IRLGJul 7, 2022

Towards Knowledge-based Mining of Mental Disorder Patterns from Textual Data

arXiv:2207.06254v1h-index: 3
Originality Incremental advance
AI Analysis

This work addresses the time-consuming and expensive need for hand-labelled training sets in mental health disorder identification, offering a domain-specific solution for researchers and clinicians.

The paper tackles the challenge of identifying mental disorder patterns from textual data by leveraging domain knowledge to build a Knowledge Base (KB) for generating training data, which significantly improves result quality in detecting major depressive disorder symptoms from social media content.

Mental health disorders may cause severe consequences on all the countries' economies and health. For example, the impacts of the COVID-19 pandemic, such as isolation and travel ban, can make us feel depressed. Identifying early signs of mental health disorders is vital. For example, depression may increase an individual's risk of suicide. The state-of-the-art research in identifying mental disorder patterns from textual data, uses hand-labelled training sets, especially when a domain expert's knowledge is required to analyse various symptoms. This task could be time-consuming and expensive. To address this challenge, in this paper, we study and analyse the various clinical and non-clinical approaches to identifying mental health disorders. We leverage the domain knowledge and expertise in cognitive science to build a domain-specific Knowledge Base (KB) for the mental health disorder concepts and patterns. We present a weaker form of supervision by facilitating the generating of training data from a domain-specific Knowledge Base (KB). We adopt a typical scenario for analysing social media to identify major depressive disorder symptoms from the textual content generated by social users. We use this scenario to evaluate how our knowledge-based approach significantly improves the quality of results.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes