Transfer Learning Approach for Detecting Psychological Distress in Brexit Tweets
Sean-Kelly Palicki, Shereen Fouad, Mariam Adedoyin-Olowe, Zahraa S., Abdallah

TL;DR
This paper presents a transfer learning framework that leverages psychological distress data from tweets to detect mental distress in Brexit-related tweets, introducing a Brexit distress index and achieving moderate accuracy.
Contribution
It introduces a domain adaptation transfer learning approach for detecting psychological distress in political tweets, addressing the lack of explicit mental health indicators.
Findings
Achieved 66% accuracy on source domain
Achieved 62% accuracy on target domain
Introduced a Brexit distress index
Abstract
In 2016, United Kingdom (UK) citizens voted to leave the European Union (EU), which was officially implemented in 2020. During this period, UK residents experienced a great deal of uncertainty around the UK's continued relationship with the EU. Many people have used social media platforms to express their emotions about this critical event. Sentiment analysis has been recently considered as an important tool for detecting mental well-being in Twitter contents. However, detecting the psychological distress status in political-related tweets is a challenging task due to the lack of explicit sentences describing the depressive or anxiety status. To address this problem, this paper leverages a transfer learning approach for sentiment analysis to measure the non-clinical psychological distress status in Brexit tweets. The framework transfers the knowledge learnt from self-reported…
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