Solving coarse-grained DisCSPs with local search

I. Arana, Hatem Ahriz, Muhammed Basharu
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Abstract

Distributed constraint satisfaction problems (DisCSPs) are often used to solve problems which are naturally distributed over a number of agents on different locations who cooperate to solve the overall problem. One common assumption in DisCSP resolution is that each agent is only responsible for one variable, i.e. problems are fine-grained. We consider the more realistic scenario where DisCSPs are coarse-grained. Thus, each agent holds multiple local variables, i.e. each agent is responsible for a complex local problem. In such cases, besides the constraints between variables held by different agents there are also local constraints between variables within an agent. Thus, agents have to find a balance between the emphasis they place on resolving their internal and external constraints. Placing slightly more emphasis on one group of constraints can compromise the collective ability of agents to reach agreement and solve problems. We introduce DisBO-wd, a stochastic local search algorithm based on DisBO (Distributed Breakout) which includes a weight decay mechanism and some randomisation. We also present Multi-DisPel, a penalty-based, distributed, local search algorithm which is able to solve coarse-grained DisCSPs efficiently. Multi-DisPeL uses penalties on values in order to escape local optima during problem solving rather than the popular weights on constraints. We compare Multi-DisPeL and DisBO-wd with other algorithms and show, empirically, that they are more efficient and at least as effective as state of the art algorithms in some problem classes.
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用局部搜索求解粗粒度discsp
分布式约束满足问题(discsp)通常用于解决自然分布在不同位置的多个智能体上的问题,这些智能体合作解决整体问题。DisCSP解决方案中的一个常见假设是,每个代理只负责一个变量,即问题是细粒度的。我们考虑更现实的场景,其中discsp是粗粒度的。因此,每个代理持有多个局部变量,即每个代理负责一个复杂的局部问题。在这种情况下,除了不同代理持有的变量之间的约束之外,代理内的变量之间还存在局部约束。因此,代理必须在解决内部约束和外部约束的重点之间找到平衡。稍微强调一组约束可能会损害代理达成协议和解决问题的集体能力。介绍了一种基于DisBO (Distributed Breakout)的随机局部搜索算法DisBO-wd,它包含了一个权值衰减机制和一些随机化。我们还提出了multi -祛除算法,这是一种基于惩罚的分布式局部搜索算法,能够有效地解决粗粒度discsp问题。multi -驱散使用对值的惩罚,以便在问题解决过程中避免局部最优,而不是对约束的普遍权重。我们将multi -驱散和DisBO-wd与其他算法进行比较,并从经验上表明,它们在某些问题类别中更有效,至少与最先进的算法一样有效。
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