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MLACO: A multi-label feature selection algorithm based on ant colony optimization

机译:MLACO:基于蚁群优化的多标签特征选择算法

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Nowadays, with emerge the multi-label datasets, the multi-label learning processes attracted interest and increasingly applied to different fields. In such learning processes, unlike single-label learning, instances have more than one class label simultaneously. Also, multi-label learning suffers from the curse of dimensionality, and thus, the feature selection becomes a difficult task. In this paper, we propose a novel multi-label relevance-redundancy feature selection method based on Ant colony optimization (ACO) for the first time, called MLACO. By introducing two unsupervised and supervised heuristic functions, MLACO tries to search in the features space to find the most promising features with the lowest redundancy (unsupervised) and highest relevancy with class labels (supervised) through several iterations. For speeding up the convergence of the algorithm, the normalized cosine similarity between features and class labels have been used as the initial pheromone of each ant. The proposed method does not take into account any learning algorithm, and it can be classified as a filter-based method. We compare the performance of the MLACO against five well-known and state-of-the-art feature selection methods using ML-KNN classifier. The experimental results on several frequently used datasets show the superiority of the MLACO in different multi-label evaluation measures criteria and runtime. (C) 2019 Elsevier B.V. All rights reserved.
机译:如今,随着多标签数据集的出现,多标签学习过程引起了人们的兴趣,并越来越多地应用于不同领域。在这种学习过程中,与单标签学习不同,实例同时具有多个类标签。另外,多标签学习遭受维度的诅咒,因此,特征选择成为困难的任务。在本文中,我们首次提出了一种基于蚁群优化(ACO)的多标签相关性-冗余特征选择方法,称为MLACO。通过引入两个无监督和有监督的启发式函数,MLACO尝试在特征空间中进行搜索,以通过几次迭代找到具有最低冗余(无监督)和相关性最高(具有监督)的最有前途的特征。为了加快算法的收敛速度,特征和类标签之间的标准化余弦相似度已被用作每种蚂蚁的初始信息素。所提出的方法不考虑任何学习算法,并且可以归类为基于滤波器的方法。我们使用ML-KNN分类器将MLACO的性能与五种著名的最新特征选择方法进行了比较。在几个常用数据集上的实验结果表明,MLACO在不同的多标签评估措施标准和运行时间方面具有优越性。 (C)2019 Elsevier B.V.保留所有权利。

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