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A novel multiple rule sets data classification algorithm based on ant colony algorithm

机译:基于蚁群算法的新型多规则集数据分类算法

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Ant colony optimization (ACO) algorithms have been successfully applied in data classification, which aim at discovering a list of classification rules. However, due to the essentially random search in ACO algorithms, the lists of classification rules constructed by ACO-based classification algorithms are not fixed and may be distinctly different even using the same training set. Those differences are generally ignored and some beneficial information cannot be dug from the different data sets, which may lower the predictive accuracy. To overcome this shortcoming, this paper proposes a novel classification rule discovery algorithm based on ACO, named AntMiner(mbc), in which a new model of multiple rule sets is presented to produce multiple lists of rules. Multiple base classifiers are built in AntMiner(mbc), and each base classifier is expected to remedy the weakness of other base classifiers, which can improve the predictive accuracy by exploiting the useful information from various base classifiers. A new heuristic function for ACO is also designed in our algorithm, which considers both of the correlation and coverage for the purpose to avoid deceptive high accuracy. The performance of our algorithm is studied experimentally on 19 publicly available data sets and further compared to several state-of-the-art classification approaches. The experimental results show that the predictive accuracy obtained by our algorithm is statistically higher than that of the compared targets. (C) 2015 Elsevier B.V. All rights reserved.
机译:蚁群优化(ACO)算法已成功应用于数据分类中,旨在发现分类规则列表。但是,由于在ACO算法中本质上是随机搜索,因此基于ACO的分类算法构造的分类规则列表并不固定,即使使用相同的训练集也可能有明显不同。这些差异通常会被忽略,并且一些有益的信息无法从不同的数据集中挖掘出来,这可能会降低预测准确性。为了克服这个缺点,本文提出了一种基于ACO的分类规则发现算法AntMiner(mbc),其中提出了一个新的多个规则集模型来产生多个规则列表。 AntMiner(mbc)中内置了多个基本分类器,并且每个基本分类器都有望弥补其他基本分类器的弱点,这可以通过利用来自各种基本分类器的有用信息来提高预测准确性。我们的算法中还设计了一种新的ACO启发式函数,该函数同时考虑了相关性和覆盖率,目的是避免产生欺骗性的高精度。我们对19种可公开获得的数据集进行了实验研究,并与几种最新的分类方法进行了比较。实验结果表明,我们的算法获得的预测精度在统计学上高于比较目标。 (C)2015 Elsevier B.V.保留所有权利。

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