PEN:预测-解释网络以更好的可解释性预测股价走势

Shuqi Li, Weiheng Liao, Yuhan Chen, Rui Yan
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引用次数: 0

摘要

如今,由于审计或监管方面的原因,股价走势预测的可解释性越来越受到银行、对冲基金和资产管理公司的关注。金融新闻和社交媒体帖子等文本数据可能是股价波动的部分原因。为此,我们提出了一种新的预测-解释网络(PEN)框架,该框架联合对文本流和价格流进行对齐建模。PEN模型的关键组件是一个共享表示学习模块,该模块通过对文本数据和股票价格数据之间的交互建模,并使用表征它们相关性的显著向量来学习哪些文本可能与股票价格运动相关。这样,PEN模型可以通过识别和利用大量的短信来预测股价走势,而另一方面,所选择的短信也可以解释股价走势。在真实世界数据集上的实验表明,我们能够一石二鸟:就准确性而言,所提出的PEN模型优于最先进的基线;在可解释性上,PEN模型被证明远远优于注意机制,能够以非常高的置信度挑选出关键文本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PEN: Prediction-Explanation Network to Forecast Stock Price Movement with Better Explainability
Nowadays explainability in stock price movement prediction is attracting increasing attention in banks, hedge funds and asset managers, primarily due to audit or regulatory reasons. Text data such as financial news and social media posts can be part of the reasons for stock price movement. To this end, we propose a novel framework of Prediction-Explanation Network (PEN) jointly modeling text streams and price streams with alignment. The key component of the PEN model is an shared representation learning module that learns which texts are possibly associated with the stock price movement by modeling the interaction between the text data and stock price data with a salient vector characterizing their correlation. In this way, the PEN model is able to predict the stock price movement by identifying and utilizing abundant messages while on the other hand, the selected text messages also explain the stock price movement. Experiments on real-world datasets demonstrate that we are able to kill two birds with one stone: in terms of accuracy, the proposed PEN model outperforms the state-of-art baseline; on explainability, the PEN model are demonstrated to be far superior to attention mechanism, capable of picking out the crucial texts with a very high confidence.
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