MentSum: A Resource for Exploring Summarization of Mental Health Online
Posts
- URL: http://arxiv.org/abs/2206.00856v1
- Date: Thu, 2 Jun 2022 03:08:34 GMT
- Title: MentSum: A Resource for Exploring Summarization of Mental Health Online
Posts
- Authors: Sajad Sotudeh, Nazli Goharian, Zachary Young
- Abstract summary: Mental health remains a significant challenge of public health worldwide.
With increasing popularity of online platforms, many use the platforms to share their mental health conditions, express their feelings, and seek help from the community and counselors.
Some of these platforms, such as Reachout, are dedicated forums where the users register to seek help.
Others such as Reddit provide subreddits where the users publicly but anonymously post their mental health distress.
Although posts are of varying length, it is beneficial to provide a short, but informative summary for fast processing by the counselors.
- Score: 19.247804638955785
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mental health remains a significant challenge of public health worldwide.
With increasing popularity of online platforms, many use the platforms to share
their mental health conditions, express their feelings, and seek help from the
community and counselors. Some of these platforms, such as Reachout, are
dedicated forums where the users register to seek help. Others such as Reddit
provide subreddits where the users publicly but anonymously post their mental
health distress. Although posts are of varying length, it is beneficial to
provide a short, but informative summary for fast processing by the counselors.
To facilitate research in summarization of mental health online posts, we
introduce Mental Health Summarization dataset, MentSum, containing over 24k
carefully selected user posts from Reddit, along with their short user-written
summary (called TLDR) in English from 43 mental health subreddits. This
domain-specific dataset could be of interest not only for generating short
summaries on Reddit, but also for generating summaries of posts on the
dedicated mental health forums such as Reachout. We further evaluate both
extractive and abstractive state-of-the-art summarization baselines in terms of
Rouge scores, and finally conduct an in-depth human evaluation study of both
user-written and system-generated summaries, highlighting challenges in this
research.
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