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A Swarm Intelligence Approach to Avoid Local Optima in Fuzzy C-Means Clustering

机译:模糊C-均值聚类中的一种避免局部最优的群智能方法

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Clustering analysis is an important computational task that has applications in many domains. One of the most popular algorithms to solve the clustering problem is fuzzy c-means, which exploits notions from fuzzy logic to provide a smooth partitioning of the data into classes, allowing the possibility of multiple membership for each data sample. The fuzzy c-means algorithm is based on the optimization of a partitioning function, which minimizes inter-cluster similarity. This optimization problem is known to be NP-hard and it is generally tackled using a hill climbing method, a local optimizer that provides acceptable but sub-optimal solutions, since it is sensitive to initialization and tends to get stuck in local optima. In this work we propose an alternative approach based on the swarm intelligence global optimization method Fuzzy Self-Tuning Particle Swarm Optimization (FST-PSO). We solve the fuzzy clustering task by optimizing fuzzy c-means' partitioning function using FST-PSO. We show that this population-based metaheuristics is more effective than hill climbing, providing high quality solutions with the cost of an additional computational complexity. It is noteworthy that, since this particle swarm optimization algorithm is self-tuning, the user does not have to specify additional hyperparameters for the optimization process.
机译:聚类分析是一项重要的计算任务,在许多领域都有应用。解决聚类问题的最流行算法之一是模糊c均值,它利用模糊逻辑的概念将数据平滑地划分为类,从而允许每个数据样本具有多个成员资格。模糊c均值算法基于分区函数的优化,该算法可最大程度地降低集群间的相似性。已知此优化问题是NP难题,通常使用爬山方法解决,这是一种提供可接受但次优解决方案的局部优化器,因为它对初始化敏感并且容易陷入局部最优。在这项工作中,我们提出了一种基于群智能全局优化方法模糊自调整粒子群优化(FST-PSO)的替代方法。我们通过使用FST-PSO优化模糊c均值的划分函数来解决模糊聚类任务。我们证明了这种基于人口的元启发法比爬坡更为有效,它提供了高质量的解决方案,但又增加了计算复杂性。值得注意的是,由于此粒子群优化算法是自调整的,因此用户不必为优化过程指定其他超参数。

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