为提高服务部门的表现而进行的抖动测量

Agnes Jacob, P. Mythili
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引用次数: 0

摘要

在印度这样一个领先的服务型经济中,服务业处于经济活动的中心。竞争激烈的组织现在不仅关注员工的技能和知识,还关注员工在工作上取得成功所需的行为。有情感能力的员工可以有效地应对职业压力,保持心理健康。本研究探讨了前两个共振峰和抖动的范围,以评估英语自然言语中出现的七种常见情绪状态。使用k-means方法将情绪言语分为中性、快乐、惊讶、愤怒、厌恶和悲伤。使用原始抖动对快乐和悲伤进行分类的准确率超过65%,但对其他情绪的准确率较低。在预处理抖动的情况下,总体分类准确率为72%。实验研究了6位女性的1664个英语语音。对于来自不同背景的员工来说,这是一种简单、有趣、更主动的方法,可以让他们意识到自己的沟通风格,以及同事和客户的沟通风格,因此对社会有益。这是一种便宜的方法,因为它只需要一台电脑。由于不需要复杂的软件或信号处理知识,因此易于分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jitter measurements for performance enhancement in the service sector
In a leading service economy like India, services lie at the very center of economic activity. Competitive organizations now look not only at the skills and knowledge, but also at the behavior required by an employee to be successful on the job. Emotionally competent employees can effectively deal with occupational stress and maintain psychological well-being. This study explores the scope of the first two formants and jitter to assess seven common emotional states present in the natural speech in English. The k-means method was used to classify emotional speech as neutral, happy, surprised, angry, disgusted and sad. The accuracy of classification obtained using raw jitter was more than 65 percent for happy and sad but less accurate for the others. The overall classification accuracy was 72% in the case of preprocessed jitter. The experimental study was done on 1664 English utterances of 6 females. This is a simple, interesting and more proactive method for employees from varied backgrounds to become aware of their own communication styles as well as that of their colleagues' and customers and is therefore socially beneficial. It is a cheap method also as it requires only a computer. Since knowledge of sophisticated software or signal processing is not necessary, it is easy to analyze.
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