXCITING OR DULL Uns tandardized Coefficients B Std. Error 1.594 .341 .000 .005 .011 .140 .432 .341 -.001 .004 -.013 .115 Standardized Coefficients Beta -.035 -.010 t 4.677 .107 .078 1.268 -.385 -.113 Sig. .000 .915 .938 .208 .701 .911 .012 .008 .599 .104 .517 5.741 .000 .101 .072 .131 1.408 .163 .170 .108 .142 1.570 .120 a. Dependent Variable: GENERAL HAPPINESS For the independent variable happiness of marriage, the probability of the t statistic (5.741) for the b coefficient is <0.001 which is less than or equal to the level of significance of 0.05. We reject the null hypothesis that the slope associated with happiness of marriage is equal to zero (b = 0) and conclude that there is a statistically significant relationship between happiness of marriage and general happiness. SW388R7 Data Analysis & Computers II Slide 42 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 3 Coefficientsa Model 1 2 (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX HAPPINESS OF MARRIAGE CONDITION OF HEALTH IS LIFE EXCITING OR DULL Uns tandardized Coefficients B Std. Error 1.594 .341 .000 .005 .011 .140 .432 .341 -.001 .004 -.013 .115 Standardized Coefficients Beta -.035 -.010 t 4.677 .107 .078 1.268 -.385 -.113 Sig. .000 .915 .938 .208 .701 .911 .012 .008 .599 .104 .517 5.741 .000 .101 .072 .131 1.408 .163 .170 .108 .142 1.570 .120 The b coefficient associated with happiness a. Dependent Variable: GENERAL HAPPINESS of marriage (0.599) is positive, indicating a direct relationship in which higher numeric values for happiness of marriage are associated with higher numeric values for general happiness. SW388R7 Data Analysis & Computers II Slide 43 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 4 The independent variable happiness of marriage is an ordinal variable that is coded so that higher numeric values are associated with survey respondents who were less happy with their marriages. SW388R7 Data Analysis & Computers II Slide 44 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 5 The dependent variable general happiness is also an ordinal variable. It is coded so that higher numeric values are associated with survey respondents who were less happy overall. Therefore, the positive value of b implies that survey respondents who were less happy with their marriages were less happy overall. SW388R7 Data Analysis & Computers II Slide 45 RELATIONSHIP OF ADDED INDEPENDENT VARIABLES TO DEPENDENT VARIABLE - 6 Coefficientsa Model 1 2 (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX (Cons tant) AGE OF RESPONDENT RESPONDENTS SEX HAPPINESS OF MARRIAGE CONDITION OF HEALTH IS LIFE EXCITING OR DULL Uns tandardized Coefficients B Std. Error 1.594 .341 .000 .005 .011 .140 .432 .341 -.001 .004 -.013 .115 Standardized Coefficients Beta -.035 -.010 t 4.677 .107 .078 1.268 -.385 -.113 Sig. .000 .915 .938 .208 .701 .911 .012 .008 .599 .104 .517 5.741 .000 .101 .072 .131 1.408 .163 .170 .108 .142 1.570 .120 a. Dependent Variable: GENERAL HAPPINESS For the independent variable condition of health, the probability of the t statistic (1.408) for the b coefficient is 0.163 which is greater than the level of significance of 0.05. We fail to reject the null hypothesis that the slope associated with condition of health is equal to zero (b = 0) and conclude that there is not a statistically significant relationship between condition of health and general happiness. The statement in the problem that "survey respondents who said they were not as healthy were less happy overall" is incorrect. SW388R7 Data Analysis & Computers II Answer to problem 2 Slide 46 The independent and dependent variables were metric or dichotomous. Some are ordinal. The ratio of cases to independent variables was 18.0 to 1. The overall relationship was statistically significant and its strength was characterized correctly. The change in R2 associated with adding the second block of variables was statistically significant and correctly interpreted. The b coefficient for happiness of marriage was statistically significant and correctly interpreted. The b coefficient for condition of health was not statistically significant. We cannot conclude that there was a relationship between condition of health and general happiness. The answer to the question is false. SW388R7 Data Analysis & Computers II Problem 3 – Stepwise Regression Slide 47 26. In the dataset GSS2000.sav, is the following statement true, false, or an incorrect application of a statistic? Assume that there is no problem with missing data, violation of assumptions, or outliers, and that the split sample validation will confirm the generalizability of the results. Use a level of significance of 0.05. From the list of variables "number of hours worked in the past week" [hrs1], "occupational prestige score" [prestg80], "highest year of school completed" [educ], and "highest academic degree" [degree], the best predictors of "total family income" [income98] are "highest academic degree" [degree] and "occupational prestige score" [prestg80]. Highest academic degree and occupational prestige score have a moderate relationship to total family income. The most important predictor of total family income is occupational prestige score. The second most important predictor of total family income is highest academic degree. Survey respondents who had higher academic degrees had higher total family incomes. Survey respondents who had more prestigious occupations had higher total family incomes. