Extension of mixture-of-experts networks for binary classification of hierarchical data

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摘要

ObjectiveFor many applied problems in the context of medically relevant artificial intelligence, the data collected exhibit a hierarchical or clustered structure. Ignoring the interdependence between hierarchical data can result in misleading classification. In this paper, we extend the mechanism for mixture-of-experts (ME) networks for binary classification of hierarchical data. Another extension is to quantify cluster-specific information on data hierarchy by random effects via the generalized linear mixed-effects model (GLMM).

论文关键词:Mixture-of-experts,Binary classification,Expectation–maximization algorithm,Generalized linear mixed-effects model,Hierarchical data,Supervised learning

论文评审过程:Received 27 January 2007, Revised 30 May 2007, Accepted 2 June 2007, Available online 16 July 2007.

论文官网地址:https://doi.org/10.1016/j.artmed.2007.06.001