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11 030 3 Cook R D and Weisberg S 999) Applied Regression Including Computing and Graphics New York Wiley Fox John Regression Diagnostics An Introduction Sage 99 0 К Bartels LM 990) Five Approaches to Model Specification The Political Methodologist Vol 3 No pp 3 King G 98) How Not to Lie With Statistics Avoiding Common Mistakes in Quantitative Political Science American Journal of Political Science Vol 30 pp 87 King G 990) When Not to Use RSquared The Political Methodologist Vol 3 No pp 9 5 LewisBeck Michael S and Andrew Skalaban 990 When to Use RSquared The Political Methodologist 3 ) Luskin R 99) RSquared Encore The Political Methodologist Vol No pp 3 7 Stock J Watson M Introduction to Econometrics rd edition) Addison Wesley Longman; 008 pp Cook R D and Weisberg S 999) Applied Regression Including Computing and Graphics New York Wiley 9 Fox John Applied Regression Analysis and Generalized Linear Models nd Edition Sage 008 Ch 9 0 Gujarati DN Basic econometrics New York McGrawHill 003 Ch 3 Stock J Watson M Introduction to Econometrics rd edition) Addison Wesley Longman; 008 pp Brambor Th Clark W Golder M 00) Understanding Interaction Models Improving Empirical Analyses Political Analysis Vol pp Stock J Watson M Introduction to Econometrics rd edition) Addison Wesley Longman; 008 pp SPSS Cook R D and Weisberg S 999) Applied Regression Including Computing and Graphics New York Wiley Gujarati DN Basic econometrics New York McGrawHill 003 Ch 9 7 Stock J Watson M Introduction to Econometrics rd edition) Addison Wesley Longman; 008 pp
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20 030 3 LewisBeck Michael S and Andrew Skalaban 990 When to Use RSquared The Political Methodologist 3 ) 3 Long J Scott and Jeremy Freese 005 Regression Models for Categorical Dependent Variables Using Stata nd Edition College Station TX Stata Press 33 Long J Scott And Jeremy Freese Regression Models for Categorical Dependent Variables Using Stata 00Stata Press 3 Luskin R 99) RSquared Encore The Political Methodologist Vol No pp 3 35 Regression Analysis UCLA Academic Technology Services Statistical Consulting Group httpwwwatsuclaedustatstatatopicsregressionhtm) 3 Resources to help you learn and use Stata UCLA Academic Technology Services Statistical Consulting Group httpwwwatsuclaedustatstata) 3 Stata 3 httpsophisthseru) httpwwwhserujesdamathbase) Excel SPSS R Python Stata 3 0
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