Aris Spanos Foundational Issues in Statistical Modeling : Statistical Model Specification and Validation
نویسندگان
چکیده
Statistical model specification and validation raise crucial foundational problems whose pertinent resolution holds the key to learning from data by securing the reliability of frequentist inference. The paper questions the judiciousness of several current practices, including the theory-driven approach, and the Akaike-type model selection procedures, arguing that they often lead to unreliable inferences. This is primarily due to the fact that goodness-of-fit/prediction measures and other substantive and pragmatic criteria are of questionable value when the estimated model is statistically misspecified. Foisting one’s favorite model on the data often yields estimated models which are both statistically and substantively misspecified, but one has no way to delineate between the two sources of error and apportion blame. The paper argues that the error statistical approach can address this Duhemian ambiguity by distinguishing between statistical and substantive premises and viewing empirical modeling in a piecemeal way with a view to delineate the various issues more effectively. It is also argued that Hendry’s general to specific procedures does a much better job in model selection than the theory-driven and the Akaike-type procedures primary because of its error statistical underpinnings.
منابع مشابه
Statistical Model Specification and Validation: Statistical vs. Substantive Information
Statistical model specification and validation raise crucial foundational problems whose pertinent resolution holds the key to learning from data by securing the reliability of frequentist inference. The paper questions the judiciousness of several current practices, including the theory-driven approach, and the Akaike-type model selection procedures, arguing that they often lead to unreliable ...
متن کاملWhere do statistical models come from? Revisiting the problem of specification
R. A. Fisher founded modern statistical inference in 1922 and identified its fundamental problems to be: specification, estimation and distribution. Since then the problem of statistical model specification has received scant attention in the statistics literature. The paper traces the history of statistical model specification, focusing primarily on pioneers like Fisher, Neyman, and more recen...
متن کاملPhilosophy of Econometrics
1. Introduction 2. What philosophical/methodological issues? 3. Philsophy of science and empirical modeling: Logical positivism/empiricism The downfall of logical positivism/empiricism The new experimentalism Learning from error 4. The Error-Statistical perspective: Statistical inference and its philosophical foundations Statistical Induction and its underlying reasoning Severe testing reasonin...
متن کاملMis-Specification Testing in Retrospect and Prospect
The primary objective of this paper is threefold. First, to take a retrospective view of Mis-Specification (M-S) testing, going back to Karl Pearson (1900). Second, to critically discuss several arguments questioning the value and role of M-S testing. Instead, they favor relying on weak, but non-testable probabilistic assumptions, combined with invoking asymptotic results and vague robustness c...
متن کاملProbability Theory and Statistical Inference Econometric Modeling with Observational Data
A catalogue record for this book is available from the British Library Library of Congress Cataloguing in Publication data Spanos, Aris, 1952– Probability Theory and Statistical Inference: econometric modeling with observational data / Aris Spanos p. cm. Includes bibliographical references (p.) and index. Contents Preface page xi Acknowledgments xxiv 1 An introduction to empirical modeling 1 1....
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2011