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 3 - 1 Slide 48 The variables listed first in the The variable that to be problem are the 26. statement In the dataset GSS2000.sav, is the following statementpredicted true, false, or an incorrect or related to is independent variables from which application of a statistic? Assume that there is no problem the withdependent missing data, violation of variable the computer will select the best assumptions, or outliers, and that the split sample validation will confirm the (dv): "total family income" subset using statistical criteria. [income98] generalizability of the results. Use a level of significance of 0.05. From the list of variables "number of hours worked in the past week" [hrs1], "occupational prestige score" [prestg80], "highest year of school completed" [educ], and "highest academic degree" [degree], the best predictors of "total family income" [income98] are "highest academic degree" [degree] and "occupational prestige score" [prestg80]. Highest academic degree and occupational prestige score have a moderate relationship to total family income. The most important predictor of total family income is occupational prestige score. The The best predictors are the variables secondthat mostwill important predictor of total family income is highest academic degree. be meet the statistical criteria for inclusion in the model. Survey respondents who had higher academic degrees had higher total family incomes. Survey respondents who had more prestigious occupations had higher total family incomes. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 3 - 2 Slide 49 In order for a problem to be we 26. In the dataset GSS2000.sav, is the following statement true, false, ortrue, an incorrect find:with missing data, violation of application of a statistic? Assume that there iswill no have problem •a statistically significant relationship assumptions, or outliers, and that the split sample validation will confirm the between the included ivs and the dv generalizability of the results. Use a level of significance of 0.05. •a relationship of the correct strength From the list of variables "number of hours worked in the past week" [hrs1], "occupational prestige score" [prestg80], "highest year of school completed" [educ], and "highest academic degree" [degree], the best predictors of "total family income" [income98] are "highest academic degree" [degree] and "occupational prestige score" [prestg80]. Highest academic degree and occupational prestige score have a moderate relationship to total family income. The most important predictor of total family income is occupational prestige score. The second most important predictor of total family income is highest academic degree. Survey respondents who had higher academic degrees had higher total family incomes. Survey respondents who had of more The importance the prestigious variables is occupations had higher total family incomes. 1. 2. 3. 4. provided by the stepwise order of entry of the variable into the regression analysis. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Dissecting problem 3 - 3 Slide 50 26. In the dataset GSS2000.sav, is the following statement true, false, or an incorrect application of a statistic? Assume that there is no problem with missing data, violation of assumptions, or outliers, and that therelationship split sample validation confirm the The between eachwill of the independent variables after theofcontrol generalizability of the results. Use a levelentered of significance 0.05. variables and the dependent variable must be statistically significant interpreted correctly. From the list of variables "number of hours and worked in the past week" [hrs1], "occupational prestige score" [prestg80], "highest year of school completed" [educ], and "highest academic Since statistical significance of a variable's degree" [degree], the best predictors of "total family income" [income98] are "highest contribution toward explaining the variance in the academic degree" [degree] and "occupational prestige score" always [prestg80]. dependent variable is almost used Highest as the academic degree and occupational prestigecriteria score have a moderate relationship to total family for inclusion, the statistical significance of the relationships is usually assured. income. The most important predictor of total family income is occupational prestige score. The second most important predictor of total family income is highest academic degree. Survey respondents who had higher academic degrees had higher total family incomes. Survey respondents who had more prestigious occupations had higher total family incomes. 1. 2. 3. 