基于领域知识生成网络的股票指数趋势模式学习

Jingyi Gu, Fadi P. Deek, Guiling Wang
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引用次数: 1

摘要

预测股市走势受到业界和学术界的广泛关注。尽管做出了如此巨大的努力,但由于股票市场的内在复杂性,包括供求关系、经济状况、政治气候,甚至非理性的人类行为,结果仍然令人不满意。最近,生成对抗网络(GAN)在时间序列数据上得到了扩展;然而,鲁棒方法主要用于合成序列的生成,无法进行适当的库存预测。这是因为现有用于库存应用的GAN存在模式崩溃并且只考虑一步预测,因此未充分利用GAN的潜力。此外,目前的gan忽略了合并新闻和市场波动。为了解决这些问题,我们利用金融领域的专家知识,并首次尝试将股票运动预测制定为多步骤预测的Wasserstein GAN框架。我们提出指数GAN,其中包括对股票市场固有特征的刻意设计,利用新闻上下文学习来彻底调查文本信息,并开发一个细心的seq2seq学习网络,以捕获股票价格,新闻和市场情绪之间的时间依赖性。我们还利用批评来近似实际序列和预测序列之间的Wasserstein距离,并开发了一种滚动部署策略,以减轻来自金融市场的噪音。在现实世界的基础指数上进行了广泛的实验,证明了我们的架构优于其他最先进的基线,也验证了它的所有贡献组件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Broad-Index Trend Patterns Learning via Domain Knowledge Informed Generative Network
Predicting the Stock movement attracts much attention from both industry and academia. Despite such significant efforts, the results remain unsatisfactory due to the inherently complicated nature of the stock market driven by factors including supply and demand, the state of the economy, the political climate, and even irrational human behavior. Recently, Generative Adversarial Networks (GAN) have been extended for time series data; however, robust methods are primarily for synthetic series generation, which fall short for appropriate stock prediction. This is because existing GANs for stock applications suffer from mode collapse and only consider one-step prediction, thus underutilizing the potential of GAN. Furthermore, merging news and market volatility are neglected in current GANs. To address these issues, we exploit expert domain knowledge in finance and, for the first time, attempt to formulate stock movement prediction into a Wasserstein GAN framework for multi-step prediction. We propose Index GAN, which includes deliberate designs for the inherent characteristics of the stock market, leverages news context learning to thoroughly investigate textual information and develop an attentive seq2seq learning network that captures the temporal dependency among stock prices, news, and market sentiment. We also utilize the critic to approximate the Wasserstein distance between actual and predicted sequences and develop a rolling strategy for deployment that mitigates noise from the financial market. Extensive experiments are conducted on real-world broad-based indices, demonstrating the superior performance of our architecture over other state-of-the-art baselines, also validating all its contributing components.
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