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Original Study
| Published: September 02, 2024
Uncovering Emotions: Using IoT as a Psychodiagnostics Tool
School of Liberal Studies, CMR University Bangalore Google Scholar More about the auther
Associate Professor, School of Liberal Studies, CMR University Bangalore Google Scholar More about the auther
DIP: 18.01.161.20241203
DOI: 10.25215/1203.161
ABSTRACT
The current study is situated within the intersection of mood-tracking algorithms and draws on expertise in machine learning. Within the mixed-method approach, 40 participants were interviewed using semi-structured interviews and measured against a standardized mental health scale to gauge their moods. The work derives detailed understanding about the complex dynamics between users and these algorithms, describing their role in affecting emotional well-being amidst pervasive digital monitoring. It focuses more on the trends of screen time and how this relates to emotional states. This research strived to bring about not only the psychological implications of merging such algorithms in our digital lives, but also their efficacy in the clinical diagnosis of mental health disorders. This shows that increased screen time is strongly related to a rising susceptibility to major depression disorder and anxiety disorder. This baseline result showed important differences in the level of depression and anxiety among different content engagement groups and thus implies the differential effect of content types on the mental health of users. The study represents the potential of emotional tracking algorithms in detecting mental health problems, underlining the critical intersection of digital engagement and psychological well-being within the context of IoT.
Keywords
IoT, Emotional tracking, Screen time, Emotional states, Digital monitoring, Algorithm, Social media, Instagram, YouTube
This is an Open Access Research distributed under the terms of the Creative Commons Attribution License (www.creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any Medium, provided the original work is properly cited.
© 2024, Susmitha, T.S. & Saranya, T.S.
Received: August 18, 2024; Revision Received: August 29, 2024; Accepted: September 02, 2024
Article Overview
ISSN 2348-5396
ISSN 2349-3429
18.01.161.20241203
10.25215/1203.161
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Published in Volume 12, Issue 3, July-September, 2024