Polyhedral combinatorics and neural networks
Neural Computation
Convergence properties of the softassign quadratic assignment algorithm
Neural Computation
Neural Networks for Optimization and Signal Processing
Neural Networks for Optimization and Signal Processing
A novel optimizing network architecture with applications
Neural Computation
Machine learning problems from optimization perspective
Journal of Global Optimization
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A Lagrange multiplier and Hopfield-type barrier function method is proposed for approximating a solution of the traveling salesman problem. The method is derived from applications of Lagrange multipliers and a Hopfield-type barrier function and attempts to produce a solution of high quality by generating a minimum point of a barrier problem for a sequence of descending values of the barrier parameter. For any given value of the barrier parameter, the method searches for a minimum point of the barrier problem in a feasible descent direction, which has a desired property that lower and upper bounds on variables are always satisfied automatically if the step length is a number between zero and one. At each iteration, the feasible descent direction is found by updating Lagrange multipliers with a globally convergent iterative procedure. For any given value of the barrier parameter, the method converges to a stationary point of the barrier problem without any condition on the objective function. Theoretical and numerical results show that the method seems more effective and efficient than the softassign algorithm.