Statistics and Causality: Methods for Applied Empirical Research

Statistics and Causality: Methods for Applied Empirical Research

Wiedermann, Wolfgang
Von Eye, Alexander

108,06 €(IVA inc.)

A one–of–a–kind guide to identifying and dealing with modern statistical developments in causality Written by a group of well–known experts, Statistics and Causality: Methods for Applied Empirical Research focuses on the most up–to–date developments in statistical methods in respect to causality. Illustrating the properties of statistical methods to theories of causality, the book features a summary of the latest developments in methods for statistical analysis of causality hypotheses. The book is divided into five accessible and independent parts. The first part introduces the foundations of causal structures and discusses issues associated with standard mechanistic and difference–making theories of causality. The second part features novel generalizations of methods designed to make statements concerning the direction of effects. The third part illustrates advances in Granger–causality testing and related issues. The fourth part focuses on counterfactual approaches and propensity score analysis. Finally, the fifth part presents designs for causal inference with an overview of the research designs commonly used in epidemiology. Statistics and Causality: Methods for Applied Empirical Research also includes: New statistical methodologies and approaches to causal analysis in the context of the continuing development of philosophical theories End–of–chapter bibliographies that provide references for further discussions and additional research topics Discussions on the use and applicability of software when appropriate Statistics and Causality: Methods for Applied Empirical Research is an ideal reference for practicing statisticians, applied mathematicians, psychologists, sociologists, logicians, medical professionals, epidemiologists, and educators who want to learn more about new methodologies in causal analysis. The book is also an excellent textbook for graduate–level courses in causality and qualitative logic. Wolfgang Wiedermann, PhD, is Assistant Professor in the Department of Educational, School, and Counseling Psychology at the University of Missouri, Columbia. His research interests include the development of methods for direction dependence analysis and causal inference, the development and evaluation of methods for person–oriented research, and methods for intensive longitudinal data. Alexander von Eye, PhD, is Professor Emeritus of Psychology at Michigan State University. His research interests include statistical methods, categorical data analysis, and human development. Dr. von Eye is Section Editor for the Encyclopedia of Statistics in Behavioral Science and is the coauthor of Log–Linear Modeling: Concepts, Interpretation, and Application, both published by Wiley. INDICE: List of Contributors ix .Preface xiii .Part I Base of Causality 1 .1 Causation and the Aims of Inquiry 3 Edward J. Hall .1.1 Introduction 3 .1.2 The aim of an account of causation 4 .1.2.1 The possible utility of a false account 5 .1.2.2 Inquiry s Aim 5 .1.2.3 The role of intuitions 6 .1.3 The good news 7 .1.3.1 The core idea 7 .1.3.2 Taxonomizing conditions 9 .1.3.3 Unpacking dependence 10 .1.3.4 The good news, amplified 12 .1.4 The challenging news 17 .1.4.1 Multiple realizability 17 .1.4.2 Protracted causes 19 .1.4.3 Higher–level taxonomies and normal conditions 25 .1.5 The perplexing news 27 .1.5.1 The centrality of causal process 27 .1.5.2 A speculative proposal 29 .2 Evidence and Epistemic Causality 33 Michael Wilde and Jon Williamson .2.1 Causality and evidence 33 .2.2 The epistemic theory of causality 37 .2.3 The nature of evidence 40 .2.4 Conclusion 42 .Part II Directionality of Effects 45 .3 Statistical Inference for Direction of Dependence in Linear Models 47 Yadolah Dodge and Valentin Rousson .3.1 Introduction 47 .3.2 Choosing the direction of a regression line 48 .3.3 Significance testing for the direction of a regression line 50 .3.4 Lurking variables and causality 57 .3.4.1 Two independent predictors 57 .3.4.2 Confounding variable 58 .3.4.3 Selection of a subpopulation 59 .3.5 Brain and body data revisited 59 .3.6 Conclusions 62 .4 Directionality of Effects in Causal Mediation Analysis 65 Wolfgang Wiedermann and Alexander von Eye .4.1 Introduction 65 .4.2 Elements of causal mediation analysis 68 .4.3 Directionality of effects in mediation models 71 .4.4 Testing directionality using independence properties of competing mediation models 74 .4.4.1 Independence properties of bivariate relations 74 .4.4.2 Independence properties of the multiple variable model 76 .4.4.3 Measuring and testing independence 77 .4.5 Simulating the performance of directionality tests 85 .4.5.1 Results 86 .4.6 Empirical data example: Development of numerical cognition 90 .4.7 