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Parametric Bayesian priors and better choice of negative examples improve protein function prediction
Author(s) -
Noah Youngs,
Duncan Penfold-Brown,
Kevin Drew,
Dennis Shasha,
Richard Bonneau
Publication year - 2013
Publication title -
bioinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.599
H-Index - 390
eISSN - 1367-4811
pISSN - 1367-4803
DOI - 10.1093/bioinformatics/btt110
Subject(s) - computer science , heuristics , prior probability , bayesian probability , function (biology) , protein function prediction , machine learning , source code , artificial intelligence , data mining , protein function , algorithm , biology , biochemistry , evolutionary biology , gene , operating system
Computational biologists have demonstrated the utility of using machine learning methods to predict protein function from an integration of multiple genome-wide data types. Yet, even the best performing function prediction algorithms rely on heuristics for important components of the algorithm, such as choosing negative examples (proteins without a given function) or determining key parameters. The improper choice of negative examples, in particular, can hamper the accuracy of protein function prediction.

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