Lagrangian method for satisfiability problems of propositional calculus

M. Nagamatu, T. Yanaru
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引用次数: 5

Abstract

Hopfield type neural networks for solving difficult combinatorial optimization problems have used gradient descent algorithms to solve constrained optimization problems via penalty functions. However, it is well known that the convergence to local minima is inevitable in these approaches. Lagrange programming neural networks have been proposed. They differ from the gradient descent algorithms by using anti-descent terms in their dynamical differential equations. We analyze the stability and the convergence property of the Lagrangian method when it is applied to a satisfiability problem of propositional calculus.
命题微积分可满足问题的拉格朗日方法
求解复杂组合优化问题的Hopfield型神经网络采用梯度下降算法通过惩罚函数求解约束优化问题。然而,众所周知,在这些方法中收敛到局部最小值是不可避免的。拉格朗日规划神经网络已被提出。它们与梯度下降算法的不同之处在于在其动态微分方程中使用了反下降项。分析了拉格朗日方法在求解命题微积分的可满足性问题时的稳定性和收敛性。
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