Description

Book Synopsis
The general theme of this book is to present innovative psychometric modeling and methods. In particular, this book includes research and successful examples of modeling techniques for new data sources from digital assessments, such as eye-tracking data, hint uses, and process data from game-based assessments. In addition, innovative psychometric modeling approaches, such as graphical models, item tree models, network analysis, and cognitive diagnostic models, are included. Chapters 1, 2, 4 and 6 are about psychometric models and methods for learning analytics. The first two chapters focus on advanced cognitive diagnostic models for tracking learning and the improvement of attribute classification accuracy. Chapter 4 demonstrates the use of network analysis for learning analytics. Chapter 6 introduces the conjunctive root causes model for the understanding of prerequisite skills in learning. Chapters 3, 5, 8, 9 are about innovative psychometric techniques to model process data. Specifically, Chapters 3 and 5 illustrate the usage of generalized linear mixed effect models and item tree models to analyze eye-tracking data. Chapter 8 discusses the modeling approach of hint uses and response accuracy in learning environment. Chapter 9 demonstrates the identification of observable outcomes in the game-based assessments. Chapters 7 and 10 introduce innovative latent variable modeling approaches, including the graphical and generalized linear model approach and the dynamic modeling approach. In summary, the book includes theoretical, methodological, and applied research and practices that serve as the foundation for future development. These chapters provide illustrations of efforts to model and analyze multiple data sources from digital assessments. When computer-based assessments are emerging and evolving, it is important that researchers can expand and improve the methods for modeling and analyzing new data sources. This book provides a useful resource to researchers who are interested in the development of psychometric methods to solve issues in this digital assessment age.

Table of Contents
  • Advances in Psychometric Methods for Uncovering Latent Structure and Cognitive Processes
  • Improving Attribute Classification Accuracy in High Dimensional Data: A Four-Step Latent Regression Approach
  • A Dynamic Generalized Mixed Effect Model for Intensive Binary Temporal-Spatio Data From an Eye-Tracking Technique
  • Application of Network Analysis in Understanding Collaborative Problem Solving Processes and Skills
  • IRTree Modeling of Cognitive Processes Based on Outcome and Intermediate Data
  • Prerequisite Structure Finding Using the Conjunctive Root Causes Model
  • A Graphical and Generalized Linear Model Approach to Latent Variable Modeling
  • Modeling Hint Requests, Response Times, and Response Accuracy in Adaptive Learning Systems
  • Identifying Observable Outcomes in Game-Based Assessments
  • A Regime-Switching (RS) Framework for Formulating Multi-Phase Linear and Nonlinear Growth Curve Models
  • About the Editors.

Innovative Psychometric Modeling and Methods

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    Order before 4pm tomorrow for delivery by Mon 22 Jun 2026.

    A Hardback by Hong Jiao, Robert W. Lissitz


      View other formats and editions of Innovative Psychometric Modeling and Methods by Hong Jiao

      Publisher: Information Age Publishing
      Publication Date: 30/10/2020
      ISBN13: 9781648022234, 978-1648022234
      ISBN10: 1648022235

      Description

      Book Synopsis
      The general theme of this book is to present innovative psychometric modeling and methods. In particular, this book includes research and successful examples of modeling techniques for new data sources from digital assessments, such as eye-tracking data, hint uses, and process data from game-based assessments. In addition, innovative psychometric modeling approaches, such as graphical models, item tree models, network analysis, and cognitive diagnostic models, are included. Chapters 1, 2, 4 and 6 are about psychometric models and methods for learning analytics. The first two chapters focus on advanced cognitive diagnostic models for tracking learning and the improvement of attribute classification accuracy. Chapter 4 demonstrates the use of network analysis for learning analytics. Chapter 6 introduces the conjunctive root causes model for the understanding of prerequisite skills in learning. Chapters 3, 5, 8, 9 are about innovative psychometric techniques to model process data. Specifically, Chapters 3 and 5 illustrate the usage of generalized linear mixed effect models and item tree models to analyze eye-tracking data. Chapter 8 discusses the modeling approach of hint uses and response accuracy in learning environment. Chapter 9 demonstrates the identification of observable outcomes in the game-based assessments. Chapters 7 and 10 introduce innovative latent variable modeling approaches, including the graphical and generalized linear model approach and the dynamic modeling approach. In summary, the book includes theoretical, methodological, and applied research and practices that serve as the foundation for future development. These chapters provide illustrations of efforts to model and analyze multiple data sources from digital assessments. When computer-based assessments are emerging and evolving, it is important that researchers can expand and improve the methods for modeling and analyzing new data sources. This book provides a useful resource to researchers who are interested in the development of psychometric methods to solve issues in this digital assessment age.

      Table of Contents
      • Advances in Psychometric Methods for Uncovering Latent Structure and Cognitive Processes
      • Improving Attribute Classification Accuracy in High Dimensional Data: A Four-Step Latent Regression Approach
      • A Dynamic Generalized Mixed Effect Model for Intensive Binary Temporal-Spatio Data From an Eye-Tracking Technique
      • Application of Network Analysis in Understanding Collaborative Problem Solving Processes and Skills
      • IRTree Modeling of Cognitive Processes Based on Outcome and Intermediate Data
      • Prerequisite Structure Finding Using the Conjunctive Root Causes Model
      • A Graphical and Generalized Linear Model Approach to Latent Variable Modeling
      • Modeling Hint Requests, Response Times, and Response Accuracy in Adaptive Learning Systems
      • Identifying Observable Outcomes in Game-Based Assessments
      • A Regime-Switching (RS) Framework for Formulating Multi-Phase Linear and Nonlinear Growth Curve Models
      • About the Editors.

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