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Modeling heterogeneity of the level-1 error covariance matrix in multilevel models for single-case data

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PsychArchives2022-04-14 更新2026-04-25 收录
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https://hdl.handle.net/20.500.12034/5691
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Previous research applying multilevel models to single-case data has made a critical assumption that the level-1 error covariance matrix is constant across all participants. However, the level-1 error covariance matrix may differ across participants and ignoring these differences can have an impact on estimation and inferences. Despite the importance of this issue, the effects of modeling between-case variation in the level-1 error structure had not yet been systematically studied. The purpose of this simulation study was to identify the consequences of modeling and not modeling between-case variation in the level-1 error covariance matrices in single-case studies, using Bayesian estimation. The results of this study found that variance estimation was more sensitive to the method used to model the level-1 error structure than fixed effect estimation, with fixed effects only being impacted in the most extreme heterogeneity conditions. Implications for applied single-case researchers and methodologists are discussed. peerReviewed publishedVersion
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PsychOpen GOLD
创建时间:
2022-04-14
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