局部约束变压器网络的库存移动预测

Jincheng Hu
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引用次数: 3

摘要

股票走势预测是对股票未来的走势进行预测以供投资,这对研究和行业都是一个挑战。通常情况下,股票走势是根据财经新闻来预测的。然而,现有的基于财经新闻的预测方法直接利用递归神经网络、变压器等自然语言处理模型,仍然无法有效处理财经新闻中的关键局部信息。针对这一问题,本文提出了局部约束变压器网络(LTN)来进行库存移动预测。LTN利用具有局部约束的变压器网络对金融新闻进行编码,可以增加关键局部信息的关注权重。此外,由于财经新闻中存在较多难样本,难以学习,本文进一步提出了难样本平衡损失函数来训练网络。本文还研究了将财经新闻与股价数据相结合进行预测的方法。实验表明,该模型在数据集上优于现有的几种强大的方法,并且股票价格数据可以帮助改进预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local-constraint transformer network for stock movement prediction
Stock movement prediction is to predict the future movements of stocks for investment, which is challenging both for research and industry. Typically, stock movement is predicted based on financial news. However, existing prediction methods based on financial news directly utilise models for natural language processing such as recurrent neural networks and transformer, which are still incapable of effectively processing the key local information in financial news. To address this issue, local-constraint transformer network (LTN) is proposed in this paper for stock movement prediction. LTN leverages transformer network with local-constraint to encode the financial news, which can increase the attention weights of key local information. Moreover, since there are more difficult samples in financial news which are hard to be learnt, this paper further proposes a difficult-sample-balance loss function to train the network. This paper also researches the combination of financial news and stock price data for prediction. Experiments demonstrate that the proposed model outperforms several powerful existing methods on the datasets collected, and the stock price data can assist to improve the prediction.
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