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arxiv: 1806.10547 · v2 · pith:UUCZNBAAnew · submitted 2018-06-27 · 💻 cs.LG · stat.ML

Online optimal task offloading with one-bit feedback

classification 💻 cs.LG stat.ML
keywords taskoffloadingdifferenthappinesshelpermodelnetworksnode
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Task offloading is an emerging technology in fog-enabled networks. It allows users to transmit tasks to neighbor fog nodes so as to utilize the computing resources of the networks. In this paper, we investigate a stochastic task offloading model and propose a multi-armed bandit framework to formulate this model. We consider the fact that different helper nodes prefer different kinds of tasks. Further, we assume each helper node just feeds back one-bit information to the task node to indicate the level of happiness. The key challenge of this problem lies in the exploration-exploitation tradeoff. We thus implement a UCB-type algorithm to maximize the long-term happiness metric. Numerical simulations are given in the end of the paper to corroborate our strategy.

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