2020
DOI: 10.1186/s12859-020-3486-x
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High dimensional model representation of log-likelihood ratio: binary classification with expression data

Abstract: Background: Binary classification rules based on a small-sample of high-dimensional data (for instance, gene expression data) are ubiquitous in modern bioinformatics. Constructing such classifiers is challenging due to (a) the complex nature of underlying biological traits, such as gene interactions, and (b) the need for highly interpretable glass-box models. We use the theory of high dimensional model representation (HDMR) to build interpretable low dimensional approximations of the log-likelihood ratio accou… Show more

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Cited by 1 publication
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“…[6,7] The amount of hand-crafted features and supervision required for these models make it difficult for them to effectively scale-up as the biomedical databases do during pandemic crises. [22] 1.2 Semantic Indexing in Pandemic…”
Section: Biomedical Semantic Indexingmentioning
confidence: 99%
“…[6,7] The amount of hand-crafted features and supervision required for these models make it difficult for them to effectively scale-up as the biomedical databases do during pandemic crises. [22] 1.2 Semantic Indexing in Pandemic…”
Section: Biomedical Semantic Indexingmentioning
confidence: 99%