DASentimental: Detecting depression, anxiety and stress in texts via emotional recall, cognitive networks and machine learning
Asra Fatima, Li Ying, Thomas Hills, Massimo Stella

TL;DR
DASentimental is a semi-supervised machine learning model that analyzes emotional recall sequences to detect depression, anxiety, and stress in texts, leveraging cognitive network science for improved mental health assessment.
Contribution
This study introduces a novel approach combining emotional recall, semantic networks, and neural networks to predict mental health states from text, achieving state-of-the-art results.
Findings
Semantic distances between emotions are key for depression prediction.
The model predicts depression with R=0.7, anxiety with R=0.44, and stress with R=0.52.
Application to suicide notes demonstrates practical utility.
Abstract
Most current affect scales and sentiment analysis on written text focus on quantifying valence (sentiment) -- the most primary dimension of emotion. However, emotions are broader and more complex than valence. Distinguishing negative emotions of similar valence could be important in contexts such as mental health. This project proposes a semi-supervised machine learning model (DASentimental) to extract depression, anxiety and stress from written text. First, we trained the model to spot how sequences of recalled emotion words by individuals correlated with their responses to the Depression Anxiety Stress Scale (DASS-21). Within the framework of cognitive network science, we model every list of recalled emotions as a walk over a networked mental representation of semantic memory, with emotions connected according to free associations in people's memory. Among several tested…
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Taxonomy
TopicsMental Health via Writing · Mental Health Research Topics · Digital Mental Health Interventions
