Litcius/Paper detail

DeepScalper

Shuo Sun, Wanqi Xue, Rundong Wang, Xu He, Junlei Zhu, Jian Li, Bo An

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management29 citationsDOI

Abstract

Reinforcement learning (RL) techniques have shown great success in many challenging quantitative trading tasks, such as portfolio management and algorithmic trading. Especially, intraday trading is one of the most profitable and risky tasks because of the intraday behaviors of the financial market that reflect billions of rapidly fluctuating capitals. However, a vast majority of existing RL methods focus on the relatively low frequency trading scenarios (e.g., day-level) and fail to capture the fleeting intraday investment opportunities due to two major challenges: 1) how to effectively train profitable RL agents for intraday investment decision-making, which involves high-dimensional fine-grained action space; 2) how to learn meaningful multi-modality market representation to understand the intraday behaviors of the financial market at tick-level.

Topics & Concepts

Reinforcement learningTrading strategyComputer scienceInvestment strategyFinancial marketInvestment (military)PortfolioHigh-frequency tradingAlgorithmic tradingFocus (optics)Space (punctuation)Project portfolio managementArtificial intelligenceBusinessFinanceEconomicsMarket liquidityOperating systemManagementLawPhysicsPoliticsProject managementOpticsPolitical scienceSystemic Sclerosis and Related Diseases