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  4. Detecting Depression in Social Media : An Emotional Analysis Approach

Detecting Depression in Social Media : An Emotional Analysis Approach

File(s)
Kim_cornell_0058O_10518.pdf (362.12 KB)
Permanent Link(s)
https://doi.org/10.7298/n9jz-1378
https://hdl.handle.net/1813/67287
Collections
Cornell Theses and Dissertations
Author
Kim, Seunghyun
Abstract

Depression has been an ongoing mental health issue that has been affecting a wide range of humanity, particularly the young adults. To address and observe the more general public in a natural habitat, social media is examined for constructing a system to accurately detect depression. Despite the assiduous effort to construct a novel mechanism to detect depression from social media, behavioral approaches had underlying problems for users with a short activity span. To address this problem, emotion analysis was used as a tool to extract the emotion(s) of a user’s post to identify those with depression. Via machine learning techniques to construct an emotion classifier which in turn creates emotion embeddings for a binary classifier, this study proposes a pipeline structure to identify reddit posts from the depression subreddit. The model yielded promising results, introducing emotional analysis as a novel methodology in assessing mental health within social media.

Date Issued
2019-05-30
Keywords
depression
•
Computer science
•
Social Media
•
Emotional Analysis
Committee Chair
Cardie, Claire T.
Committee Member
Bunea, Florentina
Degree Discipline
Computer Science
Degree Name
M.S., Computer Science
Degree Level
Master of Science
Type
dissertation or thesis

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