• Title of article

    PyIT-MLFS: A Python-Based Information Theoretical Multi-Label Feature Selection Library

  • Author/Authors

    Eskandari ، Sadegh Department of Computer Science - Faculty of Mathematical Sciences - University of Guilan

  • From page
    9
  • To page
    15
  • Abstract
    Multi-label learning is an emerging research direction that deals with data in which an instance may belong to multiple class labels simultaneously. As many multi-label data contain very large feature space with hundreds of irrelevant and redundant features, multi-label feature selection is a fundamental pre-processing tool for selecting a subset of most representative and discriminative features. This paper introduces a Python-based open-source library that provides the state-ofthe-art information theoretical filter-based multi-label feature selection algorithms. The library, called PyIT-MLFS, is designed to facilitate the development of new algorithms. It is the first comprehensive open-source library for implementing algorithms of multilabel feature selection. Moreover, it provides a high-level interface that enables the end-users to test and compare different already implemented algorithms. PyIT-MLFS is available from https://github.com/Sadegh28/PyIT-MLFS.
  • Keywords
    Feature selection , Multi , label learning library , Data mining
  • Journal title
    International Journal of Research in Indstrial Engineering
  • Journal title
    International Journal of Research in Indstrial Engineering
  • Record number

    2723761