A Stochastic Probing Problem with Applications
Abstract
We study a general stochastic probing problem defined on a universe V, where each element e in V is "active" independently with probability p_e. Elements have weights {w_e} and the goal is to maximize the weight of a chosen subset S of active elements. However, we are given only the p_e values-- to determine whether or not an element e is active, our algorithm must probe e. If element e is probed and happens to be active, then e must irrevocably be added to the chosen set S; if e is not active then it is not included in S. Moreover, the following conditions must hold in every random instantiation: (1) the set Q of probed elements satisfy an "outer" packing constraint, and (2) the set S of chosen elements satisfy an "inner" packing constraint. The kinds of packing constraints we consider are intersections of matroids and knapsacks. Our results provide a simple and unified view of results in stochastic matching and Bayesian mechanism design, and can also handle more general constraints. As an application, we obtain the first polynomial-time -approximate "Sequential Posted Price Mechanism" under k-matroid intersection feasibility constraints.
Cite
@article{arxiv.1302.5913,
title = {A Stochastic Probing Problem with Applications},
author = {Anupam Gupta and Viswanath Nagarajan},
journal= {arXiv preprint arXiv:1302.5913},
year = {2013}
}
Comments
20 pages, full version of IPCO 2013 paper