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用于学习长期金融时间序列中潜在季节性的周期聚合变压器。

Period-aggregated transformer for learning latent seasonalities in long-horizon financial time series.

作者信息

Tang Zhenyang, Huang Jinshui, Rinprasertmeechai Denisa

机构信息

Southwestern University of Finance and Economics, Chengdu, China.

出版信息

PLoS One. 2024 Aug 8;19(8):e0308488. doi: 10.1371/journal.pone.0308488. eCollection 2024.

DOI:10.1371/journal.pone.0308488
PMID:39116164
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11309408/
Abstract

Fluctuations in the financial market are influenced by various driving forces and numerous factors. Traditional financial research aims to identify the factors influencing stock prices, and existing works construct a common neural network learning framework that learns temporal dependency using a fixed time window of historical information, such as RNN and LSTM models. However, these models only consider the short-term and point-to-point relationships within stock series. The financial market is a complex and dynamic system with many unobservable temporal patterns. Therefore, we propose an adaptive period-aggregation model called the Latent Period-Aggregated Stock Transformer (LPAST). The model integrates a variational autoencoder (VAE) with a period-to-period attention mechanism for multistep prediction in the financial time series. Additionally, we introduce a self-correlation learning method and routing mechanism to handle complex multi-period aggregations and information distribution. Main contributions include proposing a novel period-aggregation representation scheme, introducing a new attention mechanism, and validating the model's superiority in long-horizon prediction tasks. The LPAST model demonstrates its potential and effectiveness in financial market prediction, highlighting its relevance in financial research and predictive analytics.

摘要

金融市场的波动受到各种驱动力和众多因素的影响。传统金融研究旨在识别影响股票价格的因素,现有研究构建了一个通用的神经网络学习框架,该框架使用历史信息的固定时间窗口来学习时间依赖性,如RNN和LSTM模型。然而,这些模型仅考虑股票序列内的短期和点对点关系。金融市场是一个复杂的动态系统,具有许多不可观测的时间模式。因此,我们提出了一种自适应周期聚合模型,称为潜在周期聚合股票变换器(LPAST)。该模型将变分自编码器(VAE)与周期到周期的注意力机制相结合,用于金融时间序列的多步预测。此外,我们引入了一种自相关学习方法和路由机制,以处理复杂的多周期聚合和信息分布。主要贡献包括提出一种新颖的周期聚合表示方案,引入一种新的注意力机制,并验证该模型在长期预测任务中的优越性。LPAST模型在金融市场预测中展示了其潜力和有效性,突出了其在金融研究和预测分析中的相关性。

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