Bültmann & Gerriets
Handbook of Quantitative Methods for Detecting Cheating on Tests
von Gregory J. Cizek, James A. Wollack
Verlag: Taylor & Francis
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Kopierschutz: Adobe DRM


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ISBN: 978-1-317-58809-2
Erschienen am 26.10.2016
Sprache: Englisch
Umfang: 444 Seiten

Preis: 143,99 €

Klappentext
Biografische Anmerkung
Inhaltsverzeichnis

The Handbook of Quantitative Methods for Detecting Cheating on Tests is a comprehensive book that describes the variety of ways people cheat and the quantitative methods that have been developed to detect and combat them.



Gregory J. Cizek is the Guy B. Phillips Distinguished Professor of Educational Measurement and Evaluation in the School of Education at the University of North Carolina, Chapel Hill, USA.

James A. Wollack is Professor of Quantitative Methods in the Educational Psychology Department and Director of Testing and Evaluation Services at the University of Wisconsin, Madison, USA.



Editors' Introduction

SECTION I - INTRODUCTION

Chapter 1 - Exploring Cheating on Tests: The Context, the Concern, and the Challenges

Gregory J. Cizek and James A. Wollack

SECTION II - METHODOLOGIES FOR IDENTIFYING CHEATING ON TESTS

Section IIa - Detecting Similarity, Answer Copying, and Aberrance

Chapter 2 - Similarity, Answer Copying, and Aberrance: Understanding the Status Quo

Cengiz Zopluoglu

Chapter 3 - Detecting Potential Collusion Among Individual Examinees Using Similarity Analysis

Dennis D. Maynes

Chapter 4 - Identifying and Investigating Aberrant Responses Using Psychometrics-Based and Machine Learning-Based Approaches

Doyoung Kim, Ada Woo, and Phil Dickison

Section IIb - Detecting Preknowledge and Item Compromise

Chapter 5 - Detecting Preknowledge and Item Compromise: Understanding the Status Quo

Carol A. Eckerly

Chapter 6 - Detection of Test Collusion Using Cluster Analysis

James A. Wollack and Dennis D. Maynes

Chapter 7 - Detecting Candidate Preknowledge and Compromised Content Using Differential Person and Item Functioning

Lisa S. O'Leary and Russell W. Smith

Chapter 8 - Identification of Item Preknowledge by the Methods of Information Theory and Combinatorial Optimization

Dmitry Belov

Chapter 9 - Using Response Time Data to Detect Compromised Items and/or People

Keith A. Boughton, Jessalyn Smith, and Hao Ren

Section IIc - Detecting Unusual Gain Scores and Test Tampering

Chapter 10 - Detecting Erasures and Unusual Gain Scores: Understanding the Status Quo

Scott Bishop and Karla Egan

Chapter 11 - Detecting Test Tampering at the Group Level

James A. Wollack and Carol A. Eckerly

Chapter 12 - A Bayesian Hierarchical Model for Detecting Aberrant Growth at the Group Level

William P. Skorupski, Joe Fitzpatrick, and Karla Egan

Chapter 13 - Using Nonlinear Regression to Identify Unusual Performance Level Classification Rates

J. Michael Clark, William P. Skorupski, and Stephen Murphy

Chapter 14 - Detecting Unexpected Changes in Pass Rates: A Comparison of Two Statistical Approaches

Matthew Gaertner and Yuanyuan (Malena) McBride

SECTION III - THEORY, PRACTICE, AND THE FUTURE OF QUANTITATIVE DETECTION METHODS

Chapter 15 - Security Vulnerabilities Facing Next Generation Accountability Testing

Joseph A. Martineau, Daniel Jurich, Jeffrey B. Hauger, and Kristen Huff

Chapter 16 - Establishing Baseline Data for Incidents of Misconduct in the NextGen Assessment Environment

Deborah J. Harris and Chi-Yu Huang

Chapter 17 - Visual Displays of Test Fraud Data

Brett P. Foley

Chapter 18 - The Case for Bayesian Methods When Investigating Test Fraud

William P. Skorupski and Howard Wainer

Chapter 19 - When Numbers Are Not Enough: Collection and Use of Collateral Evidence to Assess the Ethics and Professionalism of Examinees Suspected of Test Fraud

Marc J. Weinstein

SECTION IV - CONCLUSIONS

Chapter 20 - What Have We Learned?

Lorin Mueller, Yu Zhang, and Steve Ferrara

Chapter 21 - The Future of Quantitative Methods for Detecting Cheating: Conclusions, Cautions, and Recommendations

James A. Wollack and Gregory J. Cizek


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