Fundamentals of Regression Modeling: SAGE Benchmarks in Social Research Methods
Editat de Salvatore J. Babonesen Limba Engleză Hardback – 25 sep 2013
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Specificații
ISBN-13: 9781446208281
ISBN-10: 1446208281
Pagini: 1496
Dimensiuni: 156 x 234 x 104 mm
Greutate: 2.79 kg
Ediția:Four-Volume Set
Editura: SAGE Publications
Colecția Sage Publications Ltd
Seria SAGE Benchmarks in Social Research Methods
Locul publicării:London, United Kingdom
ISBN-10: 1446208281
Pagini: 1496
Dimensiuni: 156 x 234 x 104 mm
Greutate: 2.79 kg
Ediția:Four-Volume Set
Editura: SAGE Publications
Colecția Sage Publications Ltd
Seria SAGE Benchmarks in Social Research Methods
Locul publicării:London, United Kingdom
Cuprins
VOLUME ONE
PART ONE: THE MEANING OF P-VALUES
The Non-Utility of Significance Tests - Sanford Labovitz
The Significance of Tests of Significance Reconsidered
Mindless Statistics - Gerd Gigerenzer
Confusion over Measures of Evidence (p's) versus Errors (?'s) in Classical Statistical Testing - Raymond Hubbard and M.J. Bayarri
Why We Don't Really Know What Statistical Significance Means - Raymond Hubbard and J. Scott Armstrong
Implications for Educators Statistical Significance
Researchers Should Make Thoughtful Assessments Instead of Null-Hypothesis Significance Tests - Andrea Schwab et al
PART TWO: CONTROL VARIABLES
Explaining Interstate Conflict and War - James Lee Ray
What Should Be Controlled for?
The Phantom Menace - Kevin Clarke
Omitted Variable Bias in Econometric Research
Beyond Baron and Kenny - Andrew Hayes
Statistical Mediation Analysis in the New Millennium
Equivalence of the Mediation, Confounding and Suppression Effect - David Mackinnon, Jennifer Krull and Chondra Lockwood
Statistical Usage in Sociology - Sanford Labovitz
Sacred Cows and Ritual
Stepwise Regression in Social and Psychological Research - Douglas Henderson and Daniel Denison
Return of the Phantom Menace - Kevin Clarke
Stepwise Regression - Michael Lewis-Beck
A Caution
PART THREE: OUTLIERS AND INFLUENTIAL POINTS
Teaching about Influence in Simple Regression - Frederick Lorenz
Regression Diagnostics - Kenneth Bollen and Robert Jackman
An Expository Treatment of Outliers and Influential Cases
A Survey of Outlier Detection Methodologies - Victoria Hodge and Jim Austin
Practitioners' Corner - Catherine Dehon, Marjorie Gassner and Vincenzo Verardi
Some Observations on Measurement and Statistics - Sanford Labovitz
PART FOUR: MULTICOLINEARITY AND VARIANCE INFLATION
Issues in Multiple Regression - Robert Gordon
A Caution Regarding Rules of Thumb for Variance Inflation Factors - Robert O'Brien
What to Do (and Not Do) with Multicolinearity in State Politics Research - Kevin Arceneaux and Gregory Huber
On the Misconception of Multicollinearity in Detection of Moderating Effects - Gwowen Shieh
Multicollinearity Is Not Always Detrimental
Correlated Independent Variables - H.M. Blalock Jr.
