Advances in Economics, Management and Political Sciences
- The Open Access Proceedings Series for Conferences
Series Vol. 66 , 05 January 2024
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With the continuous progress of technology and economic development, high-frequency trading has become one of the most important trading methods in the securities market of various countries. This paper mainly analyzes the trading strategy and regulatory system of foreign high-frequency trading, and obtains some enlightenment from it. In terms of trading strategy, domestic high-frequency traders should strengthen technology research and development, improve the level of algorithms; Enhance data analysis capabilities to build a reliable data foundation; Strengthen computer hardware to provide a solid guarantee. In terms of the supervision system, China should set up independent supervisory bodies, strengthen transaction data supervision, limit high-frequency trading, enhance market transparency, and active make the application of regulatory technologies.
high-frequency trading, trading strategy, regulatory system, domestic revelation
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