MANA-Net:利用新闻加权减轻聚合情感同质化,增强市场预测能力

Mengyu Wang, Tiejun Ma
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摘要

人们普遍认为,从新闻数据库中提取市场情绪有利于市场预测。然而,现有的金融情感使用方法仍然过于简单,依赖于等权重和静态聚合来管理来自多个新闻项目的情感。这导致了一个关键问题,即 "聚合情绪同质化",我们通过对行业实践中的大型财经新闻数据集进行分析,对这一问题进行了探讨。这种现象会在汇总众多情感时出现,导致情感分布的表示趋同于平均值,从而抹去了独特而重要的信息。因此,聚合后的情感表征对新闻数据的预测价值大打折扣。为了解决这个问题,我们引入了市场关注加权新闻聚合网络(MANA-Net),这是一种利用动态市场新闻关注机制来聚合新闻情感以进行市场预测的新方法。通过将新闻聚合步骤整合到市场预测网络中,MANA-Net 可以训练可直接优化用于预测的情感表示。我们使用标准普尔 500 指数和纳斯达克 100 指数以及从 2003 年到 2018 年的金融新闻对 MANA-Net 进行了评估。实验结果表明,MANA-Net 的表现优于近期的各种市场预测方法,盈亏率提高了 1.1%,日夏普比率提高了 0.252。
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MANA-Net: Mitigating Aggregated Sentiment Homogenization with News Weighting for Enhanced Market Prediction
It is widely acknowledged that extracting market sentiments from news data benefits market predictions. However, existing methods of using financial sentiments remain simplistic, relying on equal-weight and static aggregation to manage sentiments from multiple news items. This leads to a critical issue termed ``Aggregated Sentiment Homogenization'', which has been explored through our analysis of a large financial news dataset from industry practice. This phenomenon occurs when aggregating numerous sentiments, causing representations to converge towards the mean values of sentiment distributions and thereby smoothing out unique and important information. Consequently, the aggregated sentiment representations lose much predictive value of news data. To address this problem, we introduce the Market Attention-weighted News Aggregation Network (MANA-Net), a novel method that leverages a dynamic market-news attention mechanism to aggregate news sentiments for market prediction. MANA-Net learns the relevance of news sentiments to price changes and assigns varying weights to individual news items. By integrating the news aggregation step into the networks for market prediction, MANA-Net allows for trainable sentiment representations that are optimized directly for prediction. We evaluate MANA-Net using the S&P 500 and NASDAQ 100 indices, along with financial news spanning from 2003 to 2018. Experimental results demonstrate that MANA-Net outperforms various recent market prediction methods, enhancing Profit & Loss by 1.1% and the daily Sharpe ratio by 0.252.
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