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Playing against Hedge

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DOI: 10.4236/ijcns.2014.712050    2,069 Downloads   2,432 Views   Citations

ABSTRACT

Hedge has been proposed as an adaptive scheme, which guides the player’s hand in a multi-armed bandit full information game. Applications of this game exist in network path selection, load distribution, and network interdiction. We perform a worst case analysis of the Hedge algorithm by using an adversary, who will consistently select penalties so as to maximize the player’s loss, assuming that the adversary’s penalty budget is limited. We further explore the performance of binary penalties, and we prove that the optimum binary strategy for the adversary is to make greedy decisions.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

Anagnostou, M. and Lambrou, M. (2014) Playing against Hedge. International Journal of Communications, Network and System Sciences, 7, 497-507. doi: 10.4236/ijcns.2014.712050.

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