Feature and Search Space Reduction for Label-Dependent Multi-label Classification

Prema Nedungadi*, Haripriya Harikumar

*Corresponding author for this work

Research output: Chapter in Book/Conference proceedingConference contributionpeer-review

Abstract

The problem of high dimensionality in multi-label domain is an emerging research area to explore. A strategy is proposed to combine both multiple regression and hybrid k-Nearest Neighbor algorithm in an efficient way for high-dimensional multi-label classification. The hybrid kNN performs the dimensionality reduction in the feature space of multi-labeled data in order to reduce the search space as well as the feature space for kNN, and multiple regression is used to extract label-dependent information from the label space. Our multi-label classifier incorporates label dependency in the label space and feature similarity in the reduced feature space for prediction. It has various applications in different domains such as in information retrieval, query categorization, medical diagnosis, and marketing.
Original languageEnglish
Title of host publicationProceedings of the Second International Conference on Computer and Communication Technologies
Subtitle of host publicationIC3T 2015
EditorsSuresh Chandra Satapathy, K. Srujan Raju, Jyotsna Kumar Mandal, Vikrant Bhateja
Place of PublicationNew Delhi
PublisherSpringer Nature
Pages591–599
Number of pages9
Volume2
ISBN (Electronic)9788132225232
ISBN (Print)9788132225225
DOIs
Publication statusPublished - 4 Sept 2015

Publication series

NameAdvances in Intelligent Systems and Computing
PublisherSpringer
Volume380
ISSN (Print)2194-5357
ISSN (Electronic)2194-5365

Keywords

  • multi-label
  • multiple regression
  • hybrid kNN
  • PCA

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