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  xmlns:dcterms="http://purl.org/dc/terms/"><dc:Title>The elements of statistical learning :  data mining, inference, and prediction /  Trevor Hastie, Robert Tibshirani, Jerome Friedman.</dc:Title>
<dc:Creator>Hastie, Trevor.</dc:Creator>
<dc:Creator>Tibshirani, Robert. jt. aut.</dc:Creator>
<dc:Creator>Friedman, Jerome. jt. aut.</dc:Creator>
<dc:Subject>Machine learning.</dc:Subject>
<dc:Subject>Statistics  Methodology.</dc:Subject>
<dc:Subject>006.31 HAE</dc:Subject>
<dc:Description>Includes bibliographical references and index.</dc:Description>
<dc:Publisher>New York :  Springer,</dc:Publisher>
<dc:Date>2009 (2017 printing).</dc:Date>
<dc:Date>2009 (2017 printing).</dc:Date>
<dc:Date>2009</dc:Date>
<dc:Type>Text</dc:Type>
<dc:Format>xxii, 745 p. :</dc:Format>
<dc:Language>eng</dc:Language>
<dc:Relation>Springer series in statiatics.</dc:Relation>

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