##plugins.themes.bootstrap3.article.main##

The goal of this study was to examine the level of efficiency of fixed broadband service providers as a measure of the research model's input as influenced by internal and external factors. Non-parametric approaches, Data Envelopment Analysis (DEA) models, and Path Analysis were used in this study to assess the efficiency of Fixed Broadband Service Providers. The reason for the study is that the ability to generate income to obtain maximum profit in order to be in a strategic position for business competitiveness is a key component to consider for the Fixed Broadband Service Provider industry in order to ensure business continuity. The research findings indicate that the input variable has an impact on the output variable. For the 2015 – 2020 period, the input size in the form of Total Assets has an impact on the Cost Flow Investing Act, total subscribers, and fiber optic backbone network, all of which affect the efficiency of Fixed Broadband Service Providers as many as 5 (five) Big Providers (The Big Five). External factors such as Customer Price Index (CPI) and Interest Rates, on the other hand, have a favorable impact on Operator Efficiency.

Downloads

Download data is not yet available.

References

  1. Accounting Standar AS 3. Retirieved from: https://www.mca.gov.in/Ministry/notification/pdf/AS_3.pdf.
     Google Scholar
  2. Almenteros, A. (2020). Gradual Yet Steady Broadband Groeth Awaits Emerging Markets in Southeast Asia. S&P Global Market Inteligence. Okla Speedtest Global Index.10.
     Google Scholar
  3. Almenteros, A. (2020). Southeast Asian Broadband Providers Report Varying Performance Amid Covid-19. S&P Global Market Inteligence. Okla Speedtest Global Index. 11.
     Google Scholar
  4. Bambang Riyanto. 2013. Dasar-Dasar Pembelanjaan Perusahaan. Edisi Keempat. BPFE-Yogyakarta. Yogyakarta.
     Google Scholar
  5. BCCS. (2019). What is a Fiber Optic Backbone Network? December 11th. 2019. Retrieved From: https://www.bcsconsultants.com/2019/12/what-is-a-fiber-optic-backbone-network/.
     Google Scholar
  6. Chen, T.Y. Chen, C.B. & Peng, S.Y. (2008). Firm operation performance analysis using data envelopment analysis and balanced scorecard: A case study of a credit cooperative bank. International Journal of Productivity and Performance Management, 57(7). 523-539.
     Google Scholar
  7. Cooper, W.W. Seiford, L.M. & Tone, K. (2006). Data Envelopment Analysis: A Comprehensive Text with Models. Applications. References and DEA-Solver Software. 2nd ed. New York: Springer.
     Google Scholar
  8. Devaki. (2020). Analysis of Financial Pattern of Selected
     Google Scholar
  9. Telecommunication Companies in India. Indian Journal of Applied Research, 10(1). 13-14.
     Google Scholar
  10. Diskaya, F.. Senol, E. & Nazife, O. (2011). Measuring the Technical Efficiency of Telecommunication Sector within Global Crisis: Comparison of G8 Countries and Turkey. 7th International Strategic Management Conference. Procedia Social and Behavioral Sciences, 24 (2011) 206–218.
     Google Scholar
  11. Shankhdhar, G. (2021). The Study of Financial Performance of Selected Companies in Telecom Sector. European Journal of Molecular & Clinical Medicine, 08(02). 1913-1927.
     Google Scholar
  12. Hu, J. L,. Hsu, H. H., Hsiao, C., & Tsao, H. Y. (2018). Is mobile jumping more efficient? Evidence from major Asia-Pacific telecommunications firms. Asia Pacific Management Review, 24(2). 190-199.
     Google Scholar
  13. Hung, S. W. & Lu, W. M. (2007). A comparative study of the performance measurement in global telecom operators. Total Quality Management and Business Excellence, 18(10). 1117–1132.
