• DocumentCode
    2712049
  • Title

    Using weak supervision in learning Gaussian mixture models

  • Author

    Ghosh, Soumya ; Srinivasan, Soundararajan ; Andrews, Burton

  • Author_Institution
    Dept. of Comput. Sci., Univ. of Colorado, Boulder, CO, USA
  • fYear
    2009
  • fDate
    14-19 June 2009
  • Firstpage
    973
  • Lastpage
    979
  • Abstract
    The expectation maximization algorithm is a popular approach to learning Gaussian mixture models from unlabeled data. In addition to the unlabeled data, in many applications, additional sources of information such as a-priori knowledge of mixing proportions are also available. We present a weakly supervised approach, in the form of a penalized expectation maximization algorithm that uses a-priori knowledge to guide the model training process. The algorithm penalizes those models whose predicted mixing proportions have high divergence from the a-priori mixing proportions. We also present an extension to incorporate both labeled and unlabeled data in a semi-supervised setting. Systematic evaluations on several publicly available datasets show that the proposed algorithms outperforms the expectation maximization algorithm. The performance gains are particularly significant when the amount of unlabeled data is limited and in the presence of noise.
  • Keywords
    data handling; expectation-maximisation algorithm; learning (artificial intelligence); Gaussian mixture models; datasets; expectation maximization algorithm; learning; mixing proportions; model training process; unlabeled data; weak supervision; Acoustic noise; Biological system modeling; Calibration; Clustering algorithms; Data models; Information resources; Neural networks; Noise robustness; Performance gain; Predictive models;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Neural Networks, 2009. IJCNN 2009. International Joint Conference on
  • Conference_Location
    Atlanta, GA
  • ISSN
    1098-7576
  • Print_ISBN
    978-1-4244-3548-7
  • Electronic_ISBN
    1098-7576
  • Type

    conf

  • DOI
    10.1109/IJCNN.2009.5178922
  • Filename
    5178922