In the adversarial edge arrival model for maximum cardinality matching, edges of an unknown graph are revealed one-by-one in arbitrary order, and should be irrevocably accepted or rejected. Here, the goal of an online algorithm is to maximize the number of accepted edges while maintaining a feasible matching at any point in time. For this model, the standard greedy heuristic is 1/2-competitive, and on the other hand, no algorithm that outperforms this ratio is currently known, even for very simple graphs. We present a clean Min-Index framework for devising a family of randomized algorithms, and provide a number of positive and negative results in this context. Among these results, we present a 5/9-competitive algorithm when the underlying ...
We introduce a weighted version of the ranking algorithm by Karp et al. (STOC 1990), and prove a com...
Finding a maximum-cardinality or maximum-weight matching in (edge-weighted) undirected graphs is amo...
The problem of online matching with stochastic rewards is a generalization of the online bipartite m...
We study the online maximum matching problem in a model in which the edges are associated with a kno...
We study the Maximum Cardinality Matching (MCM) and the Maximum Weight Matching (MWM) problems, on t...
When designing a preemptive online algorithm for the maximum matching problem, we wish to maintain a...
The online matching problem was introduced by Karp, Vazirani and Vazirani nearly three decades ago. ...
We investigate online maximum cardinality matching, a central problem in ad allocation. In this prob...
Online bipartite matching with edge arrivals remained a major open question for a long time until a ...
We study the b-matching problem in bipartite graphs G = (S,R,E). Each vertex s ? S is a server with ...
Algorithms for the Maximum Cardinality Matching Problem which greedily add edges to the solution enj...
Lecture Notes in Computer Science, vol. 8497 entitled: Frontiers in Algorithmics: 8th International ...
In online minimum cost matching on the line, n requests appear one by one and have to be matched imm...
International audienceWe propose heuristics for approximating the maximum cardinality matching on un...
We study the b-matching problem, which generalizes classical online matching introduced by Karp, Vaz...
We introduce a weighted version of the ranking algorithm by Karp et al. (STOC 1990), and prove a com...
Finding a maximum-cardinality or maximum-weight matching in (edge-weighted) undirected graphs is amo...
The problem of online matching with stochastic rewards is a generalization of the online bipartite m...
We study the online maximum matching problem in a model in which the edges are associated with a kno...
We study the Maximum Cardinality Matching (MCM) and the Maximum Weight Matching (MWM) problems, on t...
When designing a preemptive online algorithm for the maximum matching problem, we wish to maintain a...
The online matching problem was introduced by Karp, Vazirani and Vazirani nearly three decades ago. ...
We investigate online maximum cardinality matching, a central problem in ad allocation. In this prob...
Online bipartite matching with edge arrivals remained a major open question for a long time until a ...
We study the b-matching problem in bipartite graphs G = (S,R,E). Each vertex s ? S is a server with ...
Algorithms for the Maximum Cardinality Matching Problem which greedily add edges to the solution enj...
Lecture Notes in Computer Science, vol. 8497 entitled: Frontiers in Algorithmics: 8th International ...
In online minimum cost matching on the line, n requests appear one by one and have to be matched imm...
International audienceWe propose heuristics for approximating the maximum cardinality matching on un...
We study the b-matching problem, which generalizes classical online matching introduced by Karp, Vaz...
We introduce a weighted version of the ranking algorithm by Karp et al. (STOC 1990), and prove a com...
Finding a maximum-cardinality or maximum-weight matching in (edge-weighted) undirected graphs is amo...
The problem of online matching with stochastic rewards is a generalization of the online bipartite m...