推文的应力和松弛大小检测

Reshmi Gopalakrishna Pillai, M. Thelwall, Constantin Orasan
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引用次数: 29

摘要

自动检测人类压力和放松的能力对于及时诊断与压力相关的疾病、确保客户对服务的满意度以及管理以人为中心的应用程序(如交通管理)至关重要。传统的方法采用应力测量量表或生理监测,这些方法可能具有侵入性和不方便。相反,社交媒体无处不在的本质可以用来识别压力和放松,因为许多人习惯性地通过社交网站分享他们最近的生活经历。本文介绍了一种改进的方法来检测社交媒体内容中压力和放松的表达。它使用词义向量的词义消歧来提高第一个也是唯一一个基于词典的应力/松弛检测算法tensiststrength的性能。实验结果表明,加入词义消歧后,大大提高了原始张力强度算法的性能。在皮尔逊相关性和精确匹配百分比方面,它也比最先进的机器学习方法表现得更好。我们还提出了一个新的框架,用于识别推文中压力和放松的因果因素,作为未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Stress and Relaxation Magnitudes for Tweets
The ability to automatically detect human stress and relaxation is crucial for timely diagnosing stress-related diseases, ensuring customer satisfaction in services and managing human-centric applications such as traffic management. Traditional methods employ stress-measuring scales or physiological monitoring which may be intrusive and inconvenient. Instead, the ubiquitous nature of the social media can be leveraged to identify stress and relaxation, since many people habitually share their recent life experiences through social networking sites. This paper introduces an improved method to detect expressions of stress and relaxation in social media content. It uses word sense disambiguation by word sense vectors to improve the performance of the first and only lexicon-based stress/relaxation detection algorithm TensiStrength. Experimental results show that incorporating word sense disambiguation substantially improves the performance of the original TensiStrength. It performs better than state-of-the-art machine learning methods too in terms of Pearson correlation and percentage of exact matches. We also propose a novel framework for identifying the causal agents of stress and relaxation in tweets as future work.
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