Distributed Algorithms for Learning and Cognitive Medium

  • Anandakumar Haldorai
  • Umamaheswari Kandaswamy
Part of the EAI/Springer Innovations in Communication and Computing book series (EAISICC)


Distributed algorithms for learning and cognitive medium are evaluated in cognitive radio networks composing of various Secondary Users (SUs). The accessibility data of cognitive channels are unidentified to SUs, hence they are evaluated via the application of detection decisions. Prior agreement or data exchange is unknown between SUs. Hence, this paper proposes principles for distributed learning and cognitive access that attain an orderly optimum cognitive framework throughput in self-play. This implies that the attainment of effective secondary transmission if effected is evaluated at all SUs. Resultantly, the principle given in this research shows a minimal regret in distributed algorithm and access, whereby a scenario when the amount of SUs is identified to the principle proves the overall algorithm regret of the transformation slot. The access principle and distributed learning attain an orderly optimum regret, which can be compared to the asymptotic minimal hurdle for regret beneath any kind of uniformly effective learning and principle cognitive media access. Considering the scenario when the amount of SUs is unidentified, an approximation of delivered via feedback. A proposal of a principle in the scenario whereby its asymptotic evaluation regret develops effectively compared to logarithmic regret amount of transformation slots is given.


Distributed learning Logarithmic regret Multi-armed bandits Cognitive media access 


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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Anandakumar Haldorai
    • 1
  • Umamaheswari Kandaswamy
    • 2
  1. 1.Department of Computer Science and EngineeringSri Eshwar College of EngineeringCoimbatoreIndia
  2. 2.Department of Information TechnologyPSG College of TechnologyCoimbatoreIndia

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