作者
Omer Subasi, Sayan Ghosh, Joseph Manzano, Bruce Palmer, Andrés Marquez
发表日期
2024/4/11
期刊
Machine Learning: Science and Technology
卷号
5
期号
2
页码范围
020501
出版商
IOP Publishing
简介
Machine learning 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 …
学术搜索中的文章
O Subasi, S Ghosh, J Manzano, B Palmer, A Marquez - Machine Learning: Science and Technology, 2024