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· 분류 : 국내도서 > 대학교재/전문서적 > 사회과학계열 > 사회학
· ISBN : 9791193058237
· 쪽수 : 328쪽
· 출판일 : 2024-03-04
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목차
Chapter 1 How do we examine our interests with data?: Distribution and mean
• Understanding our world with data
• Mapping what we want to study into numbers
• Less likely or more likely? Think about the probabilities of events
• Which group of subjects do we want to study?: The population of interest and the random sample
• Random sample assumption and sampling methods
• What useful information can we have from a sample?: sample mean and sample variance
• Normal distribution and its application: One of the most popular and useful distributions
• Alternative measures to mean: median and mode
• Chapter Summary
• Exercises
Chapter 2 Do more with the sample mean: Inference
• Sampling distribution of the sample mean and the Central Limit Theorem
• The confidence interval (CI) for the population mean μ
• Hypothesis test for the population mean μ
• How to choose an appropriate sample size in the survey for inference
• Chapter Summary
• Exercises
Chapter 3 Examining the relationship between the two quantitative variables I: Correlation coefficient and introduction to the OLS regression analysis
• Covarience and correlation coefficent
• Introduction to the OLS regression analysis
• Chapter Summary
• Exercises
Chapter 4 Examining the relationship between the two continuous variables II: Inference in the OLS regression analysis
• The normally of the error term and the sampling distribution of the OLS estimator
• The linear regression model when the sample size becomes larger
• The Confidence Interval (CI) for the regression parameter β1
• Hypothesis test for the regression parameter β1
• Chapter Summary
• Exercises
Chapter 5 Handling two or more explanatory variables in OLS regression analysis I: Multivariate Regression Analysis
• Partialling out and multicollinearity in multivariate regression analysis
• Omitted variable bias in the linear regression model
• Adding an explanatory variable and the efficiency of OLS estimators
• Chapter Summary
• Exercises
Chapter 6 Handling two or more explanatory variables in OLS regression analysis II: Hypothesis tests and more in Multivariate Regression Analysis
• Hypothesis tests in multivariable regression analysis
• Adjusted R-squared
• Chapter Summary
• Exercises
Chapter 7 The OLS regression analysis when comparing the outcomes of the two or more groups: Use of binary explanatory variables
• Estimating group differences in an outcome variable
• Estimating group differences in an outcome variable without the constant
• Estimating group differences using an interval variable
• Estimating group differences in a slope coefficient
• Estimating group differences in all explanatory variables
• Estimating the nonlinear relationship between an explanatory variable and an outcome variable
• Subsample analysis based on exogenous explanatory variables
• Chapter Summary
• Exercises
Chapter 8 Developing and completing the OLS regression analysis by using rescaling and functional specifications
• Rescaling of the outcome and explanatory variables
• Linearity in the OLS analysis
• Linear and nonlinear specifications in the OLS analysis
• Choosing specifications by considering three different types of causal paths
• General rules for including additional variables and making specifications in multivariate regression analysis
• Chapter Summary
• Exercises
Chapter 9 The OLS regression analysis when the variance of the error term depends on the explanatory variables: Heteroscedasticity
• Chapter Summary
• Exercises
Chapter 10 The regression analysis when the outcome variable is binary: LPM, Logit, and Probit
• Linear Probability Model (LPM): Using OLS when the outcome variable is binary
• The estimation of logit and probit models
• Statistical inference and goodness of it for probit and logit models
• Chapter Summary
• Exercises
Appendix
A. Software programs for data analysis: SPSS, SAS, Stata, R
B. How to do a reliable empirical study
C. z distribution table: standard normal curve tail probabilities
D. t distribution table: critical values of the t distribution
E. Chi-square distribution table: critical values of the Chi-square distribution
F. F distribution table: critical values of the F distribution



















