We study combinatorial optimization problems on graphs in the mean-field model, which assigns independent and identically distributed random weights to the edges of the graph. Specifically, we focus on two generalizations of minimum weight matching on graphs. The first problem of minimum cost edge cover finds application in a computational linguistics problem of semantic projection. The second problem of minimum cost many-to-one matching appears as an intermediate optimization step in the restriction scaffold problem applied to shotgun sequencing of DNA. For the minimum cost edge cover on a complete graph on n vertices, where the edge weights are independent exponentially distributed random variables, we show that the expectation of the mini...
In general, the problem of computing a maximum a posteriori (MAP) assignment in a Markov random fiel...
Belief propagation, an algorithm for solving problems represented by graphical models, has long been...
We investigate the minimum cost of a wide class of combinatorial optimization problems over random b...
In a complete bipartite graph with vertex sets of cardinalities n and n', assign random weights from...
We apply the objective method of Aldous to the problem of finding the minimum-cost edge cover of the...
We apply the objective method of Aldous to the problem of finding the minimum-cost edge cover of the...
Max-product Belief Propagation (BP) is a popular message-passing algorithm for computing a Maximum-A...
Belief propagation (BP) is a message-passing heuristic for statistical inference in graphical models...
Belief propagation (BP) is a message-passing heuristic for statistical inference in graphical models...
The belief propagation (BP) algorithm is a message-passing algorithm that is used for solving probab...
Abstract — The max-product “belief propagation ” algorithm is an iterative, local, message passing a...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Loopy belief propagation has been employed in a wide variety of applications with great empirical su...
We formulate the weighted b-matching objective function as a probability distribution function and p...
In general, the problem of computing a maximum a posteriori (MAP) assignment in a Markov random fiel...
Belief propagation, an algorithm for solving problems represented by graphical models, has long been...
We investigate the minimum cost of a wide class of combinatorial optimization problems over random b...
In a complete bipartite graph with vertex sets of cardinalities n and n', assign random weights from...
We apply the objective method of Aldous to the problem of finding the minimum-cost edge cover of the...
We apply the objective method of Aldous to the problem of finding the minimum-cost edge cover of the...
Max-product Belief Propagation (BP) is a popular message-passing algorithm for computing a Maximum-A...
Belief propagation (BP) is a message-passing heuristic for statistical inference in graphical models...
Belief propagation (BP) is a message-passing heuristic for statistical inference in graphical models...
The belief propagation (BP) algorithm is a message-passing algorithm that is used for solving probab...
Abstract — The max-product “belief propagation ” algorithm is an iterative, local, message passing a...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Loopy belief propagation has been employed in a wide variety of applications with great empirical su...
We formulate the weighted b-matching objective function as a probability distribution function and p...
In general, the problem of computing a maximum a posteriori (MAP) assignment in a Markov random fiel...
Belief propagation, an algorithm for solving problems represented by graphical models, has long been...
We investigate the minimum cost of a wide class of combinatorial optimization problems over random b...