Generalized Kernel Equating is a comprehensive guide for statisticians, psychometricians, and educational researchers aiming to master test score equating. This book introduces the Generalized Kernel Equating (GKE) framework, providing the necessary tools and methodologies for accurate and fair score comparisons.The book presents test score equating as a statistical problem and covers all commonly used data collection designs. It details the five steps of the GKE framework: presmoothing, estimating score probabilities, continuization, equating transformation, and evaluating the equating transformation. Various presmoothing strategies are explored, including log-linear models, item response theory models, beta4 models, and discrete kernel estimators. The estimation of score probabilities when using IRT models is described and Gaussian kernel continuization is extended to other kernels such as uniform, logistic, epanechnikov and adaptive kernels. Several bandwidth selection methods are described. The kernel equating transformation and variants of it are defined, and both equating-specific and statistical measures for evaluating equating transformations are included. Real data examples, guiding readers through the GKE steps with detailed R code and explanations are provided. Readers are equipped with an advanced knowledge and practical skills for implementing test score equating methods.
Alina A. von Davier & Jorge Gonzalez
Generalized Kernel Equating with Applications in R [PDF ebook]
Generalized Kernel Equating with Applications in R [PDF ebook]
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Ngôn ngữ Anh ● định dạng PDF ● Trang 272 ● ISBN 9781315283760 ● Nhà xuất bản CRC Press ● Được phát hành 2024 ● Có thể tải xuống 3 lần ● Tiền tệ EUR ● TÔI 9969723 ● Sao chép bảo vệ Adobe DRM
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