TensiStrength: Stress and relaxation magnitude detection for social media texts

07/01/2016
by   Mike Thelwall, et al.
0

Computer systems need to be able to react to stress in order to perform optimally on some tasks. This article describes TensiStrength, a system to detect the strength of stress and relaxation expressed in social media text messages. TensiStrength uses a lexical approach and a set of rules to detect direct and indirect expressions of stress or relaxation, particularly in the context of transportation. It is slightly more effective than a comparable sentiment analysis program, although their similar performances occur despite differences on almost half of the tweets gathered. The effectiveness of TensiStrength depends on the nature of the tweets classified, with tweets that are rich in stress-related terms being particularly problematic. Although generic machine learning methods can give better performance than TensiStrength overall, they exploit topic-related terms in a way that may be undesirable in practical applications and that may not work as well in more focused contexts. In conclusion, TensiStrength and generic machine learning approaches work well enough to be practical choices for intelligent applications that need to take advantage of stress information, and the decision about which to use depends on the nature of the texts analysed and the purpose of the task.

READ FULL TEXT
research
11/21/2019

How Do You #relax When You're #stressed? A Content Analysis and Infodemiology Study of Stress-Related Tweets

Background: Stress is a contributing factor to many major health problem...
research
05/05/2016

Modeling Rich Contexts for Sentiment Classification with LSTM

Sentiment analysis on social media data such as tweets and weibo has bec...
research
06/19/2021

Hybrid approach to detecting symptoms of depression in social media entries

Sentiment and lexical analyses are widely used to detect depression or a...
research
07/25/2020

Duluth at SemEval-2019 Task 6: Lexical Approaches to Identify and Categorize Offensive Tweets

This paper describes the Duluth systems that participated in SemEval–201...
research
02/25/2021

Sentiment Analysis of Persian-English Code-mixed Texts

The rapid production of data on the internet and the need to understand ...
research
10/19/2021

Social Media Reveals Urban-Rural Differences in Stress across China

Modeling differential stress expressions in urban and rural regions in C...

Please sign up or login with your details

Forgot password? Click here to reset