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    <title>DSpace Collection:</title>
    <link>http://localhost:8080/xmlui/handle/123456789/2961</link>
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    <pubDate>Tue, 23 Jun 2026 06:26:27 GMT</pubDate>
    <dc:date>2026-06-23T06:26:27Z</dc:date>
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      <title>A Novel Algorithm for Multi-label Classification by Exploring Feature and Label Dissimilarities</title>
      <link>http://localhost:8080/xmlui/handle/123456789/2962</link>
      <description>Title: A Novel Algorithm for Multi-label Classification by Exploring Feature and Label Dissimilarities
Authors: Tidake  V. S.; Sane S. S.
Abstract: Selection of appropriate nearest neighbors greatly&#xD;
affects predictive accuracy of nearest neighbor classifier.&#xD;
Feature similarity is often used to decide the set of k nearest&#xD;
neighbors. Predictive accuracy of multi-label kNN could further&#xD;
be enhanced if in addition to the feature similarity, difference in&#xD;
feature values and dissimilarity of the instance labels are also&#xD;
taken into account to decide the set of k nearest neighbors. This&#xD;
paper deals with an algorithm called “ML-FLD” that not only&#xD;
takes into account features similarity of the instances, but also&#xD;
considers feature difference and label dissimilarity in order to&#xD;
decide the k nearest neighbors of a given unseen instance for&#xD;
the prediction of its labels. The algorithm when tested using&#xD;
well-known datasets and checked with the existing well known&#xD;
algorithms, provides better performance in terms of example based metrics such as hamming loss, ranking loss, one error, coverage, average precision, accuracy, F measure as well as label-based metrics like macro-averaged and micro-averaged F measure.</description>
      <pubDate>Thu, 04 Jul 2019 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">http://localhost:8080/xmlui/handle/123456789/2962</guid>
      <dc:date>2019-07-04T00:00:00Z</dc:date>
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