Approximation Algorithms for Stochastic k-TSP
Abstract
We consider the stochastic k-TSP problem where rewards at vertices are random and the objective is to minimize the expected length of a tour that collects reward k. We present an adaptive O( k)-approximation algorithm, and a non-adaptive O(2k)-approximation algorithm. We also show that the adaptivity gap of this problem is between e and O(2k).
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