Disentangled Variational Topic Inference for Topic-Accurate Financial Report Generation

Sixing Yan
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Abstract

Automatic generating financial report from a set of news is important but challenging. The financial reports is composed of key points of the news and corresponding inferring and reasoning from specialists in financial domain with professional knowledge. The challenges lie in the effective learning of the extra knowledge that is not well presented in the news, and the misalignment between topic of input news and output knowledge in target reports. In this work, we introduce a disentangled variational topic inference approach to learn two latent variables for news and report, respectively. We use a publicly available dataset to evaluate the proposed approach. The results demonstrate its effectiveness of enhancing the language informativeness and the topic accuracy of the generated financial reports.
面向主题精确财务报告生成的解纠缠变分主题推理
从一组新闻中自动生成财务报告很重要,但也很有挑战性。财务报告由新闻要点和金融领域专家运用专业知识进行的相应的推断和推理组成。挑战在于有效地学习新闻中没有很好地呈现的额外知识,以及目标报道中输入新闻的主题与输出知识的不一致。在这项工作中,我们引入了一种解纠缠变分主题推理方法来分别学习新闻和报道的两个潜在变量。我们使用公开可用的数据集来评估所提出的方法。结果表明,该方法在提高生成的财务报告的语言信息量和主题准确性方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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