Do Investors Prefer State-Owned over Other Listed Pharmaceutical Companies During COVID-19? Evidence from Indonesian Stock Exchange
777SLOT> SLOT GACOR LINK GACOR SLOT777 SLOT88 SLOT ONLINE SLOT DEPOSIT PULSA SLOT TANPA POTONGAN DEWATOTO DARUMASAKTI SETANTOTO HIJAUWIN DEPOSIT 10K HOKI108 INDOTOGEL HUJANTOTO MIMINBET MAGNUMTOGEL MENANGJUDI FORTUNA189 GUDANGHOKI BUMI4D LGOLUX BMX4D ODDIGO BOS868 OVOBET BANDARJUDIINDO MARVEL365 MPOBOS SIJI4D RAJABANDOT NASA4D PRESIDENTOTO BOSSWIN P200M BOLA88 OKE168 MCITYTOTO BIGO88 JASABOLA NUSABET88 DRAGON999 YOYO88 PANEN99 HOLA88 MITO99 MPO88 ABUTOTO SAKTITOTO PROTOGEL NUSANTARA4D JEPANGBET DJARUM4D SOFABET88 PAUSHOKI ZEUS QQVICTORY MAXWIN 1XBET PERCAYA4D MAX389 SBOBET88 SBOBET LAWU4D SLOTMANIA89 CEPEKQQ 99BET LANGIT88 GACOR69 ONEBET303 ARETABET NEWMACAU88 INSTANSLOT BONANZA138 SAYAP123 MURAHQQ OLXTOTO BOM29 AN138 QQ333BET WONGKITO4D TOGAPLAY HOKBET KUNINGTOTO RAJAHOKI899 PUSAT4D RANS88 PANENQQ CAWA4D RAJAASIA88 TAIPAN777 PRESIDENCC VBOLA76 POKER88IDR BOYZTOTO WINSTAR888 DEWAKOIN99 MAXWIN138 VICTORY88 OPABET SLOT39 RAJAWIN SULTAN888 KAISARHOKI NX303 RECEH88 MPO7000 KAPTEN69 POMPA138 BATIK77 MENANGBET888 RAFFIPLAY RAJA365 QQOLE TRISULA88 RENTALQQ 838WIN MONEY138 KUY89 DEMEN303 QQ5796 KING88 SIERA88 JOKERBOLA Y200M BOLAKAWAN SURYA77 DANA77 WAIFITOTO INOVA138 SLOT95 MAMIBET88 JOKISLOT138 SERUBET88 BOMBERWIN LOGOTOTO WIWITOTO SINIWIN KAISARJUDI QQEMASS TUNGAL303 LANANGBET PERESIDENSLOT REPUBLIK77 QQAXIO ATLAS77 ROYALBETKING MIJIT88 ALAM4D MPO000 RUPIAHTOTOLOGIN MARKAS303 MACAU303 LIGALEXUS LIVESOCER88 KUDAEMAS88 RARA4D RTP55 BACANSPORT INDOSLOT303 DANABET88 GARUDA365 BURSA77 SLOT5009 KAVTOTO HOMTOGEL HORAS88 ASIANWIN88 BETWINASIA SEMAR123 TOGEL138 JIN69 CERIABET88 SELOT235 NENEKTOGEL4DD KOITOTOTO DBSLOT88 JORO4D SIMENANG KANTORBOLA KING88JP ABANG88 ULTRA138 LOTTOBOLA BOM89 OLEE388 STARWIN888 BOLATANGKAS88 BATA4D HABANERO188 PAPA4D UBUR88 SBO99 JAWA77 IBOSPORT JAGO138 QQSLOT4D API500P NIAGABET88 PRAMATIK88 PRAMAGTIC88 VARTOTO NICEWIN88 XLBOLA KANTORBOLA77 JPSLOT138 4DSELOT STAKE PILARPLAY TERISULA88 LUDOQQ MESINGG E777 GADING138 RAYA99 TORPEDO99 ROKOKTOTO NEXS303 MUSANGWING TUANSLOT TARUNABOLA ELANGGEM KELAS99 BENUABET SHIO888 AJAKSLOT KITAWIN BOLAKAWA MANTULWD SUHU4D AUTOSPIN88 ZONALUCKYPRO MEXWIN88 SERATUSPASARAN QQQSLOT QQPLAZZA MPOXOX SLOTBONANZA88 WIRASPIN88 PULAUQQ LIGAUTAMA VODKA138 KESAWANBOLA ROGTORO TO88 PAPA303 BAKAR77 HARUM303 JPSLOT89 BOLA389 RAJATOTO888 BATARSLOT I88CAS MUSIK4D BEBASBET88 JAMIN138 SGCWN JETPLAY88 MAJU777 ROQTOTO QQOLLO HAJAR69 3DSBOBET JOGERTOTO GACOR88JP BC88 JVS88 BOOMBERWIN BERIAN888 JOKISELOT138 NADIN4D LINETOGE KUYSLOT LAZABET UNIK138 BETSAGA TOBA787 LOTTOBOLLA ATLAS69 CATUR138 LIGAHOKI89 BATMAN365 BACANSPOR BINGO888 ASIK99 JURAGAN96 MABAR188 1XBETINDO WINTERTOTO BOLAKAEAN KLIKBET777 SW303 LT88SPORT OMEGA88 KOKO888 KEJU777 BIOLABET YOWESTOGEL BOLA11 SLOTSGG NAGALANGIT88 TATA4D PPTOTO KILATBET777 WIN1000X WIN303 JHON4D INULPOKER ANAKPOIN QQ8221 KAKAKDEWA MININBET MONYET86 BAGAS31 ISTANIMPIAN4 A200M VERSACE4D API99 INDOFOL VENASBET JOINDOMINO ZONALUCKY SHOPEE88 MAXBET 666HACKER TOP5TOTO ZEUSGG INIJOKER SPORT365 BERKAHWIN88 SITUSIDN HBI680 LINKTOGEL4D GXP530 BERKAHWIN FREE100 KLASIK77 SUNTOTO CUANBET GBO5000 JET234 WS168 BET365 IBCBET LEXUS365 SCORE88
PDF

