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Analysis of Mental Health During the Covid-19 Pandemic in Indonesia using Twitter Data | IEEE Conference Publication | IEEE Xplore

Analysis of Mental Health During the Covid-19 Pandemic in Indonesia using Twitter Data


Abstract:

Covid-19, which has infected Indonesia, has had a significant impact on Indonesia in various sectors and has a direct psychological impact on the entire community, such a...Show More

Abstract:

Covid-19, which has infected Indonesia, has had a significant impact on Indonesia in various sectors and has a direct psychological impact on the entire community, such as a fear attack, anxiety, stress, and depression. Not being able to meet friends, study and work from home, the existence of the PSBB policy, the large number of news and hoaxes about Covid-19, and worrying about being infected are some of the factors that can cause psychological problems. At this time, social media was helpful to get the latest information, share various content, tell stories, and express opinions or thoughts. This study will conduct a classification and analysis related to mental health during the pandemic using tweets shared by Indonesian users and then compare the algorithms, which are Naïve Bayes, SVM, Logistic Regression, and Random Forest. From the labeling process, 612 tweets indicate psychological problems, and 168 tweets indicate anxiety problems. This study succeeded in building two classification models to detect psychological problems and anxiety problems. Model 1 was built using the Naïve Bayes because Naïve Bayes algorithm has the highest results of all evaluations with 74.36% accuracy, 74.28% precision, 74.35% recall, and 74.30% f1-score. While model 2 was built using SVM algorithm because SVM has the highest score for accuracy with 76.42%, precision with 74.91%, and f1-score with 75.19%.
Date of Conference: 29-30 September 2021
Date Added to IEEE Xplore: 16 December 2021
ISBN Information:
Conference Location: Bandung, Indonesia
References is not available for this document.

I. Introduction

Coronavirus disease-19 (Covid-19) is a respiratory tract infection caused by a new type of coronavirus, namely 2019 novel coronavirus (2019-nCov) [1], has infected more than 200 countries in the world, including Indonesia [2]. This virus has had a significant impact on Indonesia in various sectors and also has a direct impact on the physical, social, and psychological of entire people [3]. The fear attack, anxiety, stress, and depression [4], [5], [6] are a few examples of psychological impacts that can be felt by people due to the presence of Covid-19.

