dc.contributorMartínez Trinidad, José Fco.
dc.contributorCarrasco Ochoa, Carrasco Ochoa
dc.creatorHernández Rodríguez, Selene
dc.date.accessioned2013-04-25T17:23:53Z
dc.date.available2013-04-25T17:23:53Z
dc.date.created2013-04-25T17:23:53Z
dc.date.issued2010-09-30
dc.identifierRevista Computación y Sistemas; Vol. 14 No.1
dc.identifier1405-5546
dc.identifierhttp://www.repositoriodigital.ipn.mx/handle/123456789/15421
dc.description.abstractAbstract. The k nearest neighbor (k-NN) classifier has been extensively used in Pattern Recognition because of its simplicity and its good performance. However, in large datasets applications, the exhaustive k-NN classifier becomes impractical. Therefore, many fast k-NN classifiers have been developed; most of them rely on metric properties (usually the triangle inequality) to reduce the number of prototype comparisons. Hence, the existing fast k-NN classifiers are applicable only when the comparison function is a metric (commonly for numerical data). However, in some sciences such as Medicine, Geology, Sociology, etc., the prototypes are usually described by qualitative and quantitative features (mixed data). In these cases, the comparison function does not necessarily satisfy metric properties. For this reason, it is important to develop fast k most similar neighbor (k-MSN) classifiers for mixed data, which use non metric comparisons functions. In this thesis, four fast k-MSN classifiers, following the most successful approaches, are proposed. The experiments over different datasets show that the proposed classifiers significantly reduce the number of prototype comparisons.
dc.languageen_US
dc.publisherRevista Computación y Sistemas; Vol. 14 No.1
dc.relationRevista Computación y Sistemas;Vol. 14 No.1
dc.subjectKeywords. Nearest neighbor rule, fast nearest neighbor search, mixed data, non-metric comparison functions.
dc.titleFast Most Similar Neighbor (MSN) classifiers for Mixed Data
dc.typeOther


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