0% Complete
صفحه اصلی
/
اولین همایش بین المللی هوش مصنوعی
A Deep Reinforcement Learning Approach to Automated Stock Trading, using xLSTM Networks
نویسندگان :
Faezeh Sarlakifar
1
Mohammadreza Mohammadzadeh Asl
2
Sajjad Rezvani Khaledi
3
Armin Salimi-Badr
4
1- Shahid Beheshti University
2- Shahid Beheshti University
3- Shahid Beheshti University
4- Shahid Beheshti University
کلمات کلیدی :
Extended Long Short-Term Memory (xLSTM)،Proximal Policy Optimization (PPO)،Automated Stock Trading،Actor-Critic Reinforcement Learning
چکیده :
Traditional Long Short-Term Memory (LSTM) networks are effective for handling sequential data but have limitations such as gradient vanishing and difficulty in capturing long-term dependencies, which can impact their performance in dynamic and risky environments like stock trading. To address these limitations, this study explores the usage of the newly introduced Extended Long Short-Term Memory (xLSTM) network in combination with a deep reinforcement learning (DRL) approach for automated stock trading. Our proposed method utilizes xLSTM networks in both actor and critic components, enabling effective handling of time series data and dynamic market environment. Proximal Policy Optimization (PPO), with its ability to balance exploration and exploitation, is employed to optimize the trading strategy. Experiments were conducted using financial data from major tech companies over a comprehensive timeline, demonstrating that the xLSTM-based model outperforms LSTM-based methods in key trading evaluation metrics, including cumulative return, average profitability per trade, max earning rate, maximum pullback, and Sharpe ratio. These findings mark the potential of xLSTM for enhancing DRL-based stock trading systems.
لیست مقالات
لیست مقالات بایگانی شده
Application of machine learning algorithms in the prediction of the reliability of post-tensioned concrete members
Pooria Poorahad A. - Mahmoud R. Shiravand - Mahtab Ebadati
Empowering Decision-Making in Venture Investments: A Systematic Review of Machine Learning Applications for Predicting Startup Success
Seyed Mohammad Javad Toghraee - Hadi Nilforoushan - Nafiseh Sanaee
Time Series Algorithms for Predicting Monthly Water Consumption
Mohsen Piri - Babak Nouri-Moghaddam - Abbas Mirzaei
A Hybrid Approach for Intrusion Detection in Computer Systems Using Optimized Deep Neural Networks
Yousef Nahi Salman - Maral Kolahkaj
Enhancing IoT Data Prediction Accuracy Using Deep Learning and Metaheuristic Algorithms
Safoura Ashoori - Khadigh Nemati - Mohamad hadi Amini
Inferring organizational duties from Persian administrative and employment laws using Large Language Models (LLMs) and few-shot learning
Hojjat Hajizadeh Nowkhandan - Mohsen Kahani
Persian Intelligent Assistant in Healthcare Domain
Sarina Chitsaz - Mehrnoush Shamsfard
Efficient and Accurate Fairness Verification for Quantum Variational Circuits
Sajjad Hashemian Meymandi - Mohammad Saeed Arvenaghi
Optimization of Neural Data Processing with Distributed Algorithms: An Analysis of the Application of Distributed Algorithms in Neural Image and Signal Processing for Feature Extraction Speed and Accuracy Enhancement
Arian Baymani - Maryam Naderi Soorki
AI-Powered Beauty: Innovations, Transformations, and Ethical Considerations
Rana Poureskandar - Abbas Mirzaei - Babak Nouri-Moghaddam
بیشتر
ثمین همایش، سامانه مدیریت کنفرانس ها و جشنواره ها - نگارش 42.5.4