Select All
1.
A. E. Gorbalenya et al., Severe acute respiratory syndrome-related coronavirus: The species and its viruses – a statement of the Coronavirus Study Group, 2020.
2.
COVID-19 weekly epidemiological update 22 December 2020, 2020.
3.
H. D. Windarwati, W. Oktaviana, I. Mukarromah, N. A. L. Ati, A. F. Rizzal and A. D. Sulaksono, "In the middle of the COVID-19 outbreak: Early practical guidelines for psychosocial aspects of COVID-19 in East Java Indonesia", Psychiatry Res., vol. 293, pp. 113395, 2020, [online] Available: https://doi.org/10.1016/j.psychres.2020.113395.
4.
M. Akat and K. Karataş, "Psychological effects of COVID-19 pandemic on society and its reflections on education", Electron. Turkish Stud., vol. 15, no. 4, 2020.
5.
K. Kontoangelos, M. Economou and C. Papageorgiou, "Mental health effects of COVID-19 pandemia: a review of clinical and psychological traits", Psychiatry Investig., vol. 17, no. 6, pp. 491, 2020.
6.
I. Ifdil, R. P. Fadli, K. Suranata, N. Zola and Z. Ardi, "Online mental health services in Indonesia during the COVID-19 outbreak", Asian J. Psychiatr., 2020.
7.
S. Winurini, "Mental health problems due to the Covid-19 pandemic [Permasalahan kesehatan mental akibat pandemi Covid-19]", Info Singkat Kaji. Singk. terhadap Isu Aktual dan Strateg., pp. 13-18, 2020.
8.
D. Ramdhani, "Anxiety disorder patients at West Java psychiatric hospital increase during the pandemic [Pasien gangguan cemas di RSJ Jabar meningkat selama pandemi]", Kompas.com, Jan. 2020, [online] Available: https://bandung.kompas.com/read/2020/10/08/09265741/pasiengangguan-cemas-di-rsj-jabar-meningkat-selama-pandemi.
9.
"Mental health services disrupted in 93% of countries during COVID-19 pandemic: WHO", The Jakarta Post, 2020, [online] Available: https://www.thejakartapost.com/news/2020/10/08/mental-health-services-disrupted-in-93-of-countries-during-covid-19-pandemic-who.html.
10.
J. Xiong et al., "Impact of COVID-19 pandemic on mental health in the general population: A systematic review", J. Affect. Disord., vol. 277, pp. 55-64, 2020, [online] Available: https://doi.org/10.1016/j.jad.2020.08.001.
11.
S. Mukhtar and W. Rana, "COVID-19 and individuals with mental illness in psychiatric facilities", Psychiatry Res., 2020.
12.
"Mental health and psychosocial considerations during the COVID-19 outbreak 18 March 2020", World Health Organization Geneva PP - Geneva, [online] Available: https://apps.who.int/iris/handle/10665/331490.
13.
A. Casero-Ripolles, "Impact of Covid-19 on the media system. Communicative and democratic consequences of news consumption during the outbreak", El Prof. la Inf., vol. 29, no. 2, 2020, [online] Available: http://dx.doi.org/10.3145/epi.2020.mar.23.
14.
S. T. Ahmed, "Managing news overload (MNO): The COVID-19 infodemic", Inf., vol. 11, no. 8, 2020.
15.
J. Clement, "Countries with most Twitter users 2020", Statista, 2020.
16.
D. B. Victor, J. Kawsher, M. S. Labib and S. Latif, "Machine learning techniques for depression analysis on social media-case study on Bengali community", 2020 4th International Conference on Electronics Communication and Aerospace Technology (ICECA), pp. 1118-1126, 2020.
17.
M. Faryal, M. Iqbal and H. Tahreem, "Mental health diseases analysis on Twitter using machine learning", iKSP J. Comput. Sci. Eng., vol. 1, no. 2, pp. 16-25, 2021.
18.
M. Deshpande and V. Rao, "Depression detection using emotion artificial intelligence", 2017 International Conference on Intelligent Sustainable Systems (ICISS), pp. 858-862, 2017.
19.
Mental health & COVID-19, 2020, [online] Available: https://www.who.int/teams/mental-health-and-substance-use/covid-19.
20.
R. A. Umasugi, "Malls in Jakarta may be closed when PSBB is re-implemented [Mal di Jakarta kemungkinan ditutup saat PSBB kembali diterapkan]", Kompas.com, Jan. 2020, [online] Available: https://megapolitan.kompas.com/read/2020/09/10/13441011/mal-di-jakarta-kemungkinan-ditutup-saat-psbb-kembali-diterapkan.
21.
"Details of unemployment rates in each region as of August 2020 [Rincian angka pengangguran di setiap daerah per Agustus 2020]", CNN Indonesia, Jan. 2020, [online] Available: https://www.cnnindonesia.com/ekonomi/20201106093653-532-566598/rincian-angka-pengangguran-di-setiap-daerah-peragustus-2020.
22.
A. Bacigalupe and A. Escolar-Pujolar, "The impact of economic crises on social inequalities in health: what do we know so far?", Int. J. Equity Health, vol. 13, no. 1, pp. 52, 2014.
23.
W. Sulistiadi, S. R. Slamet and N. Harmani, "Handling of public stigma on COVID-19 in Indonesian society", Kesmas J. Kesehat. Masy. Nas. (National Public Heal. Journal), 2020.
24.
D. Lu and J. Bouey, "Public Mental health crisis during COVID-19 pandemic China", Emerg. Infect. Dis., vol. 26, no. 7, 2020.
25.
A. Pragholapati, "Mental health in pandemic COVID-19", Available SSRN, vol. 3596311, 2020.
26.
V. Ahuja and M. Shakeel, "Twitter presence of jet airways-deriving customer insights using netnography and wordclouds", Procedia Comput. Sci., vol. 122, pp. 17-24, 2017.
27.
M. Ahlgren, "50 + Twitter statistics & facts for 2021 you should know about", Website Hosting Rating, Jan. 2020, [online] Available: https://www.websitehostingrating.com/twitter-statistics/.
28.
A. Rosen, "Tweeting made easier", Twitter Blog, Jan. 2017, [online] Available: https://blog.twitter.com/official/en_us/topics/product/2017/tweetingmadeeasier.html.
29.
A. M. Kaplan and M. Haenlein, "The early bird catches the news: Nine things you should know about micro-blogging", Bus. Horiz., vol. 54, no. 2, pp. 105-113, 2011.
30.
C. L. Rakshitha and S. Gowrishankar, "Machine learning based analysis of Twitter data to determine a person’s mental health intuitive wellbeing", Int. J. Appl. Eng. Res., vol. 13, no. 21, pp. 14956-14963, 2018.

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References

References is not available for this document.