Prediction of Protein Function Using Learning Classifier Systems
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چکیده
There are several problems that have been studied by Bioinformatics and one, which stands out, is the prediction of the proteins functions. This paper shows a novel solution for hierarchical classification problems based on Learning Classifier Systems. The algorithm proposed HLCS-Flat was designed to work with the protein functions prediction in structured ontologies in the form of a directed acyclic graph and provides positives results when compared to the wellknown rule-based classification method RIPPER. This paper presents the concepts of hierarchical classification and classifier systems, and also the HLCS-Flat model and its computational results.
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تاریخ انتشار 2011