DocumentCode
655187
Title
Bandits with Knapsacks
Author
Badanidiyuru, Ashwinkumar ; Kleinberg, Robert ; Slivkins, Aleksandrs
Author_Institution
Comput. Sci. Dept., Cornell Univ., Ithaca, NY, USA
fYear
2013
fDate
26-29 Oct. 2013
Firstpage
207
Lastpage
216
Abstract
Multi-armed bandit problems are the predominant theoretical model of exploration-exploitation tradeoffs in learning, and they have countless applications ranging from medical trials, to communication networks, to Web search and advertising. In many of these application domains the learner may be constrained by one or more supply (or budget) limits, in addition to the customary limitation on the time horizon. The literature lacks a general model encompassing these sorts of problems. We introduce such a model, called "bandits with knapsacks", that combines aspects of stochastic integer programming with online learning. A distinctive feature of our problem, in comparison to the existing regret-minimization literature, is that the optimal policy for a given latent distribution may significantly outperform the policy that plays the optimal fixed arm. Consequently, achieving sub linear regret in the bandits-with-knapsacks problem is significantly more challenging than in conventional bandit problems. We present two algorithms whose reward is close to the information-theoretic optimum: one is based on a novel "balanced exploration" paradigm, while the other is a primal-dual algorithm that uses multiplicative updates. Further, we prove that the regret achieved by both algorithms is optimal up to polylogarithmic factors. We illustrate the generality of the problem by presenting applications in a number of different domains including electronic commerce, routing, and scheduling. As one example of a concrete application, we consider the problem of dynamic posted pricing with limited supply and obtain the first algorithm whose regret, with respect to the optimal dynamic policy, is sub linear in the supply.
Keywords
advertising; information theory; integer programming; knapsack problems; stochastic programming; Web search; advertising; bandits with knapsacks; communication networks; electronic commerce; exploration-exploitation tradeoffs; information-theoretic optimum; medical trials; multiarmed bandit problems; online learning; routing; scheduling; stochastic integer programming; Algorithm design and analysis; Approximation algorithms; Benchmark testing; Heuristic algorithms; Optimized production technology; Pricing; Vectors; Multi-armed bandits; dynamic ad allocation; dynamic pricing; dynamic procurement; exploration-exploitation tradeoff; regret; stochastic packing;
fLanguage
English
Publisher
ieee
Conference_Titel
Foundations of Computer Science (FOCS), 2013 IEEE 54th Annual Symposium on
Conference_Location
Berkeley, CA
ISSN
0272-5428
Type
conf
DOI
10.1109/FOCS.2013.30
Filename
6686156
Link To Document