压力工作条件下语音数据的时效性进化特征选择算法研究

Derry Pramono Adi, Lukman Junaedi, Frismanda, Agustinus Bimo Gumelar, Andreas Agung Kristanto
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引用次数: 1

摘要

最初,机器学习(ML)进步的目标是更快的计算时间和更少的计算资源,而维数的诅咒既增加了计算时间又增加了资源负担。本文介绍了特征选择算法(FSA)在工作负载压力下的语音数据处理中的优势。FSA在减少数据维数和计算时间的同时,保留了语音信息。我们选择使用鲁棒进化算法、和谐搜索、主成分分析、遗传算法、粒子群优化、蚁群优化和蜂群优化,然后使用分层机器学习模型对其进行评估。这些fsa是通过客户服务热线的会话工作量压力数据来探索的,该热线每天都有投诉,这些投诉会引发谈话压力。此外,我们精确地使用了223个基于声学的特征。使用随机森林,我们的评估结果表明,计算时间比使用原始223个特征提高了3.6个。使用支持向量机的评估以0.001秒的计算时间打破了记录。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Time-efficient Evolutionary-based Feature Selection Algorithms for Speech Data under Stressful Work Condition
Initially, the goal of Machine Learning (ML) advancements is faster computation time and lower computation resources, while the curse of dimensionality burdens both computation time and resource. This paper describes the benefits of the Feature Selection Algorithms (FSA) for speech data under workload stress. FSA contributes to reducing both data dimension and computation time and simultaneously retains the speech information. We chose to use the robust Evolutionary Algorithm, Harmony Search, Principal Component Analysis, Genetic Algorithm, Particle Swarm Optimization, Ant Colony Optimization, and Bee Colony Optimization, which are then to be evaluated using the hierarchical machine learning models. These FSAs are explored with the conversational workload stress data of a Customer Service hotline, which has daily complaints that trigger stress in speaking. Furthermore, we employed precisely 223 acousticbased features. Using Random Forest, our evaluation result showed computation time had improved 3.6 faster than the original 223 features employed. Evaluation using Support Vector Machine beat the record with 0.001 seconds of computation time.
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