INTERNATIONAL JOURNAL OF SCIENTIFIC DEVELOPMENT AND RESEARCH International Peer Reviewed & Refereed Journals, Open Access Journal ISSN Approved Journal No: 2455-2631 | Impact factor: 8.15 | ESTD Year: 2016
open access , Peer-reviewed, and Refereed Journals, Impact factor 8.15
Depression is a serious mental health issue for people world-wide irrelevant of their ages, genders and races.In this age of modern communication and technology, people feel more comfortable sharing their thoughts in social networking sites (SNS) almost every day. The objective of this paper is to propose a data-analytic based model to detect depression of any human being. In this proposed model data is collected from the users’ posts of popular social media websites: twitter. Depression level of a user has been detected based on his posts in social media. The standard method of detecting depression of a person is a fully structured or a semi-structured interview method (SDI) [1]. These methods need a huge amount of data from the person. Microblogging sites such as twitter and facebook have become so much popular places to express peoples’ activitand thoughts.The data screening from tweets and posts show the manifestation of depressive disorder symptoms of the user. In this research, machine learning is used to process the scrapped data collected from SNS users.Natural Language Processing (NLP), classified using Deep Learning and Naïve Bayes algorithm to detect depression potentially in a more convenient and efficient way.
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Cite Article:
"Deep Learning Based Early Depression Detection Using Social Media", International Journal of Science & Engineering Development Research (www.ijsdr.org), ISSN:2455-2631, Vol.8, Issue 5, page no.2167 - 2170, May-2023, Available :http://www.ijsdr.org/papers/IJSDR2305342.pdf
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Publication Details:
Published Paper ID: IJSDR2305342
Registration ID:206869
Published In: Volume 8 Issue 5, May-2023
DOI (Digital Object Identifier):
Page No: 2167 - 2170
Publisher: IJSDR | www.ijsdr.org
ISSN Number: 2455-2631
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