Title: Stylized algorithmic trading: satisfying the predictive near-term demand of liquidity
Authors: Sun, Edward W.
Kruse, Timm
Chen, Yi-Ting
資訊工程學系
Department of Computer Science
Keywords: Artificial intelligence;Algorithmic trading;Decision analytics;Discrete optimization;FinTech;Liquidity
Issue Date: 1-Oct-2019
Abstract: Regulatory reform enacted (e.g., the Dodd-Frank Act enforced in the U.S.) requires the financial service industry to consider the "reasonably expected near term demand" (i.e., RENTD) in trading. To manage the price impact and transaction cost associated with orders submitted to an order driven market, market makers or specialists must determine their trading styles (aggressive, neutral, or passive) based on the market liquidity in response to RENTD, particularly for trading a large quantity of some financial instrument. In this article we introduce a model considering different trading styles to satisfy the predictive near-term customer demand of market liquidity in order to find an optimal order submission strategy based on different market situations. We show some analytical properties and numerical performances of our model in search of optimal solutions. We evaluate the performances of our model with simulations run over a set of experiments in comparison with two alternative strategies. Our results suggest that the proposed model illustrates superiority in performance.
URI: http://dx.doi.org/10.1007/s10479-019-03150-0
http://hdl.handle.net/11536/153037
ISSN: 0254-5330
DOI: 10.1007/s10479-019-03150-0
Journal: ANNALS OF OPERATIONS RESEARCH
Volume: 281
Issue: 1-2
Begin Page: 315
End Page: 347
Appears in Collections:Articles