• DocumentCode
    1355084
  • Title

    Attribute-Distributed Learning: Models, Limits, and Algorithms

  • Author

    Zheng, Haipeng ; Kulkarni, Sanjeev R. ; Poor, H. Vincent

  • Author_Institution
    Dept. of Electr. Eng., Princeton Univ., Princeton, NJ, USA
  • Volume
    59
  • Issue
    1
  • fYear
    2011
  • Firstpage
    386
  • Lastpage
    398
  • Abstract
    This paper introduces a framework for distributed learning (regression) on attribute-distributed data. First, the convergence properties of attribute-distributed regression with an additive model and a fusion center are discussed, and the convergence rate and uniqueness of the limit are shown for some special cases. Then, taking residual refitting (or boosting) as a prototype algorithm, three different schemes, Simple Iterative Projection, a greedy algorithm, and a parallel algorithm (with its derivatives), are proposed and compared. Among these algorithms, the first two are sequential and have low communication overhead, but are susceptible to overtraining. The parallel algorithm has the best performance, but has significant communication requirements. Instead of directly refitting the ensemble residual sequentially, the parallel algorithm redistributes the residual to each agent in proportion to the coefficients of the optimal linear combination of the current individual estimators. Designing residual redistribution schemes also improves the ability to eliminate irrelevant attributes. The performance of the algorithms is compared via extensive simulations. Communication issues are also considered: the amount of data to be exchanged among the three algorithms is compared, and the three methods are generalized to scenarios without a fusion center.
  • Keywords
    greedy algorithms; iterative methods; learning (artificial intelligence); parallel algorithms; regression analysis; attribute distributed learning; attribute distributed regression; greedy algorithm; optimal linear combination; parallel algorithm; simple iterative projection; Additives; Algorithm design and analysis; Collaboration; Distributed databases; Partitioning algorithms; Prediction algorithms; Training; Distributed information systems; distributed processing; statistical learning;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2010.2088393
  • Filename
    5605268