Keywords

autoregressive conditional heteroskedasticity model
capital market
COVID-19
stock prices
volatility

Abstract

This study aims to examine the preference of investors of pharmaceutical companies, including companies that produce herbal medicines, listed in the Indonesian Stock Exchange from 2020 to 2021. By using the descriptive analysis method and reviewing the daily stock prices of Indofarma (INAF), Kimia Farma (KAEF), Kalbe Farma (KLBF), and Sido Muncul (SIDO) in that period, it was found that there were unusual stock prices increases for state-owned pharmaceutical enterprises during those times. However, a similar occurrence did not occur with the other listed pharmaceutical companies, including one herbal medicine manufacturer. In comparing stock price movement trends, the researcher used Microsoft Excel software. The researcher also reviewed the monthly stock closing prices and the news published at that moment. It was found that related events and news existed for every significant increase in stock prices, which might influence investors' perceptions. In addition, the researcher also examined the data to test whether there was a correlation between the number of infected cases and stock prices using the ARCH model estimation. It was found that the relationship between both of them was insignificant. The researcher expects that the findings of this research not only will be a discussion topic in academic groups but also will be a reference for capital market investors and the government as the policyholders and controlling shareholders of these state-owned enterprises. Further studies on listed pharmaceutical companies in the capital markets of other countries are needed to complete the findings in this research, which may find different facts due to different policies in handling the COVID-19 pandemic.
https://doi.org/10.56529/mber.v1i1.27
PDF

References

Agresti, A. (2007). An introduction to categorical data analysis (2nd ed.). John Wiley & Sons, Inc.

Al-Hammadany, F.H., & Heshmati, A. (2011). Determinants of internet use in Iraq. International Journal of Communication, 5(23), 1967-1989. https://ijoc.org/index.php/ijoc/article/view/746/670

Alderete, M.V. (2019). Examining the drivers of internet use among the poor: The case of Bahía Blanca city in Argentina. Technology in Society, 59(101179), 1-8. https://doi.org/DOI: 10.1016/j.techsoc.2019.101179

Alifia, U. (2020). COVID-19 is widening Indonesia's education gap. Research on Improving Systems of Education (RISE) Essay. https://rise.smeru.or.id/ en/blog/covid-19-widening-indonesia's-education-gap

