带时间和内存约束的硬盘状态分类模型超参数优化

Liliya A. Demidova, A. Filatov
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引用次数: 1

摘要

本文探讨了在时间和内存约束下机器学习分类模型的超参数优化问题,考虑了在学习过程中优化分类模型超参数的几种方法:RandomSearch、GridSearch、TPE、CMA-ES。在硬盘状态分类任务的背景下,测试了这些优化方法的有效性。分类模型的构建和创建基于两种机器学习算法:LSTM和Random Forest。在此基础上对所提分类模型的超参数进行了优化。这些模型是在BackBlaze云存储的公共数据集上训练的。本文给出了分类质量主要指标的估计值,并对优化方法进行了对比分析。实验结果证实了在时间和内存约束下采用优化方法的可行性。特别值得注意的是TPE方法,它在实现分类质量指标最大化的任务方面优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of hyperparameters with constraints on time and memory for the classification model of the hard drives states
This article explores the issues of hyperparameters optimization of machine learning classification models under time and memory constraints A number of methods for optimizing hyperparameters of classification models in the learning process are considered: RandomSearch, GridSearch, TPE, CMA-ES. The effectiveness of these optimization methods is tested in the context of the task of classifying the states of hard disks. The construction and creation of classification models is based on two machine learning algorithms: LSTM and Random Forest. The hyperparameters of the proposed classification models are optimized based on the above methods. The models are trained on a public dataset from BackBlaze cloud storage. The article provides estimates of the values of the main indicators of classification quality, a comparative analysis of optimization methods is carried out. The experimental results confirm the feasibility of using optimization methods under time and memory constraints. Of particular note is the TPE method, which outperformed other methods in achieving the task of maximizing classification quality indicators.
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