2020
DOI: 10.21203/rs.3.rs-27762/v1
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Kernel principal components based cascade forest towards disease identification with human microbiota

Abstract: Numerous pieces of clinical evidence have shown that many phenotypic traits of human disease are related to their gut microbiome. Through supervised classification, it is feasible to determine the human disease states by revealing the intestinal microbiota compositional information. However, the abundance matrix of microbiome data is so sparse, an interpretable deep model is crucial to further represent and mine the data for expansion, such as the deep forest. What's more, overfitting can still exist in the or… Show more

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