Analysis and Benchmarking of Feature Reduction for Classification Under Computational Constraints

Omer Subasi, Sayan Ghosh, Joseph Manzano, Bruce Palmer, Andrés Marquez
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Abstract

Machine learning (ML) is most often expensive in terms of computational and memory costs due to training with large volumes of data. Current computational limitations of many computing systems motivate us to investigate practical approaches, such as feature selection and reduction, to reduce the time and memory costs while not sacrificing the accuracy of classification algorithms. In this work, we carefully review, analyze, and identify the feature reduction methods that have low costs/overheads in terms of time and memory. Then, we evaluate the identified reduction methods in terms of their impact on the accuracy, precision, time, and memory costs of traditional classification algorithms. Specifically, we focus on the least resource intensive feature reduction methods that are available in Scikit-Learn library. Since our goal is to identify the best performing low-cost reduction methods, we do not consider complex expensive reduction algorithms in this study. In our evaluation, we find that at quadratic-scale feature reduction, the classification algorithms achieve the best trade-off among competitive performance metrics. Results show that the overall training times are reduced 61%, the model sizes are reduced 6×, and accuracy scores increase 25% compared to the baselines on average with quadratic scale reduction.
计算约束条件下的分类特征缩减分析与基准测试
机器学习(ML)通常需要使用大量数据进行训练,因此计算成本和内存成本都很高。目前许多计算系统的计算能力有限,这促使我们研究实用的方法,如特征选择和缩减,以减少时间和内存成本,同时不牺牲分类算法的准确性。在这项工作中,我们仔细研究、分析并确定了在时间和内存方面成本/开销较低的特征缩减方法。然后,我们从对传统分类算法的准确度、精确度、时间和内存成本的影响角度,对已确定的缩减方法进行评估。具体来说,我们将重点放在 Scikit-Learn 库中资源消耗最小的特征缩减方法上。由于我们的目标是找出性能最佳的低成本缩减方法,因此本研究不考虑复杂昂贵的缩减算法。在评估中,我们发现在二次尺度特征缩减时,分类算法在各种性能指标之间实现了最佳权衡。结果表明,与基线相比,二次尺度缩减后的整体训练时间减少了 61%,模型大小减少了 6 倍,准确率平均提高了 25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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