PUBLICATION DATE

2004-03-01

TITLE

Support vector machine classification on the web.

ISSUE

4

VOLUME

20

ISSN (print)

N/A

ISSN (electronic)

N/A

ABSTRACT

The support vector machine (SVM) learning algorithm has been widely applied in bioinformatics. We have developed a simple web interface to our implementation of the SVM algorithm, called Gist. This interface allows novice or occasional users to apply a sophisticated machine learning algorithm easily to their data. More advanced users can download the software and source code for local installation. The availability of these tools will permit more widespread application of this powerful learning algorithm in bioinformatics.

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JOURNAL BRAND

N/A (note: articles not published by Springer Nature have limited metadata)


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  • National Biomedical Computation Resource
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    15 TRIPLES      15 PREDICATES      16 URIs      11 LITERALS

    Subject Predicate Object
    1 articles:1b8085e90eef221932f55e25cde09d44 sg:abstract The support vector machine (SVM) learning algorithm has been widely applied in bioinformatics. We have developed a simple web interface to our implementation of the SVM algorithm, called Gist. This interface allows novice or occasional users to apply a sophisticated machine learning algorithm easily to their data. More advanced users can download the software and source code for local installation. The availability of these tools will permit more widespread application of this powerful learning algorithm in bioinformatics.
    2 sg:doi 10.1093/bioinformatics/btg461
    3 sg:doiLink http://dx.doi.org/10.1093/bioinformatics/btg461
    4 sg:isFundedPublicationOf grants:7c87c7190de72247c0510f60a71a6dbe
    5 sg:issue 4
    6 sg:language English
    7 sg:license http://scigraph.springernature.com/explorer/license/
    8 sg:publicationDate 2004-03-01
    9 sg:publicationYear 2004
    10 sg:publicationYearMonth 2004-03
    11 sg:scigraphId 1b8085e90eef221932f55e25cde09d44
    12 sg:title Support vector machine classification on the web.
    13 sg:volume 20
    14 rdf:type sg:Article
    15 rdfs:label Article: Support vector machine classification on the web.
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