4. True True with caution False Inappropriate application of a statistic SW388R7 Data Analysis & Computers II Request a stepwise multiple regression Slide 51 To compute a multiple regression in SPSS, select the Regression | Linear command from the Analyze menu. SW388R7 Data Analysis & Computers II Slide 52 Specify variables and method for selecting variables First, move the dependent variable income98 to the Dependent text box. Second, move the independent variables to control for hrs1, prestg80, educ, and degree to the Independent(s) list box. Third, select the Stepwise method for entering the variables into the analysis from the drop down Method menu. SW388R7 Data Analysis & Computers II Open statistics options dialog box Slide 53 First, click on the Statistics… button to specify the statistics options that we want. SW388R7 Data Analysis & Computers II Specify the statistics output options Slide 54 First, mark the checkboxes for Estimates on the Regression Coefficients panel. Second, mark the checkboxes for Model Fit and Descriptives. Third, click on the Continue button to close the dialog box. SW388R7 Data Analysis & Computers II Request the regression output Slide 55 Click on the OK button to request the regression output. SW388R7 Data Analysis & Computers II LEVEL OF MEASUREMENT Slide 56 Multiple regression requires that the dependent variable be metric and the independent variables be metric or dichotomous. "Total family income" [income98] is an ordinal level variable, which satisfies the level of measurement requirement if we follow the convention of treating ordinal level variables as metric variables. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. "Number of hours worked in the past week" [hrs1], "occupational prestige score" [prestg80], and "highest year of school completed" [educ] are interval level variables, which satisfies the level of measurement requirements for multiple regression analysis. "Highest academic degree" [degree] is an ordinal level variable. If we follow the convention of treating ordinal level variables as metric variables, the level of measurement requirement for multiple regression analysis is satisfied. Since some data analysts do not agree with this convention, a note of caution should be included in our interpretation. SW388R7 Data Analysis & Computers II SAMPLE SIZE Slide 57 Descriptive Statistics TOTAL FAMILY INCOME NUMBER OF HOURS WORKED LAST WEEK RS OCCUPATIONAL PRESTIGE SCORE (1980) HIGHEST YEAR OF SCHOOL COMPLETED RS HIGHEST DEGREE Mean 17.06 Std. Deviation 4.130 N 41.45 12.076 151 45.64 14.183 151 14.00 2.587 151 1.74 1.159 151 151 The minimum ratio of valid cases to independent variables for stepwise multiple regression is 5 to 1. With 151 valid cases and 4 independent variables, the ratio for this analysis is 37.75 to 1, which satisfies the minimum requirement. However, the ratio of 37.75 to 1 does not satisfy the preferred ratio of 50 to 1. A caution should be added to the interpretation of the analysis and a split sample validation should be conducted. SW388R7 Data Analysis & Computers II Slide 58 RELATIONSHIP BETWEEN BEST PREDICTORS AND THE DEPENDENT VARIABLE - 1 Variables Entered/Removeda Model 1 The best subset of predictors for total family income included the independent variables: highest academic degree and occupational prestige score. Variables Entered Variables Removed RS HIGHEST DEGREE . RS OCCUPATI ONAL PRESTIGE SCORE (1980) . 2 Method Stepwis e (Criteria: Probabilit y-of-F-to-e nter <= .050, Probabilit y-of-F-to-r emove >= .100). Stepwis e (Criteria: Probabilit y-of-F-to-e nter <= .050, Probabilit y-of-F-to-r emove >= .100). a. Dependent Variable: TOTAL FAMILY INCOME SW388R7 Data Analysis & Computers II Slide 59 RELATIONSHIP BETWEEN BEST PREDICTORS AND THE DEPENDENT VARIABLE - 2 The probability of the F statistic (29.146) for the regression relationship which includes these variables is <0.001, less than or equal to the level of significance of 0.05. We reject the null hypothesis that there is no relationship between the best subset of independent variables and the dependent variable (R² = 0). We support the research hypothesis that there is a statistically significant relationship between the best subset of independent variables and the dependent variable. ANOVAc Model 1 2 Regress ion Res idual Total Regress ion Res idual Total Sum of Squares 620.049 1938.415 2558.464 722.947 1835.517 2558.464 df 1 149 150 2 148 150 Mean Square 620.049 13.009 F 47.661 Sig. .000 a 361.473 12.402 29.146 .000 b a. Predictors : (Constant), RS HIGHEST DEGREE b. Predictors : (Constant), RS HIGHEST DEGREE, RS OCCUPATIONAL PRESTIGE SCORE (1980) c. Dependent Variable: TOTAL FAMILY INCOME SW388R7 Data Analysis & Computers II Slide 60 RELATIONSHIP BETWEEN BEST PREDICTORS AND THE DEPENDENT VARIABLE - 3 Model Summary Model 1 2 R R Square .492 a .242 b .532 .283 Adjus ted R Square .237 .273 Std. Error of the Es timate 3.607 3.522 a. Predictors : (Constant), RS HIGHEST DEGREE b. Predictors : (Constant), RS HIGHEST DEGREE, RS OCCUPATIONAL PRESTIGE SCORE (1980) The Multiple R for the relationship between the subset of independent variables that best predict the dependent variable is 0.532, which would be characterized as moderate using the rule of thumb than a correlation less than or equal to 0.20 is characterized as very weak; greater than 0.20 and less than or equal to 0.40 is weak; greater than 0.40 and less than or equal to 0.60 is moderate; greater than 0.60 and less than or equal to 0.80 is strong; and greater than 0.80 is very strong. SW388R7 Data Analysis & Computers II Slide 61 RELATIONSHIP BETWEEN BEST PREDICTORS AND THE DEPENDENT VARIABLE - 4 Variables Entered/Removeda Based on the table of "Variables Entered/ Removed," the most important predictor of total family income is highest academic degree. The second most important predictor of total family income is occupational prestige score. The importance of the predictors stated in the problem is not correct. Model 1 Variables Entered Variables Removed RS HIGHEST DEGREE . RS OCCUPATI ONAL PRESTIGE SCORE (1980) . 