财务报告中可解释的风险分类

Xue Wen Tan, Stanley Kok
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引用次数: 0

摘要

在美国,每家上市公司都必须提交年度 10-K 财务报告,其中包含大量有关公司的信息。在本文中,我们提出了一种名为 FinBERT-XRC 的可解释深度学习模型,该模型以 10-K 报告为输入,自动评估相关公司的事后收益波动风险。与以前的系统不同,我们提出的模型同时在三个不同的层面上对其分类决策提供解释:单词、句子和语料库层面。这样,我们的模型就能为最终用户提供全面的预测解释。这一点在金融领域尤为重要,因为算法预测的透明度和责任感对其在决策过程中的应用起着至关重要的作用。除了新颖的可解释性之外,我们的模型在跨越六年的大型 10-K 报告真实数据集上的预测准确性也超越了目前的技术水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Risk Classification in Financial Reports
Every publicly traded company in the US is required to file an annual 10-K financial report, which contains a wealth of information about the company. In this paper, we propose an explainable deep-learning model, called FinBERT-XRC, that takes a 10-K report as input, and automatically assesses the post-event return volatility risk of its associated company. In contrast to previous systems, our proposed model simultaneously offers explanations of its classification decision at three different levels: the word, sentence, and corpus levels. By doing so, our model provides a comprehensive interpretation of its prediction to end users. This is particularly important in financial domains, where the transparency and accountability of algorithmic predictions play a vital role in their application to decision-making processes. Aside from its novel interpretability, our model surpasses the state of the art in predictive accuracy in experiments on a large real-world dataset of 10-K reports spanning six years.
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