Political Analysis Is to Advance the field of Political Two Sides of the Same Coin? Employing Granger Causality Tests Methodology, Broadly Defined

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Political Analysis Is to Advance the field of Political Two Sides of the Same Coin? Employing Granger Causality Tests Methodology, Broadly Defined ISSN 1047-1987 P OLITIC Oxford University Press Non-Profit OLITICAL NALYSIS 2001 Evans Road Organization P A Cary, North Carolina 27513 U.S. Postage PAID AL Lillington, NC A OLITICAL NALYSIS ISSN 1047-1987 NAL P A Permit No. 32 YSIS https://doi.org/10.1017/S1047198700006914 www.pan.oxfordjournals.org . VOLUME 16 NUMBER 3SUMMER 2008 V OLUME 16 https://www.cambridge.org/core/terms Pass the Pork: Measuring Legislator Shares in Congress Benjamin E. Lauderdale N UMBER Strategic Interaction and Interstate Crises: A Bayesian Quantal Response Estimator for Incomplete Information Games 3S Justin Esarey, Bumba Mukherjee, and Will H. Moore UMMER Modeling Committee Chair Selection in the U.S. House of Representatives Damon M. Cann 2008 Model Specification in Instrumental-Variables Regression Thad Dunning , subject to the Cambridge Core terms of use, available at Legislative Productivity of the U.S. Congress, 1789–2004 J. Tobin Grant and Nathan J. Kelly The goal of Political Analysis is to advance the field of Political Two Sides of the Same Coin? Employing Granger Causality Tests Methodology, broadly defined. It is concerned with the entire range 24 Sep 2021 at 11:46:31 in a Time Series Cross-Section Framework , on M.V. Hood III, Quentin Kidd, and Irwin L. Morris of interests and problems centering upon how political inquiry can be Wouldn’t It Be Nice . .? The Automatic Unbiasedness of OLS (and GLS) conducted. In particular, Political Analysis encourages submissions Robert C. Luskin 170.106.202.226 dealing with the logic of inquiry, measurement, estimation and specification, and theory development. IP address: https://www.cambridge.org/core oxford The official journal of the Society for Political Methodology and the Political Methodology Section of the Downloaded from American Political Science Association Political Analysis Editor-in-Chief Christopher Zorn (Pennsylvania State University, USA) https://doi.org/10.1017/S1047198700006914 . Associate Editors Wendy Tam Cho (University of Illinois, USA) Robert Franzese (University of Michigan, USA) Andrew Martin (Washington University, USA) Editorial Board Larry Bartels (Princeton University, USA) Jonathan Katz (California Institute of https://www.cambridge.org/core/terms Technology, USA) Janet Box-Steffensmeier (Ohio State accelerated online University, USA) Orit Kedar (Massachusetts Institute of Technology, USA) publication Henry Brady (University of California-Berkeley, USA) Gary King (Harvard University, USA) Bear Bramoeller (Ohio State University, USA) Thomas König (University of Mannheim, read papers from this journal Germany) John Brehm (University of Chicago, USA) online, weeks in advance of seeing Jeffrey Lewis (University of California-Los Nancy Burns (University of Michigan, USA) them in print Angeles, USA) Suzanna De Boef (Pennsylvania State John Londregan (Princeton University, USA) University, USA) The advantage for readers: Samantha Luks (Polimetrix, Inc., USA) Scott de Marchi (Duke University, USA) Read the very latest research online ahead of papers Walter Mebane (University of Michigan, USA) , subject to the Cambridge Core terms of use, available at David Firth (Warwick University, UK) appearing in a journal issue. 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Jasjeet Sekhon (University of California- Kristian Gleditsch (University of Essex, UK) Berkeley, USA) 170.106.202.226 Gary Goertz (University of Arizona, USA) Kenneth Shotts (Stanford University, USA) Donald Green (Yale University, USA) Curt Signorino (University of Rochester, USA) www.oxfordjournals.org . IP address: Bernard Grofman (University of California- James Stimson (University of North Carolina- Irvine, USA) Chapel Hill, USA) Simon Jackman (Stanford University, USA) Lee Walker (University of South Carolina, USA) William Jacoby (Michigan State University, USA) Michael Ward (University of Washington, USA) Brad Jones (University of California-Davis, Langche Zeng (University of California-San USA) Diego, USA) https://www.cambridge.org/core Editorial Assistant: Norman Johnson (Pennsylvania State University, USA) Downloaded from Political Analysis www.pan.oxfordjournals.org . Volume 16 Number 3 Summer 2008 Contents Pass the Pork: Measuring Legislator Shares in Congress 235 Benjamin E. Lauderdale https://www.cambridge.org/core/terms Strategic Interaction and Interstate Crises: A Bayesian Quantal Response Estimator for Incomplete Information Games 250 Justin Esarey, Bumba Mukherjee, and Will H. Moore Modeling Committee Chair Selection in the U.S. House of Representatives 274 Damon M. Cann Model Specification in Instrumental-Variables Regression 290 Thad Dunning Legislative Productivity of the U.S. Congress, 1789–2004 303 J. Tobin Grant and Nathan J. Kelly , subject to the Cambridge Core terms of use, available at Two Sides of the Same Coin? Employing Granger Causality Tests in a Time Series Cross-Section Framework 324 M.V. Hood III, Quentin Kidd, and Irwin L. Morris Wouldn’t It Be Nice . .? The Automatic Unbiasedness of OLS (and GLS) 345 24 Sep 2021 at 11:46:31 Robert C. Luskin , on 170.106.202.226 . 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