• DocumentCode
    3439000
  • Title

    Infinite Mixed Membership Matrix Factorization

  • Author

    Saluja, Amandeep ; Pakdaman, Mahdi ; Piao, Dongzhen ; Parikh, Ankur P.

  • Author_Institution
    Electr. & Comput. Eng. Dept., Carnegie Mellon Univ., Pittsburgh, PA, USA
  • fYear
    2013
  • fDate
    7-10 Dec. 2013
  • Firstpage
    800
  • Lastpage
    807
  • Abstract
    Rating and recommendation systems have become a popular application area for applying a suite of machine learning techniques. Current approaches rely primarily on probabilistic interpretations and extensions of matrix factorization, which factorizes a user-item ratings matrix into latent user and item vectors. Most of these methods fail to model significant variations in item ratings from otherwise similar users, a phenomenon known as the "Napoleon Dynamite\´\´ effect. Recent efforts have addressed this problem by adding a contextual bias term to the rating, which captures the mood under which a user rates an item or the context in which an item is rated by a user. In this work, we extend this model in a nonparametric sense by learning the optimal number of moods or contexts from the data, and derive Gibbs sampling inference procedures for our model. We evaluate our approach on the Movie Lens 1M dataset, and show significant improvements over the optimal parametric baseline, more than twice the improvements previously encountered for this task. We also extract and evaluate a DBLP dataset, wherein we predict the number of papers co-authored by two authors, and present improvements over the parametric baseline on this alternative domain as well.
  • Keywords
    inference mechanisms; learning (artificial intelligence); matrix decomposition; recommender systems; sampling methods; DBLP dataset; Gibbs sampling inference procedures; Movie Lens 1M dataset; Napoleon dynamite effect; contextual bias term; infinite mixed membership matrix factorization; item vectors; latent user; machine learning techniques; optimal parametric baseline; probabilistic interpretations; rating systems; recommendation systems; user-item ratings matrix; Context; Context modeling; Data models; Equations; Gold; Mathematical model; Probabilistic logic; Graphical Models; Recommender Systems;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Data Mining Workshops (ICDMW), 2013 IEEE 13th International Conference on
  • Conference_Location
    Dallas, TX
  • Print_ISBN
    978-1-4799-3143-9
  • Type

    conf

  • DOI
    10.1109/ICDMW.2013.128
  • Filename
    6754003