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ロバスト・ラッシュモデル×ロバスト信頼性解析×
分野心理測定学実験計画法
系統Latent structureProcess / pipeline
提唱年19821980s–1990s (integration formalized in engineering literature)
提唱者Mislevy & Bock (robust ability estimation); broader robust IRT formalized through 1980s–2000sSynthesized from Taguchi robust design and classical reliability theory (Kececioglu, Taguchi)
種類Robust item calibration modelQuantitative reliability engineering method
原典Strobl, C., Wickelmaier, F., & Zeileis, A. (2011). Accounting for individual differences in Bradley-Terry models by means of recursive partitioning. Journal of Educational and Behavioral Statistics, 36(2), 135–153. DOI ↗Kececioglu, D. (1991). Reliability Engineering Handbook (Vol. 1). Prentice Hall. ISBN: 978-0137720774
別名robust IRT Rasch, robust dichotomous Rasch, outlier-resistant Rasch model, robust item calibrationRRA, reliability robustness analysis, uncertainty-aware reliability analysis, robust probabilistic reliability
関連54
概要The robust Rasch model applies the standard one-parameter logistic Rasch framework with estimation procedures designed to limit the influence of outlying item responses, aberrant respondents, or mild model violations, producing stable item and person parameter estimates that are less sensitive to data contamination than ordinary maximum likelihood or conditional maximum likelihood Rasch estimation.Robust reliability analysis is an engineering method that combines classical reliability estimation with robustness principles to quantify and improve system dependability in the presence of parameter uncertainty and variability. Rather than assuming fixed input values, it propagates distributions of noise factors through a reliability model to produce probability-of-failure estimates that remain valid across a range of operating conditions and manufacturing tolerances.
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ScholarGate手法を比較: Robust Rasch Model · Robust Reliability Analysis. 2026-06-15に以下より取得 https://scholargate.app/ja/compare