JOURNAL ARTICLE

Feature subset selection for splice site prediction

Sven DegroeveBernard De BaetsYves Van de PeerPierre Rouzé

Year: 2002 Journal:   Bioinformatics Vol: 18 (suppl_2)Pages: S75-S83   Publisher: Oxford University Press

Abstract

Abstract Motivation: The large amount of available annotated Arabidopsis thaliana sequences allows the induction of splice site prediction models with supervised learning algorithms (see Haussler (1998) for a review and references). These algorithms need information sources or features from which the models can be computed. For splice site prediction, the features we consider in this study are the presence or absence of certain nucleotides in close proximity to the splice site. Since it is not known how many and which nucleotides are relevant for splice site prediction, the set of features is chosen large enough such that the probability that all relevant information sources are in the set is very high. Using only those features that are relevant for constructing a splice site prediction system might improve the system and might also provide us with useful biological knowledge. Using fewer features will of course also improve the prediction speed of the system. Results: A wrapper-based feature subset selection algorithm using a support vector machine or a naive Bayes prediction method was evaluated against the traditional method for selecting features relevant for splice site prediction. Our results show that this wrapper approach selects features that improve the performance against the use of all features and against the use of the features selected by the traditional method. Availability: The data and additional interactive graphs on the selected feature subsets are available at http://www.psb.rug.ac.be/gps Contact: [email protected]@gengenp.rug.ac.be

Keywords:
splice Computer science Feature selection Naive Bayes classifier Feature (linguistics) Artificial intelligence Machine learning Set (abstract data type) Support vector machine Data mining Bayes' theorem Selection (genetic algorithm) Pattern recognition (psychology) Bayesian probability Biology Gene

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120
Cited By
7.89
FWCI (Field Weighted Citation Impact)
16
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0.97
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Citation History

Topics

Plant Molecular Biology Research
Life Sciences →  Agricultural and Biological Sciences →  Plant Science
Genomics and Chromatin Dynamics
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
RNA Research and Splicing
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
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