A new CSP graph-based representation for Ant Colony Optimization

A. González-Pardo, David Camacho
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引用次数: 19

Abstract

Constraint Satisfaction Problems (CSP) have been widely studied in several research areas like Artificial Intelligence or Operational Research due their complexity and industrial interest. From previous research areas, heuristic (informed) search methods have been particularly active looking for feasible approaches. One of the critical problems to work with CSP is related to the exponential growth of computational resources needed to solve even the simplest problems. This paper presents a new efficient CSP graph-based representation to solve CSP by using Ant Colony Optimization (ACO) algorithms. This paper presents also a new heuristic (called Oblivion Rate), that have been designed to improve the current state-of-the-art in the application of ACO algorithms on these domains. The presented graph construction provides a strong reduction in both, the number of connections and the number of nodes needed to model the CSP. Also, the new heuristic is used to reduce the number of pheromones in the system (allowing to solve problems with an increasing complexity). This new approach has been tested, as case study, using the classical N-Queens Problem. Experimental results show how the new approach works in both, reducing the complexity of the resulting CSP graph and solving problems with increasing complexity through the utilization of the Oblivion Rate.
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一种新的基于CSP图的蚁群优化表示
约束满足问题(CSP)由于其复杂性和工业价值,在人工智能和运筹学等多个研究领域得到了广泛的研究。从以前的研究领域来看,启发式(知情)搜索方法特别积极地寻找可行的方法。使用CSP的关键问题之一与解决即使是最简单的问题所需的计算资源的指数增长有关。本文提出了一种新的高效的基于图的CSP表示方法,利用蚁群优化算法求解CSP。本文还提出了一种新的启发式算法(称为遗忘率),旨在提高蚁群算法在这些领域的应用现状。所呈现的图结构大大减少了对CSP建模所需的连接数量和节点数量。此外,新的启发式算法用于减少系统中信息素的数量(允许解决日益复杂的问题)。作为案例研究,这种新方法已经使用经典的N-Queens问题进行了测试。实验结果表明,新方法既降低了生成的CSP图的复杂性,又通过利用遗忘率解决了复杂性不断增加的问题。
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