     Google Scholar
  14. Kayisire, D. & Wei. J. (2016). ICT adoption and usage in Africa: Towards an efficiency assessment. Information Technology for Development, 22(4). 630-653.
     Google Scholar
  15. Kenton, W. (2021). Cash Flow from Investing Activities. Retrieved From: https://www.investopedia.com/terms/c/cashflowfinvestingactivities.ap
     Google Scholar
  16. Liao, C. H. & González, D. B. (2009). Comparing operational efficiency of mobile operators in Brazil. Russia. India and China. China & World Economy, 17(5). 104-120.
     Google Scholar
  17. Masson, S., Jain, R., Ganesh, N. M., & George, S. A. (2016). Operational efficiency and service delivery performance: A comparative analysis of Indian telecom service providers. Benchmarking, 23(4). 893–915.
     Google Scholar
  18. Ministry of Communication and Information (Kemkominfo). (2021). Fixed Broadband Service Operation Market Review. Directorate of Telecommunications. June 2021.
     Google Scholar
  19. Mokhtar, H.S.A., Abdullah, N., & Alhabshi, S.M. (2008). Efficiency and competition of Islamic banking in Malaysia. Humanomics, 24(1). 28-48.
     Google Scholar
  20. Mostafa, M.M. (2007). Modeling the efficiency of GCC banks: A data envelopment analysis approach. International Journal of Productivity and Performance Management, 56(7). 623-643.
     Google Scholar
  21. OECD Data. 2021.Fixed broadband subscriptions. Retrieved Form: .https://data.oecd.org/broadband/fixed-broadband-subscriptions.htm
     Google Scholar
  22. Othman, F. M., Mohd-Zamil, N. A., Rasid, S. Z. A., Vakilbashi, A. & Mokhber, M. (2016). Data Envelopment Analysis: A Tool of Measuring Efficiency in Banking Sector. International Journal of Economics and Financial Issues, 6(3). 911-916.
     Google Scholar
  23. Pentzaropoulos, G. C. & Giokas,. D. I. (2002). Comparing the operational efficiency of the main European telecommunications organizations: A quantitative analysis. Telecommunications Policy. 26(11). 595–606.
     Google Scholar
  24. Ruiz, C. F., Bonilla, R., Chavarro, D., Orozco, L. A., Zarama, R. & Polanco, X. (2010). Efficiency measurement of research groups using Data Envelopment Analysis and Bayesian networks. Scientometrics, 83(3). 711–721.
     Google Scholar
  25. Reddy, M. B.; Bielov, C., Finley, B., Kilkki, K. & Mitomo, H. (2019) Efficiency of Mobile Network Operators from a Data Service Perspective. 30th European Conference of the International Telecommunications Society (ITS): "Towards a Connected and Automated Society". Helsinki. Finland. 16th-19th June. 2019. International Telecommunications Society (ITS). Calgary
     Google Scholar
  26. Riko, H., Gayuh, T. P., & Kristian, W.A.N. (2019). Efficiency Analysis of Telecommunications companies in Southeast Asia using Stochastic Frontier Analysis (SFA) Method. Jurnal Siasat Bisnis, 23(2) 104 -112.
     Google Scholar
  27. Shankhdhar, G. (2021). The Study of Financial Performance of Selected Companies in Telecom Sector. European Journal of Molecular & Clinical Medicine, 08(02).
     Google Scholar
  28. Sherman, H.D. & Zhu, J. (2006). Service Productivity Management: Improving Service Performance Using Data Envelopment Analysis. (DEA). New York: Springer.
     Google Scholar
  29. Suleiman, M.S., Hemed, N.S., & Wei, J. (2017). Evaluation of Telecommunication Companies Using Data Envelopment Analysis: Toward Efficiency of Mobile Telephone Operator in Tanzania. International Journal of e-Education. e-Business. e-Management and e-Learning.
     Google Scholar
  30. The World Bank Group. (2021). Data Bank World Development Indicator. 2021.
     Google Scholar