PUBLICATION DATE

2008

TITLE

Intelligible machine learning with malibu.

ISSUE

N/A

VOLUME

2008

ISSN (print)

N/A

ISSN (electronic)

N/A

ABSTRACT

malibu is an open-source machine learning work-bench developed in C/C++ for high-performance real-world applications, namely bioinformatics and medical informatics. It leverages third-party machine learning implementations for more robust bug-free software. This workbench handles several well-studied supervised machine learning problems including classification, regression, importance-weighted classification and multiple-instance learning. The malibu interface was designed to create reproducible experiments ideally run in a remote and/or command line environment. The software can be found at: http://proteomics.bioengr. uic.edu/malibu/index.html.

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JOURNAL BRAND

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


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    13 TRIPLES      12 PREDICATES      14 URIs      8 LITERALS

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    1 articles:e53bfeda8b2d6bb05d4d273c455c86d6 sg:abstract malibu is an open-source machine learning work-bench developed in C/C++ for high-performance real-world applications, namely bioinformatics and medical informatics. It leverages third-party machine learning implementations for more robust bug-free software. This workbench handles several well-studied supervised machine learning problems including classification, regression, importance-weighted classification and multiple-instance learning. The malibu interface was designed to create reproducible experiments ideally run in a remote and/or command line environment. The software can be found at: http://proteomics.bioengr. uic.edu/malibu/index.html.
    2 sg:doi 10.1109/iembs.2008.4650035
    3 sg:doiLink http://dx.doi.org/10.1109/iembs.2008.4650035
    4 sg:isFundedPublicationOf grants:0a4d6b72aef9b6c42e1541e133e1486e
    5 grants:3b5d83dc08cd2aeb8e1a63d2a1bd94f5
    6 sg:language English
    7 sg:license http://scigraph.springernature.com/explorer/license/
    8 sg:publicationYear 2008
    9 sg:scigraphId e53bfeda8b2d6bb05d4d273c455c86d6
    10 sg:title Intelligible machine learning with malibu.
    11 sg:volume 2008
    12 rdf:type sg:Article
    13 rdfs:label Article: Intelligible machine learning with malibu.
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