基于规则的连续属性分类器,具有快速准确的规则项归纳

Manal Almutairi, Frederic T. Stahl, M. Bramer
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引用次数: 3

摘要

与决策树相比,基于规则的分类器被认为更具表现力,更易于人类阅读,并且更不容易过度拟合,特别是当数据中存在噪声时。此外,基于规则的分类器不会像由自上而下的决策树归纳(也称为“分而治之”)引起的分类器那样受到复制子树问题的困扰。本研究探讨了基于规则的分类器家族的一些最新发展,Prism家族和更具体的G-Prism-FB和G-Prism-DB算法,用于为连续数据归纳规则项的局部离散化方法。在此基础上,提出了一种结合高斯概率密度分布(GPDD)、四分位间距(IQR)和数据变换方法的Prism族新算法。这种新的基于规则的算法被称为G-Rules-IQR,经过经验评估,在执行时间、准确性和暂定准确性方面优于Prism家族的其他成员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Rule-Based Classifier with Accurate and Fast Rule Term Induction for Continuous Attributes
Rule-based classifiers are considered more expressive, human readable and less prone to over-fitting compared with decision trees, especially when there is noise in the data. Furthermore, rule-based classifiers do not suffer from the replicated subtree problem as classifiers induced by top down induction of decision trees (also known as 'Divide and Conquer'). This research explores some recent developments of a family of rulebased classifiers, the Prism family and more particular G-Prism-FB and G-Prism-DB algorithms, in terms of local discretisation methods used to induce rule terms for continuous data. The paper then proposes a new algorithm of the Prism family based on a combination of Gauss Probability Density Distribution (GPDD), InterQuartile Range (IQR) and data transformation methods. This new rule-based algorithm, termed G-Rules-IQR, is evaluated empirically and outperforms other members of the Prism family in execution time, accuracy and tentative accuracy.
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