Enhancing return forecasting using LSTM with agent-based synthetic data

IF 6.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lijian Wei , Sihang Chen , Junqin Lin , Lei Shi
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引用次数: 0

Abstract

Financial markets, as complex adaptive systems, are characterized by historical data limitations, inherent evolution and non-stationarity, which challenge the effectiveness of deep learning models such as Long Short-Term Memory (LSTM). We address these challenges by generating synthetic data using Agent-Based Modeling (ABM) to simulate complex market conditions through “what-if” scenarios. Our method comprises three steps: (i) pre-training the LSTM model on historical data, (ii) generating synthetic data with the ABM using “what-if” scenarios, and (iii) fine-tuning the pre-trained LSTM with ABM-generated synthetic data. The results show that ABM-generated data significantly improve model performance across various statistical and economic metrics and are robust to diverse market environments, model architectures, and data frequencies. Our primary contribution is modeling the properties of complex adaptive systems with ABM-generated data, highlighting the need for new complex scenarios to better simulate future market conditions that are distinct from historical trends. We explore the potential of ABM in generating unique synthetic data, offering a framework to address the challenges imposed by the complex adaptive system properties of financial markets, particularly, improving the discriminative ability of forecasting models such as the LSTM model.
利用基于智能体的合成数据增强LSTM的收益预测
金融市场作为复杂的自适应系统,具有历史数据限制、内在演化和非平稳性等特点,这对长短期记忆(LSTM)等深度学习模型的有效性提出了挑战。我们通过使用基于代理的建模(ABM)生成合成数据,通过“假设”场景模拟复杂的市场状况,从而解决了这些挑战。我们的方法包括三个步骤:(i)在历史数据上预训练LSTM模型,(ii)使用“假设”场景与ABM生成合成数据,以及(iii)使用ABM生成的合成数据对预训练的LSTM进行微调。结果表明,abm生成的数据显著提高了各种统计和经济指标的模型性能,并且对不同的市场环境、模型架构和数据频率具有鲁棒性。我们的主要贡献是利用abm生成的数据对复杂自适应系统的属性进行建模,强调需要新的复杂场景来更好地模拟不同于历史趋势的未来市场状况。我们探索了ABM在生成独特综合数据方面的潜力,提供了一个框架来解决金融市场复杂的自适应系统属性所带来的挑战,特别是提高了预测模型(如LSTM模型)的判别能力。
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来源期刊
Decision Support Systems
Decision Support Systems 工程技术-计算机:人工智能
CiteScore
14.70
自引率
6.70%
发文量
119
审稿时长
13 months
期刊介绍: The common thread of articles published in Decision Support Systems is their relevance to theoretical and technical issues in the support of enhanced decision making. The areas addressed may include foundations, functionality, interfaces, implementation, impacts, and evaluation of decision support systems (DSSs).
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