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Efficient genetic algorithm for feature selection for early time series classification

机译:用于早期时间序列分类的高效遗传算法用于特征选择

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This paper addresses a multi-objective feature selection problem for early time series classification. Previous research has focused on how many features to consider for a classifier, but has not considered the starting time of classification, which is also important for early classification. Motivated by this, we developed a mathematical model for which the objectives are to maximize classification performance and minimize the starting time and execution time of classification. We designed an efficient genetic algorithm to generate solutions with high probability. In experiment, we compared the proposed algorithm and general genetic algorithm under various experimental settings. From the experiment, we verified that the proposed algorithm can find a better feature set in terms of classification performance, starting time and execution time of classification than feature set found by general genetic algorithm.
机译:本文解决了用于早期时间序列分类的多目标特征选择问题。先前的研究集中在为分类器考虑多少个特征上,但是没有考虑分类的开始时间,这对于早期分类也很重要。因此,我们开发了一个数学模型,其目标是最大程度地提高分类性能,并最大程度地减少分类的开始时间和执行时间。我们设计了一种高效的遗传算法来生成高概率的解。在实验中,我们在各种实验设置下比较了所提出的算法和通用遗传算法。通过实验,我们验证了该算法在分类性能,分类开始时间和执行时间方面比常规遗传算法能够找到更好的特征集。

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