Multiple Instance Learning Networks for Stock Movements Prediction with Financial News

Yiqi Deng, Siu Ming Yiu
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Abstract

A major source of information can be taken from financial news articles, which have some correlations about the fluctuation of stock trends. In this paper, we investigate the influences of financial news on the stock trends, from a multi-instance view. The intuition behind this is based on the news uncertainty in random news occurrences and the lack of annotation for every single financial news. Under the scenario of Multiple Instance Learning (MIL) where training instances are arranged in bags, and a label is assigned for the entire bag instead of instances, we develop a flexible and adaptive multi-instance learning model and evaluate its ability in directional movement forecast of Standard & Poor’s 500 index on financial news dataset. Specifically, we treat each trading day as one bag, with certain amounts of news happening on each trading day as instances in each bag. Experiment results demonstrate that our proposed multiinstance-based framework gains outstanding results in terms of the accuracy of trend prediction, compared with other state-of-art approaches and baselines.
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基于财经新闻的股票走势预测的多实例学习网络
信息的主要来源可以从金融新闻文章中获得,这些文章与股票趋势的波动有一定的相关性。本文从多实例的角度研究财经新闻对股票走势的影响。这背后的直觉是基于随机新闻事件的新闻不确定性,以及缺乏对每条财经新闻的注释。在多实例学习(Multiple Instance Learning, MIL)的场景下,将训练实例放在袋子中,并为整个袋子分配标签,而不是为实例分配标签,我们开发了一个灵活的、自适应的多实例学习模型,并评估了其在财经新闻数据集上对标准普尔500指数定向运动预测的能力。具体来说,我们将每个交易日视为一个包,每个交易日发生的一定数量的新闻作为每个包中的实例。实验结果表明,与其他先进的方法和基线相比,我们提出的基于多实例的框架在趋势预测的准确性方面取得了显著的成绩。
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