DocumentCode :
1964735
Title :
Online Stochastic Matching: Beating 1-1/e
Author :
Feldman, Jon ; Mehta, Aranyak ; Mirrokni, Vahab ; Muthukrishnan, S.
Author_Institution :
Google, Inc., New York, NY, USA
fYear :
2009
fDate :
25-27 Oct. 2009
Firstpage :
117
Lastpage :
126
Abstract :
We study the online stochastic bipartite matching problem, in a form motivated by display ad allocation on the Internet. In the online, but adversarial case, the celebrated result of Karp, Vazirani and Vazirani gives an approximation ratio of 1- 1/e ¿ 0.632, a very familiar bound that holds for many online problems; further, the bound is tight in this case. In the online, stochastic case when nodes are drawn repeatedly from a known distribution, the greedy algorithm matches this approximation ratio, but still, no algorithm is known that beats the 1 - 1/e bound. Our main result is a 0.67-approximation online algorithm for stochastic bipartite matching, breaking this 1 - ¿ barrier. Furthermore, we show that no online algorithm can produce a 1 - ¿ approximation for an arbitrarily small e for this problem. Our algorithms are based on computing an optimal offline solution to the expected instance, and using this solution as a guideline in the process of online allocation. We employ a novel application of the idea of the power of two choices from load balancing: we compute two disjoint solutions to the expected instance, and use both of them in the online algorithm in a prescribed preference order. To identify these two disjoint solutions, we solve a max flow problem in a boosted flow graph, and then carefully decompose this maximum flow to two edge-disjoint (near-)matchings. In addition to guiding the online decision making, these two offline solutions are used to characterize an upper bound for the optimum in any scenario. This is done by identifying a cut whose value we can bound under the arrival distribution. At the end, we discuss extensions of our results to more general bipartite allocations that are important in a display ad application.
Keywords :
Internet; decision making; graph theory; greedy algorithms; resource allocation; stochastic processes; Internet; bipartite matching problem; display ad allocation; edge disjoint matchings; greedy algorithm; load balancing; max flow problem; online allocation; online decision making; online problems; online stochastic matching; Approximation algorithms; Decision making; Displays; Flow graphs; Greedy algorithms; Guidelines; Internet; Load management; Stochastic processes; Upper bound; advertisement; cut; flow; matching; online; optimization; stochastic;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Foundations of Computer Science, 2009. FOCS '09. 50th Annual IEEE Symposium on
Conference_Location :
Atlanta, GA
ISSN :
0272-5428
Print_ISBN :
978-1-4244-5116-6
Type :
conf
DOI :
10.1109/FOCS.2009.72
Filename :
5438641
Link To Document :
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