一种基于互信息的蚁群分类器

Hang Yu, Xiaoxiao Qian, Yang Yu, Jiujun Cheng, Ying Yu, Shangce Gao
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引用次数: 3

摘要

通过构造IF-THEN规则列表,将传统的蚁群算法成功地应用于数据分类中,不仅具有良好的准确率,而且具有用户可理解性。然而,由于收集到的待分类数据通常包含大量和冗余的特征,进一步提高分类精度的同时减少蚁群算法的计算时间是一个挑战。提出了一种新的基于互信息的混合蚁群分类算法(mr2am +)。首先,采用最大相关最小冗余特征选择方法,选择数据集中信息量最大、判别性最强的属性;然后,我们使用增强的ACO分类器(即AM+)进行分类。实验结果表明,本文提出的mr2AM+在准确率和模型大小方面优于其他7种相关分类算法。
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A novel mutual information based ant colony classifier
By constructing a list of IF-THEN rules, the traditional ant colony optimization (ACO) has been successfully applied on data classification with not only a promising accuracy but also a user comprehensibility. However, as the collected data to be classified usually contain large volumes and redundant features, it is challenging to further improve the classification accuracy and meanwhile reduce the computational time for ACO. This paper proposes a novel hybrid mutual information based ant colony algorithm (mr2 AM+) for classification. First, a maximum relevance minimum redundancy feature selection method is used to select the most informative and discriminative attributes in a dataset. Then, we use the enhanced ACO classifier (i.e., AM+) to perform the classification. Experimental results show that the proposed mr2AM+ outperforms other seven state-of-art related classification algorithms in terms of accuracy and the size of model.
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