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Test Data Engineering = Latent Rank Analysis, Biclustering, and Bayesian Network /
Record Type:
Language materials, printed : Monograph/item
Title/Author:
Test Data Engineering / by Kojiro Shojima.
Reminder of title:
Latent Rank Analysis, Biclustering, and Bayesian Network /
Author:
Shojima, Kojiro.
Description:
XXII, 579 p. 242 illus., 216 illus. in color.online resource. :
Contained By:
Springer Nature eBook
Subject:
Machine Learning. -
Online resource:
https://doi.org/10.1007/978-981-16-9986-3
ISBN:
9789811699863
Test Data Engineering = Latent Rank Analysis, Biclustering, and Bayesian Network /
Shojima, Kojiro.
Test Data Engineering
Latent Rank Analysis, Biclustering, and Bayesian Network /[electronic resource] :by Kojiro Shojima. - 1st ed. 2022. - XXII, 579 p. 242 illus., 216 illus. in color.online resource. - Behaviormetrics: Quantitative Approaches to Human Behavior,132524-4035 ;. - Behaviormetrics: Quantitative Approaches to Human Behavior,3.
Concept of Test Data Engineering -- Test Data and Item Analysis -- Classical Test Theory -- Item Response Theory -- Latent Class Analysis -- Biclustering -- Bayesian Network Model.
This is the first technical book that considers tests as public tools and examines how to engineer and process test data, extract the structure within the data to be visualized, and thereby make test results useful for students, teachers, and the society. The author does not differentiate test data analysis from data engineering and information visualization. This monograph introduces the following methods of engineering or processing test data, including the latest machine learning techniques: classical test theory (CTT), item response theory (IRT), latent class analysis (LCA), latent rank analysis (LRA), biclustering (co-clustering), and Bayesian network model (BNM). CTT and IRT are methods for analyzing test data and evaluating students’ abilities on a continuous scale. LCA and LRA assess examinees by classifying them into nominal and ordinal clusters, respectively, where the adequate number of clusters is estimated from the data. Biclustering classifies examinees into groups (latent clusters) while classifying items into fields (factors). Particularly, the infinite relational model discussed in this book is a biclustering method feasible under the condition that neither the number of groups nor the number of fields is known beforehand. Additionally, the local dependence LRA, local dependence biclustering, and bicluster network model are methods that search and visualize inter-item (or inter-field) network structure using the mechanism of BNM. As this book offers a new perspective on test data analysis methods, it is certain to widen readers’ perspective on test data analysis. .
ISBN: 9789811699863
Standard No.: 10.1007/978-981-16-9986-3doiSubjects--Topical Terms:
1137723
Machine Learning.
LC Class. No.: HA1-4737
Dewey Class. No.: 300.727
Test Data Engineering = Latent Rank Analysis, Biclustering, and Bayesian Network /
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