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      Class conditional nearest neighbor for large margin instance selection.

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          Abstract

          This paper presents a relational framework for studying properties of labeled data points related to proximity and labeling information in order to improve the performance of the 1NN rule. Specifically, the class conditional nearest neighbor (ccnn) relation over pairs of points in a labeled training set is introduced. For a given class label c, this relation associates to each point a its nearest neighbor computed among only those points with class label c (excluded a). A characterization of ccnn in terms of two graphs is given. These graphs are used for defining a novel scoring function over instances by means of an information-theoretic divergence measure applied to the degree distributions of these graphs. The scoring function is employed to develop an effective large margin instance selection method, which is empirically demonstrated to improve storage and accuracy performance of the 1NN rule on artificial and real-life data sets.

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          Author and article information

          Journal
          IEEE Trans Pattern Anal Mach Intell
          IEEE transactions on pattern analysis and machine intelligence
          Institute of Electrical and Electronics Engineers (IEEE)
          1939-3539
          0098-5589
          Feb 2010
          : 32
          : 2
          Affiliations
          [1 ] Institute for Computing and Information Sciences (ICIS), Faculty of Science, Radboud University, Toernooiveld 1, NL 6525 ED Nijmegen, The Netherlands. elenam@cs.ru.nl
          Article
          10.1109/TPAMI.2009.164
          20075464
          cc07f9f3-d220-476a-9841-6d89aec1071e
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