Title :
Behavior based learning in identifying High Frequency Trading strategies
Author :
Yang, Steve ; Paddrik, Mark ; Hayes, Roy ; Todd, Andrew ; Kirilenko, Andrei ; Beling, Peter ; Scherer, William
Abstract :
Electronic markets have emerged as popular venues for the trading of a wide variety of financial assets, and computer based algorithmic trading has also asserted itself as a dominant force in financial markets across the world. Identifying and understanding the impact of algorithmic trading on financial markets has become a critical issue for market operators and regulators. We propose to characterize traders´ behavior in terms of the reward functions most likely to have given rise to the observed trading actions. Our approach is to model trading decisions as a Markov Decision Process (MDP), and use observations of an optimal decision policy to find the reward function. This is known as Inverse Reinforcement Learning (IRL), and a variety of approaches for this problem are known. Our IRL-based approach to characterizing trader behavior strikes a balance between two desirable features in that it captures key empirical properties of order book dynamics and yet remains computationally tractable. Using an IRL algorithm based on linear programming, we are able to achieve more than 90% classification accuracy in distinguishing High Frequency Trading from other trading strategies in experiments on a simulated E-Mini S&P 500 futures market. The results of these empirical tests suggest that High Frequency Trading strategies can be accurately identified and profiled based on observations of individual trading actions.
Keywords :
Markov processes; commodity trading; electronic commerce; learning (artificial intelligence); linear programming; E-Mini S&P 500 futures market; IRL-based approach; MDP; Markov decision process; behavior based learning; computer based algorithmic trading; electronic markets; financial asset trading; financial markets; high frequency trading strategy identification; inverse reinforcement learning; linear programming; optimal decision policy; order book dynamics; reward functions; trader behavior characterization; Accuracy; Correlation; Data models; Learning; Linear programming; Markov processes; Sensitivity; Algorithmic trading; High Frequency Trading; Inverse Reinforcement Learning; Limit order book; Markov Decision Process; Price impact; Spoofing;
Conference_Titel :
Computational Intelligence for Financial Engineering & Economics (CIFEr), 2012 IEEE Conference on
Conference_Location :
New York, NY
Print_ISBN :
978-1-4673-1802-0
Electronic_ISBN :
PENDING
DOI :
10.1109/CIFEr.2012.6327783