A Recommender System against Social Media Addiction among Adolescents

Social media is a dominant and an ever-expanding platform for social interaction and communication. In its popularity, Social Media Addiction (SMA) emerged as an unintended consequence, affecting a handful of users. Recommender Systems (RS) have been proven to be useful in domains such as health and...

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Main Authors: Bernandino, Adrian Rafael DC., Rodrigo, Karl Dominic L., Chu, Shirley B.
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Published: Animo Repository 2024
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Online Access:https://animorepository.dlsu.edu.ph/conf_shsrescon/2023/paper_csr/5
https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1803/viewcontent/PP_CSR_Bernandino_Rodrigo_Chu___Shirley_Chu.docx.pdf
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:conf_shsrescon-18032024-01-31T01:53:16Z A Recommender System against Social Media Addiction among Adolescents Bernandino, Adrian Rafael DC. Rodrigo, Karl Dominic L. Chu, Shirley B. Social media is a dominant and an ever-expanding platform for social interaction and communication. In its popularity, Social Media Addiction (SMA) emerged as an unintended consequence, affecting a handful of users. Recommender Systems (RS) have been proven to be useful in domains such as health and alcoholism prevention. This study develops a prototype RS against SMA using a user’s personality dimensions and status of SMA. The prototype used a user-based collaborative filtering (CF) approach in recommending items. The prototype will also undergo an evaluation phase but this will not be included in the scope of this paper. The RS prototype accurately predicts an active user’s similarity with his/her neighbors using their scores on TIPI (personality dimensions) and BSMAS (status of SMA) through cosine similarity. Although recommendations show bias towards certain items, they can neither be proven effective nor ineffective without further evaluation such as a User Acceptance Test (UAT). Future prototypes can improve the RS’s information collection phase to reduce inaccuracies. 2024-06-29T07:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/conf_shsrescon/2023/paper_csr/5 https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1803/viewcontent/PP_CSR_Bernandino_Rodrigo_Chu___Shirley_Chu.docx.pdf DLSU Senior High School Research Congress Animo Repository recommender systems social media addiction collaborative filtering personality cosine similarity
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic recommender systems
social media addiction
collaborative filtering
personality
cosine similarity
spellingShingle recommender systems
social media addiction
collaborative filtering
personality
cosine similarity
Bernandino, Adrian Rafael DC.
Rodrigo, Karl Dominic L.
Chu, Shirley B.
A Recommender System against Social Media Addiction among Adolescents
description Social media is a dominant and an ever-expanding platform for social interaction and communication. In its popularity, Social Media Addiction (SMA) emerged as an unintended consequence, affecting a handful of users. Recommender Systems (RS) have been proven to be useful in domains such as health and alcoholism prevention. This study develops a prototype RS against SMA using a user’s personality dimensions and status of SMA. The prototype used a user-based collaborative filtering (CF) approach in recommending items. The prototype will also undergo an evaluation phase but this will not be included in the scope of this paper. The RS prototype accurately predicts an active user’s similarity with his/her neighbors using their scores on TIPI (personality dimensions) and BSMAS (status of SMA) through cosine similarity. Although recommendations show bias towards certain items, they can neither be proven effective nor ineffective without further evaluation such as a User Acceptance Test (UAT). Future prototypes can improve the RS’s information collection phase to reduce inaccuracies.
format text
author Bernandino, Adrian Rafael DC.
Rodrigo, Karl Dominic L.
Chu, Shirley B.
author_facet Bernandino, Adrian Rafael DC.
Rodrigo, Karl Dominic L.
Chu, Shirley B.
author_sort Bernandino, Adrian Rafael DC.
title A Recommender System against Social Media Addiction among Adolescents
title_short A Recommender System against Social Media Addiction among Adolescents
title_full A Recommender System against Social Media Addiction among Adolescents
title_fullStr A Recommender System against Social Media Addiction among Adolescents
title_full_unstemmed A Recommender System against Social Media Addiction among Adolescents
title_sort recommender system against social media addiction among adolescents
publisher Animo Repository
publishDate 2024
url https://animorepository.dlsu.edu.ph/conf_shsrescon/2023/paper_csr/5
https://animorepository.dlsu.edu.ph/context/conf_shsrescon/article/1803/viewcontent/PP_CSR_Bernandino_Rodrigo_Chu___Shirley_Chu.docx.pdf
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