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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Stochastic Competitive Hopfield Network and Its Application to Maximum Clique Problem
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Stochastic Competitive Hopfield Network and Its Application to Maximum Clique Problem

机译:随机竞争Hopfield网络及其在最大集团问题中的应用

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In this paper, introducing a stochastic hill-climbing dynamics into an optimal competitive Hopfield network model (OCHOM), we propose a new algorithm that permits temporary energy increases, which helps the OCHOM escape from local minima. In graph theory, a clique is a completely connected subgraph and the maximum clique problem (MCP) is to find a clique of maximum size of a graph. The MCP is a classic optimization problem in computer science and in graph theory with many real-world applications, and is also known to be NP-complete. Recently, Galan-Marin et al. proposed the OCHOM for the MCP. It can guarantee convergence to a global/local minimum of energy function, and performs better than other competitive neural approaches. However, the OCHOM has no mechanism to escape from local minima. The proposed algorithm introduces stochastic hill-climbing dynamics which helps the OCHOM escape from local minima, and it is applied to the MCP. A number of instances have been simulated to verify the proposed algorithm.
机译:在本文中,将随机爬山动力学引入最优竞争Hopfield网络模型(OCHOM),我们提出了一种允许暂时增加能量的新算法,这有助于OCHOM摆脱局部极小值。在图论中,一个集团是一个完全相连的子图,最大集团问题(MCP)是找到一个图的最大大小的集团。 MCP是计算机科学和图论中具有许多实际应用的经典优化问题,也被称为NP完全问题。最近,Galan-Marin等人。提出了针对MCP的OCHOM。它可以保证收敛到能量函数的全局/局部最小值,并且比其他竞争性神经方法具有更好的性能。但是,OCHOM没有逃避局部最小值的机制。所提出的算法引入了随机爬山动力学,有助于OCHOM摆脱局部极小值,并将其应用于MCP。模拟了许多实例以验证所提出的算法。

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