Alifia, U.E.A., Barasa, A.R., Bima, L., Pramana, R.P., Revina, S., & Tresnatri, F.A. (2020). Belajar dari rumah: Potret ketimpangan pembelajaran pada masa pandemi COVID-19. Catatan Penelitian Smeru, 1. https://rise.smeru.or.id/ id/publikasi/belajar-dari-rumah-potret-ketimpangan-pembelajaran-pada-masa-pandemi-covid-19

Arkiang, F. (2021). Analisis pembelajaran daring selama pandemi COVID-19 di daerah 3T (Nusa Tenggara Timur). Jurnal Pendidikan, 12(1), 57-64. https://doi.org/http://dx.doi.org/10.31258/jp.12.1.57-64

Badan Pusat Statistik (BPS). (2020). Konsep dan definisi Susenas Maret 2020 (Buku 4). Badan Pusat Statistik (BPS).

Barua, A., Whinston, A.B., & Yin, F. (2000). Value and productivity in the Internet economy. Computer, 33(5), 102-105.

BPS-Statistics Indonesia. (2020). Persentase penduduk miskin Maret 2020 naik menjadi 9,78 persen. https://www.bps.go.id/pressrelease/2020/07/15/ 1744/persentase-penduduk-miskin-maret-2020-naik-menjadi-9-78-persen.html

BPS-Statistics Indonesia. (2021a). Persentase penduduk miskin di daerah tertinggal (Persen), 2018-2020. https://www.bps.go.id/indicator/153/1238/ 1/persentase-penduduk-miskin-di-daerah-tertinggal.html

BPS-Statistics Indonesia. (2021b). Telecommunication statistics in Indonesia, 2020. BPS-Statistics Indonesia. https://www.bps.go.id/publication/2021/ 10/11/e03aca1e6ae93396ee660328/statistik-telekomunikasi-indonesia-2020.html

Chiao, C., & Chiu, C.H. (2018). The mediating effect of ICT usage on the relationship between students' socioeconomic status and achievement. The Asia-Pacific Education Researcher, 27(2), 109-121. https://doi.org/https://doi.org/ 10.1007/s40299-018-0370-9

Cooke, L., & Greenwood, H. (2008). Cleaners don't need computers: Bridging the digital divide in the workplace. Aslib Proceedings, 60(2), 143-157.

Cucinotta, D., & Vanelli, M. (2020). WHO declares COVID-19 a pandemic. Acta Biomedica, 91(1), 157-160.

Dabla, A. (2004). The role of information technology policies in promoting social and economic development: The case of the state of Andhra Pradesh, India. The Electronic Journal on Information Systems in Developing Countries, 19(5), 1-21. https://doi.org/DOI: 10.1002/j.1681-4835.2004.tb00126.x

Dahiya, S., Rokanas, L.N., Singh, S., Yang, M., & Peha, J.M. (2021). Lessons from internet use and performance during Covid-19. Journal of Information Policy, 11, 202-221. https://doi.org/https://doi.org/10.5325/jinfopoli.11.2021.0202

DeBell, M., & Chapman, C. (2006). Computer and internet use by students in 2003 (NCES 2006-065; Statistical Analysis Report). https://nces.ed.gov/ pubs2006/2006065.pdf

Elena-Bucea, A., Cruz-Jesus, F., Oliveira, T., & Coelho, P.S. (2021). Assessing the role of age, education, gender and income on the digital divide: Evidence for the European Union. Information Systems Frontiers, 23(4), 1007-1021. https://doi.org/10.1007/s10796-020-10012-9

Eschachasthi, R., Purwa, T., & Cendekia, D.G. (2022). Does Palapa Ring Project infrastructure bridging connectivity and economic activity? In Proceedings of 2021 International Conference on Data Science and Official Statistics (ICDSOS), 418-435. https://doi.org/DOI: https://doi.org/10.34123/icdsos. v2021i1.99

Hargittai, E. (1999). Weaving the Western web: explaining differences in Internet connectivity among OECD countries. Telecommunications Policy, 23(10-11), 701-718. https://doi.org/https://doi.org/10.1016/S0308-5961(99)00050-6

Hoffman, D.L., & Novak, T.P. (1998). Bridging the digital divide: The impact of race on computer access and internet use. https://files.eric.ed.gov/fulltext/ ED421563.pdf

Hosmer, D.W., & Lemeshow, S. (2000). Applied logistic regression (2nd ed.). John Wiley & Sons.

