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Regression with Dummy Variables [Pehme köide]

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Social scientists are often interested in studying differences in groups, such as gender or race differences in attitudes, buying behaviors, or socioeconomic characteristics. When the researcher seeks to estimate group differences through the use of independent variables that are qualitative (i.e., measured at only the nominal level), dummy variables will allow the researcher to represent information about group membership in quantitative terms without imposing unrealistic measurement assumptions on the categorical variables. Beginning with the simplest model, Hardy probes the use of dummy variable regression in increasingly complex specifications, exploring issues such as: interaction, heteroscedasticity, multiple comparisons and significance testing, the use of effects or contrast coding, testing for curvilinearity, and estimating a piecewise linear regression.
Series Editor's Introduction v
Introduction
1(6)
A Review of Multiple Regression
4(3)
Creating Dummy Variables
7(11)
Choosing a Reference Group
9(3)
Descriptive Statistics
12(6)
Distributional Statistics
12(1)
Correlation
13(3)
Partial Correlations
16(2)
Using Dummy Variables as Regressors
18(11)
Regression With One Dummy Variable
19(2)
Regression With Multiple Dummy Variables
21(1)
Assessing Differences Between Specified Categories
22(1)
Adding a Second Qualitative Measure
23(2)
Predicted Values
25(1)
Adding Quantitative Variables to the Specification
26(3)
Assessing Group Differences in Effects
29(35)
Specifying Interaction Effects
33(15)
Separate Subgroup Regressions
48(5)
Dealing With Heteroscedasticity
53(3)
Interpreting Dummy Variables in Semilogarithmic Equations
56(4)
Testing for Heteroscedasticity With More Than Two Groups
60(1)
Methods for Making Multiple Comparisons With Nonindependent Tests
61(3)
Alternative Coding Schemes for Dummy Variables
64(11)
Effects-Coded Dummy Variables
64(7)
Regression Results
67(4)
Contrast-Coded Dummy Variables
71(4)
Regression Results
73(2)
Special Topics in the Use of Dummy Variables
75(9)
Dummy Variables in Logit Models
76(2)
Testing for Curvilinearity
78(2)
Piecewise Linear Regression
80(2)
Dummy Variables in Time-Series Data
82(1)
Dummy Variables and Autocorrelation
83(1)
Conclusions
84(1)
Notes 85(3)
References 88(2)
About the Author 90


Melissa Hardy is a Distinguished Professor Emeritus of Sociology and Demography at Penn State University in University Park. She is an alumna of Albright College and Indiana University in Bloomington. Her research focused on aging and the life course, retirement and age-stratified transitions, self-assessed health, and political attitudes using longitudinal data and a range of quantitative techniques.  Her published work appears in American Sociological Review, Social Forces, Journal of Health and Social Behavior, and Demography. She enjoyed teaching social statistics and general linear models to graduate and undergraduates students, using everyday experiences to help them understand the meaning of statistical concepts.