Discussion 93 .5 Direction of Effects in Categorical Variables: A Structural Perspective 107 Alexander von Eye and Wolfgang Wiedermann .5.1 Introduction 107 .5.2 Concepts of independence in categorical data analysis 108 .5.3 Direction dependence in bivariate settings: Metric and categorical variables 110 .5.3.1 Simulating the performance of non–hierarchical log–linear models 114 .5.4 Explaining the structure of cross–classifications 116 .5.5 Data example 123 .5.6 Discussion 126 .6 Directional Dependence Analysis Using Skew–Normal Copula–Based Regression 131 Seongyong Kim and Daeyoung Kim .6.1 Introduction 131 .6.2 Copula–based regression 132 .6.2.1 Copula 133 .6.2.2 Copula–based regression 134 .6.3 Directional dependence in the copula–based regression 136 .6.4 Skew–normal copula 137 .6.5 Inference of directional dependence using skew–normal copula–based regression 140 .6.5.1 Estimation of copula–based regression 140 .6.5.2 Detection of directional dependence and computation of the directional dependence measures 145 .6.6 Application 146 .6.7 Conclusion 149 .7 Non–Gaussian Structural Equation Models for Causal Discovery 153 Shohei Shimizu .7.1 Introduction 153 .7.2 Independent component analysis 157 .7.2.1 Model 157 .7.2.2 Identifiability 157 .7.2.3 Estimation 158 .7.3 Basic linear non–gaussian acyclic model 158 .7.3.1 Model 159 .7.3.2 Identifiability 160 .7.3.3 Estimation 162 .7.4 LiNGAM for time series 167 .7.4.1 Model 167 .7.4.2 Identifiability 167 .7.4.3 Estimation 168 .7.5 LiNGAM with latent common causes 169 .7.5.1 Model 169 .7.5.2 Identifiability 171 .7.5.3 Estimation 173 .7.6 Conclusions and future directions 177 .8 Nonlinear Functional Causal Models for Distinguishing Cause from Effect 185 Kun Zhang and Aapo Hyvärinen .8.1 Introduction 185 .8.2 Nonlinear additive noise model 187 .8.2.1 Definition of model 187 .8.2.2 Likelihood ratio for nonlinear additive models 189 .8.2.3 Information–theoretic interpretation 190 .8.2.4 Likelihood ratio and independence–based methods 191 .8.3 Post–nonlinear causal model 192 .8.3.1 The model 192 .8.3.2 Identifiability of causal direction 193 .8.3.3 Determination of causal direction based on the PNL causal model 194 .8.4 On the relationships between different principles for model estimation 195 .8.5 Remark on general nonlinear causal models 197 .8.6 Some empirical results 198 .8.7 Conclusion and discussions 198 .Part III Granger Causality and Longitudinal Data Modeling 203 .9 Alternative Forms of Granger Causality, Heterogeneity and Non–Stationarity 205 Peter C.M. Molenaar and Lawrence L.Lo .9.1 Introduction 205 .9.2 Some initial remarks on the logic of Granger causality testing 206 .9.3 Preliminary introduction to time series analysis 207 .9.4 Overview of Granger causality testing in the time domain 210 .9.5 Granger causality testing in the frequency domain 212 .9.5.1 Two equivalent representations of a VAR(a) 212 .9.5.2 Partial directed coherence (PDC) as a frequency domain index of Granger causality 213 .9.5.3 Some preliminary comments 214 .9.5.4 Application to simulated data 215 .9.6 A new data–driven solution to Granger causality testing 216 .9.6.1 Fitting a uSEM 217 .9.6.2 Extending the fit of a uSEM 217 .9.6.3 Application of the hybrid VAR fit to simulated data 218 .9.7 Extensions to non–stationary series and heterogeneous replications 220 .9.7.1 Heterogeneous replications 220 .9.7.2 Non–stationary series 222 .9.8 Discussion and conclusion 224 .10 Granger meets Rasch: Investigating Granger Causation with Multidimensional Longitudinal Item Response Models 231 .Ingrid Koller, Claus H. Carstensen, Wolfgang Wiedermann, and Alexander von Eye .10.1 Introduction 231 .10.2 Granger Causation 232 .10.3 The Rasch Model 234 .10.4 Longitudinal item response theory models 235 .10.5 Data example: Scientific literacy in preschool children 240 .10.6 Discussion 242 .11 Granger Causality for Ill–Posed Problems: Ideas, Methods, and Application in Life Sciences 249 Kate ina Hlavá ková–Schindler, Valeriya Naumova, and Sergiy Pereverzyev Jr. .11.1 Introduction 249 .11.1.1 Causality problems in life sciences 249 .11.1.2 Outline of the chapter 250 .11.1.3 Notation 251 .11.2 Granger causality and multivariate Granger causality 251 .11.2.1 Granger causality 252 .11.2.2 Multivariate Granger causality 253 .11.3 Gene regulatory networks 254 .11.4 Regularization of ill–posed inverse problems 255 .11.5 Multivariate Granger causality approaches using 1 and 2 penalties 256 .11.6 Applied quality measures 261 .11.7 Novel regularization techniques with a case study of gene regulatory networks reconstruction 263 .11.7.1 Optimal graphical lasso Granger estimator 263 .11.7.2 Thresholding strategy 264 .11.7.3 An automatic realization of the GLG–method 265 .11.7.4 Granger causality with multi–penalty regularization 266 .11.7.5 Case study of gene regulatory network reconstruction 268 .11.8 Conclusion 272 .12 Unmeasured