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L150 Thesis_ElizabethSeabrook_Redacted.pdf (14.93 MB)

Emotion Expression on Social Networking Sites: Exploring Mood Profiles and Depression

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thesis
posted on 2018-04-30, 02:34 authored by ELIZABETH MARY SEABROOK
Depression can be detected from the language people use on social media. This thesis explored patterns in the way people express emotion online and how emotion patterns can be used to identify depression from status updates. Language is complex, and the emotion expressed in status updates did not clearly reflect experienced emotion at a daily level. Emotion patterns over time were more informative. For Facebook users, extreme fluctuations in the amount of negative emotion words between consecutive status updates was predictive of depression. However, on Twitter, using a broad range of negative emotion words was protective for mental health.

History

Principal supervisor

Nikki Sue Rickard

Additional supervisor 1

Margaret Kern

Additional supervisor 2

Ben Fulcher

Year of Award

2018

Department, School or Centre

Psychological Sciences

Campus location

Australia

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Medicine Nursing and Health Sciences