Sparse Common and Distinctive Covariates Logistic Regression: classification method for high-dimensional multiblock data
收藏PsychArchives2021-05-14 更新2026-04-25 收录
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https://hdl.handle.net/20.500.12034/4268
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Datasets comprised of large sets of variables from multiple sources concerning the same observation units are becoming more widespread today. Constructing a classification model in the context of such high-dimensional and multi-block datasets involves a multitude of challenges: variable selection, classification of the response variable and identification of processes at play underneath the predictors. These processes are of particular interest in the setting of multi-block data because they can either be associated individually with single data blocks or jointly with multiple blocks. Many methods have addressed the classification problem in high-dimensionality for a single block of data. However, the additional challenge of capturing and distinguishing distinctive and joint processes from multi-block data has not received sufficient attention. To this end, we propose Sparse Common and Distinctive Covariates Logistic Regression (SCD-Cov-logR). The method extends principal covariates regression to multi-block settings and combines with generalized linear modeling framework to allow classification of a categorical response while revealing predictive processes that involve single or multiple data blocks. In a simulation study, SCD-Cov-logR resulted in outperformance compared to related methods commonly used in behavioural sciences. unknown unknown
提供机构:
ZPID (Leibniz Institute for Psychology)
创建时间:
2021-05-14



