The Price of Information in Combinatorial Optimization
Sahil Singla

TL;DR
This paper studies the problem of selecting optimal strategies for combinatorial optimization problems under uncertainty, where acquiring exact information incurs a cost, and proposes reduction techniques to classical problems to optimize utility or disutility.
Contribution
It generalizes Weitzman's Pandora's box problem to various combinatorial optimization problems and provides reduction techniques and algorithms to optimize utility/disutility under information acquisition costs.
Findings
Developed a reduction technique from complex problems to their non-price versions.
Designed exact and approximation algorithms for utility/disutility optimization.
Extended methods to scenarios with additional probing constraints.
Abstract
Consider a network design application where we wish to lay down a minimum-cost spanning tree in a given graph; however, we only have stochastic information about the edge costs. To learn the precise cost of any edge, we have to conduct a study that incurs a price. Our goal is to find a spanning tree while minimizing the disutility, which is the sum of the tree cost and the total price that we spend on the studies. In a different application, each edge gives a stochastic reward value. Our goal is to find a spanning tree while maximizing the utility, which is the tree reward minus the prices that we pay. Situations such as the above two often arise in practice where we wish to find a good solution to an optimization problem, but we start with only some partial knowledge about the parameters of the problem. The missing information can be found only after paying a probing price, which we…
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