IRMMSDASJul 26, 2020

Tag2Risk: Harnessing Social Music Tags for Characterizing Depression Risk

arXiv:2007.13159v15 citations
Originality Incremental advance
AI Analysis

This research addresses early detection of depression risk for mental health applications, but it is incremental as it builds on existing links between music and internal states.

The study analyzed social music tags from Last.fm users to identify patterns linked to depression risk, finding that users at risk had tags related to sadness and specific genres like neo-psychedelic and dream-pop.

Musical preferences have been considered a mirror of the self. In this age of Big Data, online music streaming services allow us to capture ecologically valid music listening behavior and provide a rich source of information to identify several user-specific aspects. Studies have shown musical engagement to be an indirect representation of internal states including internalized symptomatology and depression. The current study aims at unearthing patterns and trends in the individuals at risk for depression as it manifests in naturally occurring music listening behavior. Mental well-being scores, musical engagement measures, and listening histories of Last.fm users (N=541) were acquired. Social tags associated with each listener's most popular tracks were analyzed to unearth the mood/emotions and genres associated with the users. Results revealed that social tags prevalent in the users at risk for depression were predominantly related to emotions depicting Sadness associated with genre tags representing neo-psychedelic-, avant garde-, dream-pop. This study will open up avenues for an MIR-based approach to characterizing and predicting risk for depression which can be helpful in early detection and additionally provide bases for designing music recommendations accordingly.

Foundations

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

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