• DocumentCode
    3601556
  • Title

    A Divide-and-Conquer Method for Scalable Robust Multitask Learning

  • Author

    Yan Pan ; Rongkai Xia ; Jian Yin ; Ning Liu

  • Author_Institution
    Sch. of Software, Sun Yat-sen Univ., Guangzhou, China
  • Volume
    26
  • Issue
    12
  • fYear
    2015
  • Firstpage
    3163
  • Lastpage
    3175
  • Abstract
    Multitask learning (MTL) aims at improving the generalization performance of multiple tasks by exploiting the shared factors among them. An important line of research in the MTL is the robust MTL (RMTL) methods, which use trace-norm regularization to capture task relatedness via a low-rank structure. The existing algorithms for the RMTL optimization problems rely on the accelerated proximal gradient (APG) scheme that needs repeated full singular value decomposition (SVD) operations. However, the time complexity of a full SVD is O(min(md2, m2d)) for an RMTL problem with m tasks and d features, which becomes unaffordable in real-world MTL applications that often have a large number of tasks and high-dimensional features. In this paper, we propose a scalable solution for large-scale RMTL, with either the least squares loss or the squared hinge loss, by a divide-and-conquer method. The proposed method divides the original RMTL problem into several size-reduced subproblems, solves these cheaper subproblems in parallel by any base algorithm (e.g., APG) for RMTL, and then combines the results to obtain the final solution. Our theoretical analysis indicates that, with high probability, the recovery errors of the proposed divide-and-conquer algorithm are bounded by those of the base algorithm. Furthermore, in order to solve the subproblems with the least squares loss or the squared hinge loss, we propose two efficient base algorithms based on the linearized alternating direction method, respectively. Experimental results demonstrate that, with little loss of accuracy, our method is substantially faster than the state-of-the-art APG algorithms for RMTL.
  • Keywords
    divide and conquer methods; learning (artificial intelligence); least mean squares methods; optimisation; singular value decomposition; APG algorithms; RMTL optimization problems; SVD; divide-and-conquer method; least squares loss; linearized alternating direction method; low-rank structure; scalable robust multitask learning; singular value decomposition operations; size-reduced subproblems; squared hinge loss; task relatedness; trace-norm regularization; Algorithm design and analysis; Fasteners; Least squares approximations; Matrix decomposition; Optimization; Partitioning algorithms; Divide-and-conquer method; linearized alternating direction method (LADM); low-rank matrices; multitask learning (MTL); multitask learning (MTL).;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2015.2406759
  • Filename
    7057651