King, G., & Zeng, L. (2003). Logistic regression in rare events data. Journal of Statistical Software, 8, 137-163. https://doi.org/10.18637/jss.v008.i02

Lampropoulos, G., Siakas., K., & Anastasiadis., T. (2019). Internet of things in the context of Industry 4.0: An overview. International Journal of Entrepreneurial Knowledge, Center for International Scientific Research of VSO and VSPP, 7(1), 4-19. https://ideas.repec.org/a/jek/journl/v7y2019i1p4-19.html

Lera-López, F., Billon, M., & Gil, M. (2011). Determinants of internet use in Spain. Economics of Innovation and New Technology, 20(2), 127-152. https://doi.org/https://doi.org/10.1080/10438590903378017

Lindblom, T., & Räsänen, P. (2017). Between class and status? Examining the digital divide in Finland, the United Kingdom, and Greece. The Information Society, 33(3), 147-158. https://doi.org/https://doi.org/10.1080/01972243.2017. 1294124

Lunardon, N., Menardi, G., & Torelli, N. (2014). ROSE: A package for binary imbalanced learning. R Journal, 6(1), 79-89. https://doi.org/10.32614/rj-2014-008

Martin, S.P., & Robinson, J.P. (2007). The income digital divide: Trends and predictions for levels of internet use. Social Problems, 54(1), 1-22. https://doi.org/DOI:10.1525/SP.2007.54.1.1

Martínez-Domínguez, M., & Fierros-González, I. (2022). Determinants of internet use by school-age children: The challenges for Mexico during the COVID-19 pandemic. Telecommunications Policy, 46(1)(102241), 1-18. https://doi.org/https://doi.org/ 10.1016/j.telpol.2021.102241

Middleton, K.L., & Chambers, V. (2010). Approaching digital equity: Is wifi the new leveler? Information Technology and People, 23(1), 4-22. https://doi.org/DOI: 10.1108/09593841011022528

Ministry of Education, Culture, Research, and T. (2017). Pentujuk pelaksanaan program Indonesia pintar the 2017. https://psma.kemdikbud.go.id/data/files/ Petunjuk Pelaksanaan Program Indonesia Pintar th 2017.pdf

Mubarak, F., Suomi, R., & Kantola, S-P. (2020). Confirming the links between socio-economic variables and digitalization worldwide: The unsettled debate on digital divide. Journal of Information, Communication and Ethics in Society, 18(3), 415-430. https://doi.org/https://doi.org/10.1108/JICES-02-2019-0021

Nakagawa, M., Oura, A., & Sugimoto, Y. (2022). Under-and over-investment in education: The role of locked-in fertility. Journal of Population Economics, 35(2), 755-784. https://doi.org/https://doi.org/10.1007/s00148-021-00823-8

Noce, A.A., & McKeown, L. (2008). A new benchmark for internet use: A logistic modeling of factors influencing internet use in Canada, 2005. Government Information Quarterly, 25(3), 462-476. https://doi.org/DOI: 10.1016/j.giq. 2007.04.006

Pénard, T., Poussing, N., Zomo Yebe, G., & Ella, N. (2012). Comparing the determinants of internet and cell phone use in Africa: Evidence from Gabon. Communications & Strategies, 86, 65-83. https://econpapers.repec.org/article/idtjournl/cs8603.htm

Pick, J.B., & Nishida, T. (2015). Digital divides in the world and its regions: A spatial and multivariate analysis of technological utilization. Technological Forecasting and Social Change, 91, 1-17. https://doi.org/https://doi.org/10. 1016/j.techfore.2013.12.026

Purwa, T., & Cendekia, D.G. (2021). Mapping the potential use of ICT for distance learning during Covid-19 : Demand and supply-side approach. 63rd ISI World Statistics Congress 2021, 1, 77-80. https://www.isi-web.org/files/docs/ papers-and-abstracts/23-day1-cps018-mapping-the-potential-use-of-i.pdf

Puspitasari, L., & Ishii, K. (2016). Digital divides and mobile internet in Indonesia: Impact of smartphones. Telematics and Informatics, 33(2), 472-483. https://doi.org/https://doi.org/10.1016/j.tele.2015.11.001

Qomariyah, A.N. (2009). Perilaku penggunaan internet pada kalangan remaja di perkotaan [Universitas Airlangga]. https://repository.unair.ac.id/18241/

