Buch, Englisch, 656 Seiten, Format (B × H): 160 mm x 241 mm, Gewicht: 1162 g
Reihe: Methodology of Educational Measurement and Assessment
Models and Model Extensions, Applications, Software Packages
Buch, Englisch, 656 Seiten, Format (B × H): 160 mm x 241 mm, Gewicht: 1162 g
Reihe: Methodology of Educational Measurement and Assessment
ISBN: 978-3-030-05583-7
Verlag: Springer International Publishing
This handbook provides an overview of major developments around diagnostic classification models (DCMs) with regard to modeling, estimation, model checking, scoring, and applications. It brings together not only the current state of the art, but also the theoretical background and models developed for diagnostic classification. The handbook also offers applications and special topics and practical guidelines how to plan and conduct research studies with the help of DCMs.
Commonly used models in educational measurement and psychometrics typically assume a single latent trait or at best a small number of latent variables that are aimed at describing individual differences in observed behavior. While this allows simple rankings of test takers along one or a few dimensions, it does not provide a detailed picture of strengths and weaknesses when assessing complex cognitive skills.
DCMs, on the other hand, allow the evaluation of test taker performance relative to a potentially large number of skill domains. Most diagnostic models provide a binary mastery/non-mastery classification for each of the assumed test taker attributes representing these skill domains. Attribute profiles can be used for formative decisions as well as for summative purposes, for example in a multiple cut-off procedure that requires mastery on at least a certain subset of skills.
The number of DCMs discussed in the literature and applied to a variety of assessment data has been increasing over the past decades, and their appeal to researchers and practitioners alike continues to grow. These models have been used in English language assessment, international large scale assessments, and for feedback for practice exams in preparation of college admission testing, just to name a few.
Nowadays, technology-based assessments provide increasingly rich data on a multitude of skills and allow collection of data with respect to multiple types of behaviors. Diagnostic models can be understood as an ideal match for these types of data collections to provide more in-depth information about test taker skills and behavioral tendencies.
Zielgruppe
Research
Autoren/Hrsg.
Fachgebiete
- Mathematik | Informatik Mathematik Stochastik Mathematische Statistik
- Sozialwissenschaften Psychologie Allgemeine Psychologie Differentielle Psychologie, Persönlichkeitspsychologie Psychologische Diagnostik, Testpsychologie
- Sozialwissenschaften Psychologie Allgemeine Psychologie Kognitionspsychologie
- Sozialwissenschaften Pädagogik Lehrerausbildung, Unterricht & Didaktik Schulpädagogik
Weitere Infos & Material
1. Introduction: From Latent Class Analysis to DINA and Beyond; Matthias von Davier and Young-Sun Lee.- PART 1: Approaches to Cognitive Diagnosis.- 2. Nonparametric Item Response Theory and Mokken Scale Analysis, with Relations to Latent Class Models and Cognitive Diagnostic Models; Andries van der Ark, Gina Rossi, and Klaas Sijtsma.- 3. The Reparameterized Unified Model System: A Diagnostic Assessment Modeling Approach; William F. Stout, Robert Henson, Lou DiBello, and Benjamin Shear.- 4. Bayesian Networks; Russell Almond and Diego Zapata.- 5. Nonparametric Classification Models; Chia-Yi Chiu and Hans-Friedrich Kohn.- 6. General Diagnostic Model (GDM); Matthias von Davier.- 7. Generalized Deterministic Inputs, Noisy “and” Gate Model (G-DINA); Jimmy de la Torre and Nathan Minchen.- 8. Loglinear Cognitive Diagnostic Model (LCDM); Robert Henson and Jonathan Templin.- 9. Diagnostic Modeling of Skill Hierarchies and Cognitive Process with MLTM-D; Susan Embretson.- 10. Explanatory Diagnostic Models; Yoon Soo Park and Young-Sun Lee.- 11. Insights from Reparametrized DINA and Beyond; Lawrence T. DeCarlo.- PART 2: Special Topics.- 12. Q Matrix Learning via Latent Variable Selection and Identifiability; Jingchen Liu and Hyeon-Ah Kang.- 13. Global Model and Item-level Fit Indices; Zhaungzhuang Han and Matthew Johnson.- 14. Exploratory Data Analysis and Cognitive Diagnostic Model; Yunxiao Chen and Xiaoou Li.- 15. CDM-CAT; Xiaofeng Yu, Ying Cheng, and Hua Hua Chang.- 16. Identifiability and Cognitive Diagnostic Model; Gongjun Xu.- 17. Classification Consistency and Reliability; Sandip Sinharay and Matthew Johnson.- 18. Differential Item Functioning in CDM; Xuelan Qiu, Xiaomin Li, and Wen-Chung Wang.- 19. Parameter Invariance and Skill Attribute Continuity in DCMs: Bifactor MIRT as an Appealing and Related Alternative; Daniel Bolt.- PART 3: Applications.- 20. Application of CDMs to Process Data Analysis; Hong Jiao, Dandan Liao, and Peida Zhan.- 21. Application of CDMs to Learning Systems; Benjamin Deonovic, Pravin Chopade, Michael Yudelson, Jimmy de la Torre, Alina von Davier.- 22. CDMs in Vocational Education; Stephan Abele and Matthias von Davier.- 23. Analyzing Large Scale Assessment Data with Diagnostic Models ; Xueli Xu and Matthias von Davier.- 24. Reduced Reparameterized Unified Model Applied to Learning Spatial Reasoning Skills; Susu Zhang, Jeff Douglas, Shiyu Wang, and Steve Culpepper.- 25. How to Conduct a Study with Diagnostic Models ; Young-Sun Lee and Diego Luna Bazaldua.- PART 4: Software, Data, and Tools.- 26. The R package CDM for Diagnostic Modeling; Alexander Robitzsch and Ann Cathrice George.- 27. Diagnostic Classification Modeling with flexMIRT; Li Cai and Carrie Houts.- 28. Using Mplus to Estimate the Log-Linear Cognitive Diagnosis Model; Meghan Sullivan, Jesse Pace, and Jonathan Templin.- 29. The GDINA R-package; Wenchao Ma.- 30. GDM software mdltm including Parallel EM algorithm; Lale Khorramdel, Hyo Jeong Shin, and Matthias von Davier.- 31. Estimating CDMs using MCMC; Xiang Liu and Matthew Johnson.




