Impediment in Adaptation of Algorithm Trading: A Case of Frontier Stock Exchange
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Keywords

Trading
Algorithm
Markets
Financial
Stock
Exchange

How to Cite

Rahat, U., Siddiqui, A., Pervez, K. ., & Hasan, M. . (2023). Impediment in Adaptation of Algorithm Trading: A Case of Frontier Stock Exchange. KIET Journal of Computing and Information Sciences, 6(2), 67-84. https://doi.org/10.51153/kjcis.v6i2.192

Abstract

The global financial markets have been significantly affected by the rapid change in technology. The study is an attempt to get to know the barriers to not adopting algorithmic trading in conventional stock exchanges. This research aims to plan and analytically proposed a model for explaining the reasons why frontier stock exchange traders and investors are hesitant to adopt algorithmic trading as a tool. The research includes variables; Lack of awareness, Trust, Lack of Government interest, unemployment, and unnecessary investment, which were extracted from previously available literature based on the theory of reason and technology acceptance model (TAM). A sample of 50 traders/investors from Pakistan stock markets was taken by using convenience sampling. Data was collected through a questionnaire and analyzed using correlation and linear regression techniques. The results show trust factor is the biggest hurdle in implementing Algorithm Trading which means countries like Pakistan which are following conventional methods for trading in stock markets have great doubts about the efficiency of Algorithm base trading because of the less human interaction and dependency on machines. Fear of miscalculation and the inexperience of data engineers are also one of the reasons conventional stock exchanges are reluctant to adopt algorithm trading. Similarly, variables like Lack of Government interest, unnecessary investment, and employment have a significant effect on the implementation of algorithm trading. Moreover, lack of awareness is the least significant factor, which shows the traders and investors in the Pakistan Stock Exchange are well aware of algorithm trading but the results cannot be generalized to the population due to a limited sample size of the study.

https://doi.org/10.51153/kjcis.v6i2.192
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References

Alile, H., and R. A. Anao. "The Nigerian Stock Market in Operation Jeromelaiho and Associate Limited." Lagos Nigeria (1986).

. Bao, Te, et al. "Algorithmic trading in experimental markets with human traders: A literature survey." Handbook of Experimental Finance (2022): 302-322.

. Omuchesi, J., Mary Bosire, and Monica Muiru. "The effect of automation on stock market efficiency: A case of Nairobi Securities Exchange." Journal of Finance and Accounting 5.17 (2014): 71-79.

. Chakervarti, Dhruv, and Dasika Chaitanya. "Algorithm Trading and High-Frequency Trading Boon or Bane in Indian Context." IJAMEE (2018).

. Davis, Fred D., Richard P. Bagozzi, and Paul R. Warshaw. "User acceptance of computer technology: A comparison of two theoretical models." Management Science 35.8 (1989): 982-1003.

. Fishbein, Martin, and IcekAjzen. "Belief, attitude, intention, and behavior:An introduction to theory and research." (1977).Jantarakolica, Korbkul, and Tatre Jantarakolica. "Acceptance of financial technology in Thailand: a case study of algorithm trading." Banking and Finance Issues in Emerging Markets. Vol. 25. Emerald Publishing Limited, 2018. 255-277.

. Kelejian, Harry H., and Purba Mukerji. "Does high-frequency algorithmic trading matter for non-AT investors?." Research in International Business and Finance 37 (2016): 78- 92.

. Kirilenko, Andrei A., and Andrew W. Lo. "Moore's law versus Murphy’s law: Algorithmic trading and its discontents." Journal of Economic Perspectives 27.2 (2013): 51-72.

. Kirilenko, Andrei, et al. "The flash crash: High?frequency trading in an electronic

market." The Journal of Finance 72.3 (2017): 967-998.

. Mailafia, Luka. "Effect of automation of the trading system on the performance of the Nigerian Stock Exchange." International Journals of Marketing and Technology 2.10 (2012): 12-24.

. Min, Bo Hee, and Christian Borch. "Systemic failures and organizational risk management in algorithmic trading: Normal accidents and high reliability in financial markets." Social Studies of Science 52.2 (2022): 277-302.

Liaqut, Sarwat, and Ammar Siddiqui. "Crypto Currency Cognizance: A New Entrant in Financial Heaven." KIET Journal of Computing and Information Sciences 4.2 (2021): [13]. Shetty, M. A. "A Study On Algorithmic Trading And Automated Trading System—Uses And Challenges." Jamshedpur Research Review 1.44 (2021): 76-81.

. Théate, Thibaut, and Damien Ernst. "An application of deep reinforcement learning to algorithmic trading." Expert Systems with Applications 173 (2021): 114632.

. Waisi, Mirwais. "Advantages and disadvantages of AI-based trading and investing versus traditional methods." (2020).

. Yadav, Yesha. "How algorithmic trading undermines efficiency in capital markets." Vand. L. Rev. 68 (2015): 1607.