WANGWEEDS_HEALTHINF_2020_66_CR.pdf (1.3 MB)
Improving mental health using machine learning to assist humans in the moderation of forum posts
conference contribution
posted on 2023-06-09, 20:32 authored by Dong Wang, Julie WeedsJulie Weeds, Ian ComleyThis work investigates the potential for the application of machine learning and natural language processing technology in an online application designed to help teenagers talk about their mental health issues. Specifically, we investigate whether automatic classification methods can be applied with sufficient accuracy to assist humans in the moderation of posts and replies to an online forum. Using real data from an existing application, we outline the specific problems of lack of data, class imbalance and multiple rejection reasons. We investigate a number of machine learning architectures including a state-of-the-art transfer learning architecture, BERT, which has performed well elsewhere despite limited training data, due to its use of pre-training on a very large general corpus. Evaluating on real data, we demonstrate that further large performance gains can be made through the use of automatic data augmentation techniques (synonym replacement, synonym insertion, random swap and random deletion). Using a combination of data augmentation and transfer learning, performance of the automatic classification rivals human performance at the task, thus demonstrating the feasibility of deploying these techniques in a live system.
History
Publication status
- Published
File Version
- Accepted version
Journal
Proceedings of the 13th International Joint Conference on Biomedical Engineering Systems and TechnologiesISSN
2184-4305Publisher
Science and Technology PublicationsExternal DOI
Volume
5Page range
187-197Event name
Health InformaticsEvent location
Valletta, MaltaEvent type
conferenceEvent date
24-26th February 2020ISBN
9789897583988Department affiliated with
- Informatics Publications
Research groups affiliated with
- Data Science Research Group Publications
Full text available
- Yes
Peer reviewed?
- Yes