• DocumentCode
    1755608
  • Title

    Distributed Stochastic Online Learning Policies for Opportunistic Spectrum Access

  • Author

    Yi Gai ; Krishnamachari, Bhuma

  • Author_Institution
    Intel Labs., Hillsboro, OR, USA
  • Volume
    62
  • Issue
    23
  • fYear
    2014
  • fDate
    Dec.1, 2014
  • Firstpage
    6184
  • Lastpage
    6193
  • Abstract
    The fundamental problem of multiple secondary users contending for opportunistic spectrum access over multiple channels in cognitive radio networks has been formulated recently as a decentralized multi-armed bandit (D-MAB) problem. In a D-MAB problem there are M users and N arms (channels) that each offer i.i.d. stochastic rewards with unknown means so long as they are accessed without collision. The goal is to design distributed online learning policies that incur minimal regret. We consider two related problem formulations in this paper. First, we consider the setting where the users have a prioritized ranking, such that it is desired for the K-th-ranked user to learn to access the arm offering the K-th highest mean reward. For this problem, we present DLP, the first distributed policy that yields regret that is uniformly logarithmic over time without requiring any prior assumption about the mean rewards. Second, we consider the case when a fair access policy is required, i.e., it is desired for all users to experience the same mean reward. For this problem, we present DLF, a distributed policy that yields order-optimal regret scaling with respect to the number of users and arms, better than previously proposed policies in the literature. Both of our distributed policies make use of an innovative modification of the well-known UCB1 policy for the classic multi-armed bandit problem that allows a single user to learn how to play the arm that yields the K K-th largest mean reward.
  • Keywords
    cognitive radio; telecommunication channels; D-MAB problem; UCB1 policy; cognitive radio networks; decentralized multiarmed bandit problem; distributed stochastic online learning policies; innovative modification; multiarmed bandit problem; multiple channels; opportunistic spectrum access; order-optimal regret scaling; stochastic rewards; Cognitive radio; Dynamic spectrum access; Indexes; Random processes; Stochastic processes; Throughput; Upper bound; Online learning; decentralized multi-armed bandit; dynamic spectrum access;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2014.2360821
  • Filename
    6912998