A Learning Classifier System Approach to Clustering

K. Tamee, L. Bull, O. Pinngern
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引用次数: 11

Abstract

This paper presents a novel approach to clustering using a simple accuracy-based learning classifier system. Our approach achieves this by exploiting the evolutionary computing and reinforcement learning techniques inherent to such systems. The purpose of the work is to develop an approach to learning rules which accurately describe clusters without prior assumptions as to their number within a given dataset. Favourable comparisons to the commonly used k-means algorithm are demonstrated on a number of datasets
聚类的一种学习分类器系统方法
本文提出了一种新的聚类方法,使用一个简单的基于精度的学习分类器系统。我们的方法通过利用这种系统固有的进化计算和强化学习技术来实现这一目标。这项工作的目的是开发一种学习规则的方法,该规则可以准确地描述集群,而无需事先假设给定数据集中集群的数量。在许多数据集上证明了与常用的k-means算法的有利比较
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