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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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19 030 ) ) httpwwwhserudata ecsoc_t_npdf#page=33) N C 7 9 SPSS ) 008 c httpwwwhserujesdamathbase) A brief description of Stata httpwwwstatapresscommanualsstata0guide_briefpdf) 3 Bartels LM 990) Five Approaches to Model Specification The Political Methodologist Vol 3 No pp Basics of Stata 008) httpwwwicsuciedu~dvdcoursesstatastatapdf) 5 Baum CF An Introduction to Modern Econometrics Using Stata 00 Stata Press Bertsekas D and Tsitsiklis J Introduction to Probability Athena Scientific pp 7 Brambor T WR Clark M Golder 00 Understanding Interaction Models Improving Empirical Analysis Political Analysis 38 8 Braumoeller B 00) Explaining Variance Political Analysis Vol No3 pp Cameron A Colin and Pravin K Trivedi Microeconometrics using Stata Revised Edition 00 Stata Press 70 p 0 Cook R D and Weisberg S 999) Applied Regression Including Computing and Graphics New York Wiley Fox J 008 Applied Regression Analysis and Generalized Linear Models London Sage Fox John Applied Regression Analysis and Generalized Linear Models nd Edition Sage Fox John Regression Diagnostics An Introduction Sage 99 Goertzel T 00 Myths of Murder and Multiple Regression The Sceptical Inquirer 93 httpcrabrutgersedu%7egoertzelmythsofmurderhtm) 5 Graphics UCLA Academic Technology Services Statistical Consulting Group httpwwwatsuclaedustatstatatopicsgraphicshtm) Gujarati DN Basic econometrics New York McGrawHill 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 8 King G 990) When Not to Use RSquared The Political Methodologist Vol 3 No pp 9 9 Kritzer HM 99 The Data Puzzle The Nature of Interpretation in Quantitative Research American Journal of Political Science 0) 3 30 Larocca Roger 005 Reconciling Conflicting GaussMarkov Conditions Political Analysis

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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