ZCS Revisited: Zeroth-Level Classifier Systems for Data Mining

F. Tzima, P. Mitkas
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引用次数: 12

Abstract

Learning classifier systems (LCS) are machine learning systems designed to work for both multi-step and single-step decision tasks. The latter case presents an interesting,though not widely studied, challenge for such algorithms,especially when they are applied to real-world data mining problems. The present investigation departs from the popular approach of applying accuracy-based LCS to data mining problems and aims to uncover the potential of strength-based LCS in such tasks. In this direction, ZCS-DM, a Zeroth-level Classifier System for data mining, is applied to a series of real-world classification problems and its performance is compared to that of other state-of-the-art machine learning techniques (C4.5, HIDER and XCS). Results are encouraging, since with only a modest parameter exploration phase, ZCS-DM manages to outperform its rival algorithms in eleven out of the twelve benchmark datasets used in this study. We conclude this work by identifying future research directions.
ZCS重访:数据挖掘的零级分类器系统
学习分类器系统(LCS)是设计用于多步和单步决策任务的机器学习系统。后一种情况对这种算法提出了一个有趣的挑战,尽管没有得到广泛的研究,特别是当它们应用于现实世界的数据挖掘问题时。目前的研究偏离了将基于准确性的LCS应用于数据挖掘问题的流行方法,旨在揭示基于强度的LCS在此类任务中的潜力。在这个方向上,ZCS-DM,一个用于数据挖掘的零级分类器系统,被应用于一系列现实世界的分类问题,并将其性能与其他最先进的机器学习技术(C4.5, HIDER和XCS)进行了比较。结果是令人鼓舞的,因为只有一个适度的参数探索阶段,ZCS-DM在本研究中使用的12个基准数据集中的11个中成功胜过其竞争对手算法。最后,我们确定了未来的研究方向。
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