Harnessing Deep Q-Learning for Enhanced Statistical Arbitrage in
High-Frequency Trading: A Comprehensive Exploration
- URL: http://arxiv.org/abs/2311.10718v1
- Date: Wed, 13 Sep 2023 06:15:40 GMT
- Title: Harnessing Deep Q-Learning for Enhanced Statistical Arbitrage in
High-Frequency Trading: A Comprehensive Exploration
- Authors: Soumyadip Sarkar
- Abstract summary: Reinforcement Learning (RL) is a branch of machine learning where agents learn by interacting with their environment.
This paper dives deep into the integration of RL in statistical arbitrage strategies tailored for High-Frequency Trading (HFT) scenarios.
Through extensive simulations and backtests, our research reveals that RL not only enhances the adaptability of trading strategies but also shows promise in improving profitability metrics and risk-adjusted returns.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The realm of High-Frequency Trading (HFT) is characterized by rapid
decision-making processes that capitalize on fleeting market inefficiencies. As
the financial markets become increasingly competitive, there is a pressing need
for innovative strategies that can adapt and evolve with changing market
dynamics. Enter Reinforcement Learning (RL), a branch of machine learning where
agents learn by interacting with their environment, making it an intriguing
candidate for HFT applications. This paper dives deep into the integration of
RL in statistical arbitrage strategies tailored for HFT scenarios. By
leveraging the adaptive learning capabilities of RL, we explore its potential
to unearth patterns and devise trading strategies that traditional methods
might overlook. We delve into the intricate exploration-exploitation trade-offs
inherent in RL and how they manifest in the volatile world of HFT. Furthermore,
we confront the challenges of applying RL in non-stationary environments,
typical of financial markets, and investigate methodologies to mitigate
associated risks. Through extensive simulations and backtests, our research
reveals that RL not only enhances the adaptability of trading strategies but
also shows promise in improving profitability metrics and risk-adjusted
returns. This paper, therefore, positions RL as a pivotal tool for the next
generation of HFT-based statistical arbitrage, offering insights for both
researchers and practitioners in the field.
Related papers
- Deep Reinforcement Learning Agents for Strategic Production Policies in Microeconomic Market Simulations [1.6499388997661122]
We propose a DRL-based approach to obtain an effective policy in competitive markets with multiple producers.
Our framework enables agents to learn adaptive production policies to several simulations that consistently outperform static and random strategies.
The results show that agents trained with DRL can strategically adjust production levels to maximize long-term profitability.
arXiv Detail & Related papers (2024-10-27T18:38:05Z) - When AI Meets Finance (StockAgent): Large Language Model-based Stock Trading in Simulated Real-world Environments [55.19252983108372]
We have developed a multi-agent AI system called StockAgent, driven by LLMs.
The StockAgent allows users to evaluate the impact of different external factors on investor trading.
It avoids the test set leakage issue present in existing trading simulation systems based on AI Agents.
arXiv Detail & Related papers (2024-07-15T06:49:30Z) - Can machine learning unlock new insights into high-frequency trading? [0.0]
We introduce new metrics to identify liquidity-demanding and -supplying HFT strategies.
Our metrics have implications for understanding the information production process in financial markets.
arXiv Detail & Related papers (2024-05-13T18:28:39Z) - Provable Risk-Sensitive Distributional Reinforcement Learning with
General Function Approximation [54.61816424792866]
We introduce a general framework on Risk-Sensitive Distributional Reinforcement Learning (RS-DisRL), with static Lipschitz Risk Measures (LRM) and general function approximation.
We design two innovative meta-algorithms: textttRS-DisRL-M, a model-based strategy for model-based function approximation, and textttRS-DisRL-V, a model-free approach for general value function approximation.
arXiv Detail & Related papers (2024-02-28T08:43:18Z) - IMM: An Imitative Reinforcement Learning Approach with Predictive
Representation Learning for Automatic Market Making [33.23156884634365]
Reinforcement Learning technology has achieved remarkable success in quantitative trading.
Most existing RL-based market making methods focus on optimizing single-price level strategies.
We propose Imitative Market Maker (IMM), a novel RL framework leveraging both knowledge from suboptimal signal-based experts and direct policy interactions.
arXiv Detail & Related papers (2023-08-17T11:04:09Z) - HireVAE: An Online and Adaptive Factor Model Based on Hierarchical and
Regime-Switch VAE [113.47287249524008]
It is still an open question to build a factor model that can conduct stock prediction in an online and adaptive setting.
We propose the first deep learning based online and adaptive factor model, HireVAE, at the core of which is a hierarchical latent space that embeds the relationship between the market situation and stock-wise latent factors.
Across four commonly used real stock market benchmarks, the proposed HireVAE demonstrate superior performance in terms of active returns over previous methods.
arXiv Detail & Related papers (2023-06-05T12:58:13Z) - Mastering the Unsupervised Reinforcement Learning Benchmark from Pixels [112.63440666617494]
Reinforcement learning algorithms can succeed but require large amounts of interactions between the agent and the environment.
We propose a new method to solve it, using unsupervised model-based RL, for pre-training the agent.
We show robust performance on the Real-Word RL benchmark, hinting at resiliency to environment perturbations during adaptation.
arXiv Detail & Related papers (2022-09-24T14:22:29Z) - Deep Q-Learning Market Makers in a Multi-Agent Simulated Stock Market [58.720142291102135]
This paper focuses precisely on the study of these markets makers strategies from an agent-based perspective.
We propose the application of Reinforcement Learning (RL) for the creation of intelligent market markers in simulated stock markets.
arXiv Detail & Related papers (2021-12-08T14:55:21Z) - An Application of Deep Reinforcement Learning to Algorithmic Trading [4.523089386111081]
This scientific research paper presents an innovative approach based on deep reinforcement learning (DRL) to solve the algorithmic trading problem.
It proposes a novel DRL trading strategy so as to maximise the resulting Sharpe ratio performance indicator on a broad range of stock markets.
The training of the resulting reinforcement learning (RL) agent is entirely based on the generation of artificial trajectories from a limited set of stock market historical data.
arXiv Detail & Related papers (2020-04-07T14:57:23Z) - Reinforcement-Learning based Portfolio Management with Augmented Asset
Movement Prediction States [71.54651874063865]
Portfolio management (PM) aims to achieve investment goals such as maximal profits or minimal risks.
In this paper, we propose SARL, a novel State-Augmented RL framework for PM.
Our framework aims to address two unique challenges in financial PM: (1) data Heterogeneous data -- the collected information for each asset is usually diverse, noisy and imbalanced (e.g., news articles); and (2) environment uncertainty -- the financial market is versatile and non-stationary.
arXiv Detail & Related papers (2020-02-09T08:10:03Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.