Full and local information in distributed decision making

  • Authors:
  • Panagiota N. Panagopoulou;Paul G. Spirakis

  • Affiliations:
  • Computer Engineering and Informatics Department, Patras University and Research Academic Computer Technology Institute, Greece;Computer Engineering and Informatics Department, Patras University and Research Academic Computer Technology Institute, Greece

  • Venue:
  • WAOA'07 Proceedings of the 5th international conference on Approximation and online algorithms
  • Year:
  • 2007

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Abstract

We consider the following distributed optimization problem: three agents i = 1, 2, 3 are each presented with a load drawn independently from the same known prior distribution. Then each agent decides on which of two available bins to put her load. Each bin has capacity α, and the objective is to find a distributed protocol that minimizes the probability that an overflow occurs (or, equivalently, maximizes the winning probability). In this work, we focus on the cases of full information and local information, depending on whether each agent knows the loads of both other agents or not. Furthermore, we distinguish between the cases where the agents are allowed to follow different decision rules (eponymous model) or not (anonymous model ). We assume no communication among agents. First, we present optimal protocols for the full information case, for both the anonymous and the eponymous model. For the local information, anonymous case, we show that the winning probability is upper bounded by 0.622 in the case where the input loads are drawn from the uniform distribution. Motivated by [3], we present a general method for computing the optimal single-threshold protocol for any continuous distribution, and we apply this method to the case of the exponential distribution. Finally, we show how to compute, in exponential time, an optimal protocol for the local information, eponymous model for the case where the input loads are drawn from a discrete-valued, bounded distribution.