Rice, R.E., & Katz, J.E. (2003). Comparing internet and mobile phone usage: Digital divides of usage, adoption, and dropouts. Telecommunications Policy, 27(8-9), 597-623. https://doi.org/https://doi.org/10.1016/S0308-5961(03)00068-5

Salas-Eljatib, C., Fuentes-Ramirez, A., Gregoire, T.G., Altamirano, A., & Yaitul, V. (2018). A study on the effects of unbalanced data when fitting logistic regression models in ecology. Ecological Indicators, 85, 502-508. https://doi.org/http://dx.doi.org/10.1016/j.ecolind.2017.10.030

Shavkun, I., Bukharina, L., Dybchynska, Y., & Onyshchenko, O. (2021). Social economic factors of ICT use in education: Lessons from the pandemic. CEUR Workshop Proceedings, 3013, 193-203. http://ceur-ws.org/Vol-3013/20210193.pdf

Singh, V. (2004). Factors associated with household internet use in Canada, 1998-2000 (No. 28034; Agriculture and Rural Working Paper Series). https://doi.org/DOI: 10.22004/ag.econ.28034

Smith, D.T., & Graham, R. (2012). Household expenditures on information and communication technologies: A proposal for a digital practice model. Race, Gender & Class, 19(3-4), 161-178. https://www.jstor.org/stable/43497494

Srivastava, A., & Mohanty, S.K. (2010). Economic proxies, household consumption and health estimates. Economic and Political Weekly, 45(16), 55-63.

Sulisworo, D. (2016). The contribution of the education system quality to improve the nation's competitiveness of Indonesia. Journal of Education and Learning, 10(2), 127-138. https://doi.org/DOI: 10.11591/edulearn.v10i2.3468

Szumilas, M. (2010). Explaining odds ratios. Journal of the Canadian Academy of Child and Adolescent Psychiatry, 19, 227-229. https://doi.org/10. 1136/bmj.c4414

The Government of Kapuas Hulu Regency. (2020). PIP bantu pelajar pada masa pandemic Covid-19. https://info.kapuashulukab.go.id/2020/10/13/pip-bantu-pelajar-pada-masa-pandemi-covid-19/

The Jakarta Post. (2020). Indonesian internet users hit 196 million, still concentrated in Java: APJII survey. https://www.thejakartapost.com/news/ 2020/11/11/indonesian-internet-users-hit-196-million-still-concentrated-in-java-apjii-survey.html

United Nations. (2020). Policy brief: Education during COVID-19 and beyond.

Usluel, Y.K., Aşkar, P., & Baş, T. (2008). A structural equation model for ICT usage in higher education. Journal of Educational Technology & Society, 11(2), 262-273. http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.542.4046&rep=rep1&type=pdf

Van Deursen, A.J., Van Dijk, J.A., & Peter, M. (2015). Increasing inequalities in what we do online: A longitudinal cross sectional analysis of internet activities among the Dutch population (2010 to 2013) over gender, age, education, and income. Telematics and Informatics, 32(2), 259-272. https://doi.org/https://doi.org/ 10.1016/j.tele.2014.09.003

Vodoz, L., Reinhard, M., & Pfister, B.G. (2007). The farmer, the worker and the MP. GeoJournal, 68(1), 83.

Wahid, F. (2007). Using the technology adoption model to analyze internet adoption and use among men and women in Indonesia. The Electronic Journal of Information Systems in Developing Countries, 32(1), 1-8. https://doi.org/DOI: 10.1002/j.1681-4835.2007.tb00225.x

Willoughby, T. (2008). A short-term longitudinal study of internet and computer game use by adolescent boys and girls: Prevalence, frequency of use, and psychosocial predictors. Developmental Psychology, 44(1), 195-204. https://doi.org/DOI: 10.1037/0012-1649.44.1.195

Yu, L. (2011). The divided views of the information and digital divides: A call for integrative theories of information inequality. Journal of Information Science, 37(6), 660-679. https://doi.org/https://doi.org/10.1177/0165551511426246

Zhang, Z. (2016). Model building strategy for logistic regression: Purposeful selection. Annals of Translational Medicine, 4(6), 4-10. https://doi.org/ 10.21037/atm.2016.02.15

Creative Commons License

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.