Reciprocal Interactions: Specification and Fit Using Structural Equation Models 277 Phillip K. Wood .12.1 Introduction 278 .12.2 Types of reciprocal relationship models 278 .12.2.1 Cross–lagged panel approaches 279 .12.2.2 Granger causality 280 .12.2.3 Epistemic causality 281 .12.2.4 Reciprocal causality 282 .12.3 Unmeasured reciprocal and auto–causal effects 286 .12.3.1 Bias in standardized regression weight 288 .12.3.2 Auto–causal effects 289 .12.3.3 Instrumental variables 291 .12.4 Longitudinal data settings 293 .12.4.1 Monte Carlo simulation 293 .12.4.2 Real world data examples 300 .12.5 Discussion 304 .Part IV Counterfactual Approaches and Propensity Score Analysis 309 .13 Loglinear Causal Analysis of Cross–Classified Categorical Data 311 Kazuo Yamaguchi .13.1 Introduction 311 .13.2 Propensity score methods and the collapsibility problem for the logit model 313 .13.3 On standardization and the lack of collapsibility of the logit model 316 .13.4 The problem of zero–sample estimates of conditional probabilities and the use of semiparametric models to solve the problem 318 .13.4.1 The problem of zero–sample estimates of conditional probabilities 318 .13.4.2 Method for obtaining adjusted two–way frequency data for the analysis of association between X and Y 319 .13.4.3 Method for obtaining an adjusted three–way frequency table for the analysis of conditional association 320 .13.5 The estimation of standard errors in the analysis of association with adjusted contingency table data 321 .13.6 Illustrative application 323 .13.6.1 Data 323 .13.6.2 Software 323 .13.6.3 Analysis 324 .13.7 Conclusion 326 .14 Design–Based and Model–Based Analysis of Propensity Score Designs 333 Peter M. Steiner .14.1 Introduction 333 .14.2 Causal models and causal estimands 334 .14.3 Design–based and model–based inference with randomized experiments 336 .14.3.1 Design–based formulation 337 .14.3.2 Model–based formulation 338 .14.4 Design–based and model–based inferences with PS designs 339 .14.4.1 Propensity score designs 340 .14.4.2 Design– vs. model–based formulations of PS designs 345 .14.4.3 Other propensity score techniques 346 .14.5 Statistical issues with PS designs in practice 347 .14.5.1 Choice of a specific PS design 348 .14.5.2 Estimation of propensity scores 350 .14.5.3 Estimating and testing the treatment effect 354 .14.6 Discussion 355 .15 Adjustment when Covariates are Fallible 363 Steffi Pohl, Marie–Ann Sengewald, and Rolf Steyer .15.1 Introduction 363 .15.2 Theoretical framework 364 .15.2.1 Definition of causal effects 365 .15.2.2 Identification of causal effects 366 .15.2.3 Adjusting for latent or fallible covariates 367 .15.3 The impact of measurement error in covariates on causal effect estimation 369 .15.3.1 Theoretical impact of one fallible covariate 369 .15.3.2 Investigation of the impact of fallible covariates in simulation studies 370 .15.3.3 Investigation of the impact of fallible covariates in an empirical study 370 .15.4 Approaches accounting for latent covariates 372 .15.4.1 Latent covariates in propensity score methods 373 .15.4.2 Latent covariates in ANCOVA models 374 .15.4.3 Performance of the approaches in an empirical study 375 .15.5 The impact of additional covariates on the biasing effect of a fallible covariate 375 .15.5.1 Investigation of the impact of additional covariates in an empirical study 377 .15.5.2 Investigation of the impact of additional covariates in simulation studies 379 .15.6 Discussion 379 .16 Latent Class Analysis with Causal Inference: The Effect of Adolescent Depression on Young Adult Substance Use Profile 385 Stephanie T. Lanza, Megan S. Schuler, and Bethany C. Bray .16.1 Introduction 385 .16.2 Latent class analysis 386 .16.2.1 LCA with covariates 387 .16.3 Propensity score analysis 389 .16.3.1 Inverse propensity weights (IPWs) 390 .16.4 Empirical demonstration 390 .16.4.1 The causal question: A moderated average causal effect 390 .16.4.2 Participants 391 .16.4.3 Measures 391 .16.4.4 Analytic strategy for LCA with causal inference 394 .16.4.5 Results from empirical demonstration 394 .16.5 Discussion 397 .16.5.1 Limitations 399 .Part V Designs for Causal Inference 407 .17 Can we Establish Causality with Statistical Analyses? The Example of Epidemiology 409 Ulrich Frick and Jürgen Rehm .17.1 Why a chapter on design? 409 .17.2 The epidemiological theory of causality 410 .17.3 Cohort and case–control studies 413 .17.4 Improving control in epidemiological research 416 .17.4.1 Measurement 416 .17.4.2 Mendelian randomization 418 .17.4.3 Surrogate endpoints (experimental) 421 .17.4.4 Other design measures to increase control 422 .17.4.5 Methods of analysis 423 .17.5 Conclusions: Control in epidemiological research can be improved. 426

  • ISBN: 978-1-118-94704-3
  • Editorial: Wiley–Blackwell
  • Encuadernacion: Cartoné
  • Páginas: 472
  • Fecha Publicación: 30/06/2016
  • Nº Volúmenes: 1
  • Idioma: Inglés