Robust Feature Selection Using Rough Set-Based Ant-Lion Optimizer for Data Classification

A. Azar, P. K. N. Banu
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引用次数: 2

Abstract

The selection of an algorithm to tackle a certain problem is a vital undertaking that necessitates both time and knowledge. Non-functional needs, such as the size, quality, and nature of the data, must frequently be taken into account. To develop a generalized machine learning model for any domain, the most relevant features must be chosen because noisy and irrelevant characteristics degrade data mining performance. However, the selection of the dominating features is still dependent on the search technique. When there are a high number of input features, stochastic optimization can be applied to the search space. In this research, we investigate the Ant Lion Optimization (ALO), a nature-inspired algorithm that mimics the hunting process of ant lions and is further stimulated to identify the smallest reducts. We also investigate Rough Set based ant lion optimizer for feature selection. The actual results reveal that the antlion-based rough set reduct selects a better feature subset and classifies them more accurately.
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基于粗糙集的抗狮子优化器鲁棒特征选择的数据分类
选择一种算法来解决某个问题是一项重要的工作,需要时间和知识。非功能需求,例如数据的大小、质量和性质,必须经常考虑在内。为了开发任何领域的广义机器学习模型,必须选择最相关的特征,因为噪声和不相关的特征会降低数据挖掘的性能。然而,主导特征的选择仍然依赖于搜索技术。当输入特征数量较多时,可以将随机优化应用到搜索空间中。在这项研究中,我们研究了蚂蚁狮子优化算法(ALO),这是一种模仿蚂蚁狮子狩猎过程的自然启发算法,并进一步刺激以识别最小的减少。我们还研究了基于粗糙集的蚂蚁狮子优化器的特征选择。实际结果表明,基于蚁群的粗糙集约简选择了更好的特征子集,分类更加准确。
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