Corrupt Research: The Case for Reconceptualizing Empirical Management and Social Science / Edition 1

Corrupt Research: The Case for Reconceptualizing Empirical Management and Social Science / Edition 1

by Raymond Hubbard
ISBN-10:
1506305350
ISBN-13:
9781506305356
Pub. Date:
08/04/2015
Publisher:
SAGE Publications
ISBN-10:
1506305350
ISBN-13:
9781506305356
Pub. Date:
08/04/2015
Publisher:
SAGE Publications
Corrupt Research: The Case for Reconceptualizing Empirical Management and Social Science / Edition 1

Corrupt Research: The Case for Reconceptualizing Empirical Management and Social Science / Edition 1

by Raymond Hubbard
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Overview

Addressing the immensely important topic of research credibility, Raymond Hubbard’s groundbreaking Corrupt Research proposes that we must treat such information with a healthy dose of skepticism. This book argues that the dominant model of knowledge procurement subscribed to in these areas—the significant difference paradigm—is philosophically suspect, methodologically impaired, and statistically broken. Hubbard introduces a more accurate, alternative framework—the significant sameness paradigm—for developing scientific knowledge. The majority of the book comprises a head-to-head comparison of the “significant difference” versus “significant sameness” conceptions of science across philosophical, methodological, and statistical perspectives.


Product Details

ISBN-13: 9781506305356
Publisher: SAGE Publications
Publication date: 08/04/2015
Edition description: New Edition
Pages: 360
Product dimensions: 5.90(w) x 9.00(h) x 0.80(d)

About the Author

Raymond Hubbard is Professor Emeritus of Marketing at Drake University, Des Moines, Iowa, USA. He holds a B.Sc. (Econ) Hons degree from the University of London, England; an M.Sc. in Geography from the University of the West Indies, Kingston, Jamaica; and an M.A. in Economics and a Ph.D. in Geography from the University of Nebraska, Lincoln. He taught previously at SUNY Fredonia, New York; and held visiting positions at the University of Washington, Seattle, and at the University of Auckland, New Zealand. His research interests include applied methodology, and the sociology and history of knowledge development in the management and social sciences. He has published numerous articles on these topics in journals in these fields. He is a lifelong supporter of Sunderland A.F.C. and a Cornhusker fan since the early 1970s.

Table of Contents

1. Introduction
2. Philosophical Orientation - Significant Difference
Introduction
Conception of Knowledge
Model of Science - Hypothetico-Deductivism
The Role of "Negative" (p>.05) Results
Conclusions
Appendix: An Empirical Regularity Not to be Proud Of
3. Philosophical Orientation - Significant Sameness
Introduction
Conception of Knowledge
Model of Science - Critical Realism
The Role of "Negative" (P>.05) Results
Statistical Power of "Negative" (P>.05) Results
Conclusions
4. The Importance of Replication Research - Significant Sameness
Introduction
A Succinct Overview of Replication's Role
A Typology of Replications
Replication Research and the Acquisition of Knowledge
The Role of "Internal" Replications
Conclusions
Appendix: The Use of Student Samples in the Management and Social Sciences
5. The Importance of Replication Research - Significant Difference
Introduction
The Publication Incidence of Replication Research in the Managerial and Social Sciences
The Outcomes of Replication Research
The Timeliness of Replication Research
Why the Lack of Replication Research?
The Publication Frequency of Critical Commentary
Conclusions
6. Conception of Generalization/External Validity
Introduction
Significant Difference
Significant Sameness
Conclusions
Appendix: Fisher's Views on Probability and Random Sampling
7. Contrasts Over Statistical Issues
Introduction
Model Uncertainty
Nature of Predictions Made
The Role of P-Values
The Role of Effect Sizes and Confidence Intervals
Conclusions
8. Whither the Academy?
Introduction
Obstacles to the Implementation of the Significant Sameness Paradigm
Cultivating a Significant Sameness Tradition
Retrospective: Empirical Regularities and the Emergence of Nineteenth Century Social Statistics and Social Science
Conclusions
9. Epilogue
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