A synchronous Hopfield--type neural network model containing units with analog input and binary output, which is suitable for parallel implementation, is examined in the context of solving discrete optimization problems. A hybrid parallel update scheme concerning the stochastic input-output behaviour of each unit is presented. This parallel update scheme maintains the solution quality of the Boltzmann Machine optimizer, which is inherently sequential. Experimental results on the Maximum Independent Set problem demonstrate the benefit of using the proposed optimizer in terms of computation time. Excellent speedup has been obtained through parallel implementation on both shared memory and distributed memory architecures. Keywords: Optimizatio...
This note elaborates on material that was presented earlier in the COSOR Memorandum 89-21, titled: S...
Abstract. Stochastic algorithms for solving constraint satisfaction problems with soft constraints t...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
A mathematical model is presented for the description of synchronously parallel Boltzmann machines. ...
The availability of efficient software implementations of neural network algorithms is a key task in...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The potential of Boltzmann machines to cope with difficult combinatorial optimization problems is in...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
Stochastic algorithms for solving constraint satisfaction problems with soft constraints that can be...
At present, a significant part of optimization problems, particularly questions of combinatorial opt...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
In this paper, implementation possibilities of a synchronous binary neural model for solving optimiz...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
Boltzmann machines offer an exciting approach to connectionist networks. Salient features of these n...
This note elaborates on material that was presented earlier in the COSOR Memorandum 89-21, titled: S...
Abstract. Stochastic algorithms for solving constraint satisfaction problems with soft constraints t...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
A mathematical model is presented for the description of synchronously parallel Boltzmann machines. ...
The availability of efficient software implementations of neural network algorithms is a key task in...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The potential of Boltzmann machines to cope with difficult combinatorial optimization problems is in...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
Stochastic algorithms for solving constraint satisfaction problems with soft constraints that can be...
At present, a significant part of optimization problems, particularly questions of combinatorial opt...
Three parallel physical optimization algorithms for allocating irregular data to multicomputer nodes...
In this paper, implementation possibilities of a synchronous binary neural model for solving optimiz...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
Boltzmann machines offer an exciting approach to connectionist networks. Salient features of these n...
This note elaborates on material that was presented earlier in the COSOR Memorandum 89-21, titled: S...
Abstract. Stochastic algorithms for solving constraint satisfaction problems with soft constraints t...
A multiscale method is described in the context of binary Hopfield--type neural networks. The approp...