2 Method Stepwis e (Criteria: Probabilit y-of-F-to-e nter <= .050, Probabilit y-of-F-to-r emove >= .100). Stepwis e (Criteria: Probabilit y-of-F-to-e nter <= .050, Probabilit y-of-F-to-r emove >= .100). a. Dependent Variable: TOTAL FAMILY INCOME SW388R7 Data Analysis & Computers II Answer to problem 3 Slide 62 The independent and dependent variables were metric, interval or ordinal. The ratio of cases to independent variables was 37.75 to 1. The relationship of the included variables was statistically significant and the strength of the relationship was characterized correctly. However, the order of entry, or importance, was not stated correctly in the problem. The answer to the question is false. SW388R7 Data Analysis & Computers II Standard multiple regression - 1 Slide 63 The following is a guide to the decision process for answering problems about standard multiple regression analysis: Dependent variable metric? Independent variables metric or dichotomous? No Inappropriate application of a statistic No Inappropriate application of a statistic Yes Ratio of cases to independent variables at least 5 to 1? Yes Probability of ANOVA test of regression less than/equal to level of significance? Yes No False SW388R7 Data Analysis & Computers II Standard multiple regression - 2 Slide 64 Strength of relationship for included variables interpreted correctly? No False Yes Probability of relationship between each IV and DV <= level of significance? No False Yes Direction of relationship between each IV and DV interpreted correctly? Yes No False SW388R7 Data Analysis & Computers II Standard multiple regression - 3 Slide 65 Any independent variable or dependent variable ordinal level of measurement? Yes True with caution No Ratio of cases to independent variables at preferred sample size of at least 15 to 1? Yes True No True with caution SW388R7 Data Analysis & Computers II Hierarchical regression - 1 Slide 66 The following is a guide to the decision process for answering problems about hierarchical regression analysis: Dependent variable metric? Independent variables metric or dichotomous? No Inappropriate application of a statistic No Inappropriate application of a statistic Yes Ratio of cases to independent variables at least 5 to 1? Yes Probability of ANOVA test of regression less than/equal to level of significance? Yes No False SW388R7 Data Analysis & Computers II Hierarchical regression - 2 Slide 67 Probability of F test of for change in R² less than or equal to level of significance? No False Yes Change in R² correctly reported and interpreted? No False Yes Probability of relationship between each IV added after controls and DV less than or equal to level of significance? Yes No False SW388R7 Data Analysis & Computers II Hierarchical regression - 3 Slide 68 Direction of relationship between each IV added after controls and DV interpreted correctly? No False Yes Any independent variable or dependent variable ordinal level of measurement? Yes True with caution No Ratio of cases to independent variables at preferred sample size of at least 15 to 1? Yes True No True with caution SW388R7 Data Analysis & Computers II Stepwise regression - 1 Slide 69 The following is a guide to the decision process for answering problems about stepwise regression analysis: Dependent variable metric? Independent variables metric or dichotomous? No Inappropriate application of a statistic No Inappropriate application of a statistic Yes Ratio of cases to independent variables at least 5 to 1? Yes Is the list of independent variables selected for inclusion correct? Yes No False SW388R7 Data Analysis & Computers II Stepwise regression - 2 Slide 70 Probability of ANOVA test of regression less than/equal to level of significance? No False Yes Strength of relationship for included variables interpreted correctly? No False Yes Is the stated order of importance independent variables correct? Yes No False SW388R7 Data Analysis & Computers II Stepwise regression - 3 Slide 71 Yes Probability of relationship between each included IV and DV less than or equal to level of significance? No False Yes Direction of relationship between each included IV and DV interpreted correctly? Yes No False SW388R7 Data Analysis & Computers II Stepwise regression - 4 Slide 72 Yes Any independent variable or dependent variable ordinal level of measurement? Yes True with caution No Ratio of cases to independent variables at preferred sample size of at least 50 to 1? Yes True No True with caution