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Constructing ensembles of symbolic classifiers

机译:构造符号分类器的合奏

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Learning algorithms are an integral part of the data mining (DM) process. However, DM deals with a large amount of data and most learning algorithms do not operate in massive datasets. A technique often used to ease this problem is related to data sampling and the construction of ensembles of classifiers. Several methods to construct such ensembles have been proposed. However, these methods often lack an explanation facility. This paper proposes methods to construct ensembles of symbolic classifiers. These ensembles can be further explored in order to explain their decisions to the user. These methods were implemented in the ELE system, also described in this work. Experimental results in two out of three datasets show improvement over all base-classifiers. Moreover, according to the obtained results, methods based on single rule classification might be used to improve the explanation facility of ensembles.
机译:学习算法是数据挖掘(DM)过程的一个组成部分。但是,DM处理大量数据和大多数学习算法不在大规模数据集中运行。经常用于缓解此问题的技术与数据采样和分类器集合的构建有关。已经提出了几种构建这种合奏的方法。但是,这些方法通常缺乏解释设施。本文提出了构建符号分类器的合奏的方法。这些合奏可以进一步探索,以便向用户解释他们的决定。这些方法在ELE系统中实施,也在这项工作中描述。在三个数据集中的两种实验结果显示出所有基础分类器的改进。此外,根据所获得的结果,可以使用基于单规则分类的方法来改进合奏的解释设施。

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