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ZCS Revisited: Zeroth-Level Classifier Systems for Data Mining

机译:重访ZCS:用于数据挖掘的零级分类器系统

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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.
机译: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。对于这种算法,后一种情况尤其是在将其应用于现实世界中的数据挖掘问题时,提出了一个有趣的,尽管尚未广泛研究的挑战。当前的调查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,其目的是发现基于强度的LCS在此类任务中的潜力。在这个方向上,ZCS-DM(一种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中的分类问题,并将其性能与其他最新的机器学习技术(C4)进行了比较。 .5,HIDER和XCS)。结果令人鼓舞,因为在仅适度的参数探索阶段,ZCS-DM设法在本研究使用的十二个基准数据集中的十一个中胜过其竞争对手的算法。我们通过确定未来的研究方向来结束这项工作。

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