The Problem of Multicollinearity
PART FIVE: SAMPLE SELECTION BIASES
Modeling Selection Effects - Thad Dunning and David Freedman
An Introduction to Sample Selection Bias in Sociological Data - Richard Berk
Models for Sample Selection Bias - Christopher Winship and Robert Mare
Sample Selection Bias as a Specification Error - James Heckman
How the Cases You Choose Affect the Answers You Get - Barbara Geddes
Selection Bias in Comparative Politics
When Less Is More - Bernhard Ebbinghaus
Selection Problems in Large-N and Small-N Cross-National Comparisons
PART SIX: IMPUTATION TECHNIQUES
The Treatment of Missing Data - David Howell
A Primer on Maximum Likelihood Algorithms Available for Use with Missing Data - Craig Enders
What to Do about Missing Values in Time-Series Cross-Section Data - James Honaker and Gary King
Multiple Imputation for Missing Data - Paul Allison
A Cautionary Tale
Multiple Imputation for Missing Data - Mark Fichman and Jonathon Cummings
Making the Most of What You Know
Imputation of Missing Item Responses - Mark Huisman
Some Simple Techniques
Analyzing Incomplete Political Science Data - Gary King et al
An Alternative Algorithm for Multiple Imputation
Landermanetal-1997
PART SEVEN: INTERACTION MODELS
Testing for Interaction in Multiple Regression - Paul Allison
Understanding Interaction Models - Thomas Brambor, William Roberts Clark and Matt Golder
Improving Empirical Analyses
Product-Variable Models of Interaction Effects and Causal Mechanisms - Lowell Hargens
Limitations of Centering for Interactive Models - Richard Tate
Decreasing Multicollinearity - Kent Smith and M.S. Sasaki
A Method for Models with Multiplicative Functions
Some Common Myths about Centering Predictor Variables in Moderated Multiple Regression and Polynomial Regression - Dev Dalal and Michael Zickar
PART EIGHT: LONGITUDINAL MODELS
A General Panel Model with Random and Fixed Effects - Kenneth Bollen and Jennie Brand
A Structural Equations Approach
A Lot More to Do - Sven Wilson and Daniel Butler
The Sensitivity of Time-Series Cross-Section Analyses to Simple Alternative Specifications
Panel Models in Sociological Research - Charles Halaby
Theory into Practice
Dynamic Models for Dynamic Theories - Luke Keele and Nathan Kelly
The ins and outs of Lagged Dependent Variables
Using Panel Data to Estimate the Effects of Events - Paul D. Allison
PART NINE: INSTRUMENTAL VARIABLE MODELS
Instrumental Variables and the Search for Identification - Joshua Angrist and Alan Krueger
From Supply and Demand to Natural Experiments
Improving Causal Inference: - Thad Dunning
Strengths and Limitations of Natural Experiments
Instrumental Variable Estimation in Political Science - Allison Sovey and Donald Green
A Readers' Guide
Instrumental Variables in Sociology and the Social Sciences - Kenneth Bollen
Problems with Instrumental Variables Estimation When the Correlation between the Instruments and the Endogenous Explanatory Variable Is Weak - John Bound et al
PART TEN: STRUCTURAL MODELS
Practical Issues in Structural Modeling - P.M. Bentler and Chih-Ping Chou
As Others See Us - D.A. Freedman
A Case Study in Path Analysis: Journal of Education and Behavioral Statistics
Causation Issues in Structual Equation Modeling Research - Heather Bullock et al
Structural Equation Modeling in Practice - James Anderson and David Gerbing
A Review and Recommended Two-Step Approach
Structural Equation Models in the Social and Behavioral Sciences - James Anderson
Model-Building
PART ELEVEN: CAUSALITY
Statistical Models for Causation - David Freedman
Structural Equations and Causal Explanations - Keith A. Markus
Some Challenges for Causal Structural Equation Modeling
The Estimation of Causal Effects from Observational Data - Christopher Winship and Stephen Morgan
Statistical Models for Causation - David Freedman
What Inferential Leverage Do They Provide?
Pearl-2010
PART ONE: THE MEANING OF P-VALUES
The Non-Utility of Significance Tests - Sanford Labovitz
The Significance of Tests of Significance Reconsidered
Mindless Statistics - Gerd Gigerenzer
Confusion over Measures of Evidence (p's) versus Errors (?'s) in Classical Statistical Testing - Raymond Hubbard and M.J. Bayarri
Why We Don't Really Know What Statistical Significance Means - Raymond Hubbard and J. Scott Armstrong
Implications for Educators Statistical Significance
Researchers Should Make Thoughtful Assessments Instead of Null-Hypothesis Significance Tests - Andrea Schwab et al
PART TWO: CONTROL VARIABLES
Explaining Interstate Conflict and War - James Lee Ray
What Should Be Controlled for?
The Phantom Menace - Kevin Clarke
Omitted Variable Bias in Econometric Research
Beyond Baron and Kenny - Andrew Hayes
Statistical Mediation Analysis in the New Millennium
Equivalence of the Mediation, Confounding and Suppression Effect - David Mackinnon, Jennifer Krull and Chondra Lockwood
Statistical Usage in Sociology - Sanford Labovitz
Sacred Cows and Ritual
Stepwise Regression in Social and Psychological Research - Douglas Henderson and Daniel Denison
Return of the Phantom Menace - Kevin Clarke
Stepwise Regression - Michael Lewis-Beck
A Caution
PART THREE: OUTLIERS AND INFLUENTIAL POINTS
Teaching about Influence in Simple Regression - Frederick Lorenz
Regression Diagnostics - Kenneth Bollen and Robert Jackman
An Expository Treatment of Outliers and Influential Cases
A Survey of Outlier Detection Methodologies - Victoria Hodge and Jim Austin
Practitioners' Corner - Catherine Dehon, Marjorie Gassner and Vincenzo Verardi
Some Observations on Measurement and Statistics - Sanford Labovitz
PART FOUR: MULTICOLINEARITY AND VARIANCE INFLATION
Issues in Multiple Regression - Robert Gordon
A Caution Regarding Rules of Thumb for Variance Inflation Factors - Robert O'Brien
What to Do (and Not Do) with Multicolinearity in State Politics Research - Kevin Arceneaux and Gregory Huber
On the Misconception of Multicollinearity in Detection of Moderating Effects - Gwowen Shieh
Multicollinearity Is Not Always Detrimental
Correlated Independent Variables - H.M. Blalock Jr.
