FSDEM:特征选择动态评估指标

Muhammad Rajabinasab, Anton D. Lautrup, Tobias Hyrup, Arthur Zimek
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引用次数: 0

摘要

对于所有领域的翔实实验来说,富有表现力的评价指标都是不可或缺的。虽然在某些领域已经建立了多个指标,但在其他领域,例如特征选择,却只能找到间接的或有限的评价指标。在本文中,我们提出了一种新的评估指标,以解决前人的几个问题,并对特征选择算法进行灵活可靠的评估。所提出的指标是一种动态指标,具有两个特性,可用于评估特征选择算法的性能和稳定性。我们进行了多次实证实验,以说明所提指标在成功评估特征选择算法中的应用。我们还进行了比较和分析,以说明特征选择算法评估所涉及的不同方面。结果表明,所提出的度量标准能够成功地完成特征选择算法的评估任务。本文是已被 SISAP 2024 接收的论文的扩展版。
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FSDEM: Feature Selection Dynamic Evaluation Metric
Expressive evaluation metrics are indispensable for informative experiments in all areas, and while several metrics are established in some areas, in others, such as feature selection, only indirect or otherwise limited evaluation metrics are found. In this paper, we propose a novel evaluation metric to address several problems of its predecessors and allow for flexible and reliable evaluation of feature selection algorithms. The proposed metric is a dynamic metric with two properties that can be used to evaluate both the performance and the stability of a feature selection algorithm. We conduct several empirical experiments to illustrate the use of the proposed metric in the successful evaluation of feature selection algorithms. We also provide a comparison and analysis to show the different aspects involved in the evaluation of the feature selection algorithms. The results indicate that the proposed metric is successful in carrying out the evaluation task for feature selection algorithms. This paper is an extended version of a paper accepted at SISAP 2024.
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