Consider a random graph model where each possible edge e is present independently with some probability p_e . We are given these numbers p_e , and want to build a large/heavy matching in the randomly generated graph. However, the only way we can find out whether an edge is present or not is to query it, and if the edge is indeed present in the graph, we are forced to add it to our matching. Further, each vertex i is allowed to be queried at most t_i times. How should we adaptively query the edges to maximize the expected weight of the matching? We consider several matching problems in this general framework (some of which arise in kidney exchanges and online dating, and others arise in modeling online advertisements); we give LP-rounding ba...
Online matching has received significant attention over the last 15 years due to its close connectio...
*Part of this author's work was completed during a sabbatical provided by Miami University. We ...
The online matching problem was introduced by Karp, Vazirani and Vazirani nearly three decades ago. ...
Consider a random graph model where each possible edge e is present independently with some probabil...
Consider a random graph model where each possible edge e is present independently with some probabil...
Consider a random graph model where each possible edge e is present independently with some probabil...
The stochastic matching problem deals with finding a maximum matching in a graph whose edges are unk...
The stochastic matching problem deals with finding a maximum matching in a graph whose edges are unk...
We study the stochastic matching problem on k-uniform hypergraphs. In this problem, we are given a h...
In this paper, we generalize the recently studied stochastic matching problem to more accurately mod...
Motivated by centralized matching markets, we study an online stochastic matching problem on edge-we...
Abstract. We consider the following stochastic optimization problem first intro-duced by Chen et al....
We consider two fundamental problems in stochastic optimization: approximation algorithms for stocha...
We study the average performance of online greedy matching algorithms on G(n, n, p), the random bipa...
We consider the online bipartite matching problem within the context of stochastic probing with comm...
Online matching has received significant attention over the last 15 years due to its close connectio...
*Part of this author's work was completed during a sabbatical provided by Miami University. We ...
The online matching problem was introduced by Karp, Vazirani and Vazirani nearly three decades ago. ...
Consider a random graph model where each possible edge e is present independently with some probabil...
Consider a random graph model where each possible edge e is present independently with some probabil...
Consider a random graph model where each possible edge e is present independently with some probabil...
The stochastic matching problem deals with finding a maximum matching in a graph whose edges are unk...
The stochastic matching problem deals with finding a maximum matching in a graph whose edges are unk...
We study the stochastic matching problem on k-uniform hypergraphs. In this problem, we are given a h...
In this paper, we generalize the recently studied stochastic matching problem to more accurately mod...
Motivated by centralized matching markets, we study an online stochastic matching problem on edge-we...
Abstract. We consider the following stochastic optimization problem first intro-duced by Chen et al....
We consider two fundamental problems in stochastic optimization: approximation algorithms for stocha...
We study the average performance of online greedy matching algorithms on G(n, n, p), the random bipa...
We consider the online bipartite matching problem within the context of stochastic probing with comm...
Online matching has received significant attention over the last 15 years due to its close connectio...
*Part of this author's work was completed during a sabbatical provided by Miami University. We ...
The online matching problem was introduced by Karp, Vazirani and Vazirani nearly three decades ago. ...