The Problem of Multicollinearity
PART FIVE: SAMPLE SELECTION BIASES
Modeling Selection Effects - Thad Dunning and David Freedman
An Introduction to Sample Selection Bias in Sociological Data - Richard Berk
Models for Sample Selection Bias - Christopher Winship and Robert Mare
Sample Selection Bias as a Specification Error - James Heckman
How the Cases You Choose Affect the Answers You Get - Barbara Geddes
Selection Bias in Comparative Politics
When Less Is More - Bernhard Ebbinghaus
Selection Problems in Large-N and Small-N Cross-National Comparisons
PART SIX: IMPUTATION TECHNIQUES
The Treatment of Missing Data - David Howell
A Primer on Maximum Likelihood Algorithms Available for Use with Missing Data - Craig Enders
What to Do about Missing Values in Time-Series Cross-Section Data - James Honaker and Gary King
Multiple Imputation for Missing Data - Paul Allison
A Cautionary Tale
Multiple Imputation for Missing Data - Mark Fichman and Jonathon Cummings
Making the Most of What You Know
Imputation of Missing Item Responses - Mark Huisman
Some Simple Techniques
Analyzing Incomplete Political Science Data - Gary King et al
An Alternative Algorithm for Multiple Imputation
Landermanetal-1997
PART SEVEN: INTERACTION MODELS
Testing for Interaction in Multiple Regression - Paul Allison
Understanding Interaction Models - Thomas Brambor, William Roberts Clark and Matt Golder
Improving Empirical Analyses
Product-Variable Models of Interaction Effects and Causal Mechanisms - Lowell Hargens
Limitations of Centering for Interactive Models - Richard Tate
Decreasing Multicollinearity - Kent Smith and M.S. Sasaki
A Method for Models with Multiplicative Functions
Some Common Myths about Centering Predictor Variables in Moderated Multiple Regression and Polynomial Regression - Dev Dalal and Michael Zickar
PART EIGHT: LONGITUDINAL MODELS
A General Panel Model with Random and Fixed Effects - Kenneth Bollen and Jennie Brand
A Structural Equations Approach
A Lot More to Do - Sven Wilson and Daniel Butler
The Sensitivity of Time-Series Cross-Section Analyses to Simple Alternative Specifications
Panel Models in Sociological Research - Charles Halaby
Theory into Practice
Dynamic Models for Dynamic Theories - Luke Keele and Nathan Kelly
The ins and outs of Lagged Dependent Variables
Using Panel Data to Estimate the Effects of Events - Paul D. Allison
PART NINE: INSTRUMENTAL VARIABLE MODELS
Instrumental Variables and the Search for Identification - Joshua Angrist and Alan Krueger
From Supply and Demand to Natural Experiments
Improving Causal Inference: - Thad Dunning
Strengths and Limitations of Natural Experiments
Instrumental Variable Estimation in Political Science - Allison Sovey and Donald Green
A Readers' Guide
Instrumental Variables in Sociology and the Social Sciences - Kenneth Bollen
Problems with Instrumental Variables Estimation When the Correlation between the Instruments and the Endogenous Explanatory Variable Is Weak - John Bound et al
PART TEN: STRUCTURAL MODELS
Practical Issues in Structural Modeling - P.M. Bentler and Chih-Ping Chou
As Others See Us - D.A. Freedman
A Case Study in Path Analysis: Journal of Education and Behavioral Statistics
Causation Issues in Structual Equation Modeling Research - Heather Bullock et al
Structural Equation Modeling in Practice - James Anderson and David Gerbing
A Review and Recommended Two-Step Approach
Structural Equation Models in the Social and Behavioral Sciences - James Anderson
Model-Building
PART ELEVEN: CAUSALITY
Statistical Models for Causation - David Freedman
Structural Equations and Causal Explanations - Keith A. Markus
Some Challenges for Causal Structural Equation Modeling
The Estimation of Causal Effects from Observational Data - Christopher Winship and Stephen Morgan
Statistical Models for Causation - David Freedman
What Inferential Leverage Do They Provide?
Pearl-2010
Descriere
This new four-volume major work presents a collection of landmark studies on the topic of regression modeling, identifying the most important, fundamental articles out of thousands of relevant contributions.