Abstract
AbstractIn this work, done in collaboration with Prof. Michelangelo Diligenti (department of Engineering and Mathematics, University of Siena) we present the use of Semantic Based Regularization Kernel based machine learning method to predict protein function. We initially build the protein functions ontology, given an initial list of proteins. We subsequently performed predictions, both at individual and at joint levels of functions, introducing and adding to the learning procedure ad-hoc first order logic rules. Experiments showed promising performances in using logic rules within the learning process for the sake of bioinformatics applications.
Publisher
Cold Spring Harbor Laboratory
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