• DocumentCode
    105451
  • Title

    A Novel Strategy for Solving the Stochastic Point Location Problem Using a Hierarchical Searching Scheme

  • Author

    Yazidi, Anis ; Granmo, Ole-Christoffer ; Oommen, B. John ; Goodwin, Morten

  • Author_Institution
    Dept. of Comput. Sci., Oslo & Akershus Univ. Coll., Oslo, Norway
  • Volume
    44
  • Issue
    11
  • fYear
    2014
  • fDate
    Nov. 2014
  • Firstpage
    2202
  • Lastpage
    2220
  • Abstract
    Stochastic point location (SPL) deals with the problem of a learning mechanism (LM) determining the optimal point on the line when the only input it receives are stochastic signals about the direction in which it should move. One can differentiate the SPL from the traditional class of optimization problems by the fact that the former considers the case where the directional information, for example, as inferred from an Oracle (which possibly computes the derivatives), suffices to achieve the optimization-without actually explicitly computing any derivatives. The SPL can be described in terms of a LM (algorithm) attempting to locate a point on a line. The LM interacts with a random environment which essentially informs it, possibly erroneously, if the unknown parameter is on the left or the right of a given point. Given a current estimate of the optimal solution, all the reported solutions to this problem effectively move along the line to yield updated estimates which are in the neighborhood of the current solution.1 This paper proposes a dramatically distinct strategy, namely, that of partitioning the line in a hierarchical tree-like manner, and of moving to relatively distant points, as characterized by those along the path of the tree. We are thus attempting to merge the rich fields of stochastic optimization and data structures. Indeed, as in the original discretized solution to the SPL, in one sense, our solution utilizes the concept of discretization and operates a uni-dimensional controlled random walk (RW) in the discretized space, to locate the unknown parameter. However, by moving to nonneighbor points in the space, our newly proposed hierarchical stochastic searching on the line (HSSL) solution performs such a controlled RW on the discretized space structured on a superimposed binary tree. We demonstrate that the HSSL solution is orders of magnitude faster than the original SPL solution proposed by Oommen. By a rigorous analysis, the HSSL is shown to be - ptimal if the effectiveness (or credibility) of the environment, given by p, is greater than the golden ratio conjugate. The solution has been both analytically solved and simulated, and the results obtained are extremely fascinating, as this is the first reported use of time reversibility in the analysis of stochastic learning. The learning automata extensions of the scheme are currently being investigated.
  • Keywords
    random processes; search problems; stochastic programming; tree data structures; HSSL solution; LM algorithm; Oracle; SPL; controlled RW; data structures; directional information; discretized space; golden ratio conjugate; hierarchical searching scheme; hierarchical stochastic searching on the line; hierarchical tree-like manner; learning automata extensions; learning mechanism; optimization problems; stochastic learning; stochastic optimization; stochastic point location problem; stochastic signals; superimposed binary tree; time reversibility; unidimensional controlled random walk; Aerospace electronics; Binary trees; Convergence; Markov processes; Optimization; Search problems; Controlled random walk; discretized learning; learning automata; stochastic-point problem; time reversibility;
  • fLanguage
    English
  • Journal_Title
    Cybernetics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2168-2267
  • Type

    jour

  • DOI
    10.1109/TCYB.2014.2303712
  • Filename
    6742611