Beyond Pure Text: Summarizing Financial Reports Based on Both Textual and Tabular Data

Ziao Wang, Zelin Jiang, Xiaofeng Zhang, Jaehyeon Soon, Jialu Zhang, Xiaoyao Wang, Hongwei Du
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引用次数: 0

Abstract

Abstractive text summarization is to generate concise summaries that well preserve both salient information and the overall semantic meanings of the given documents. However, real-world documents, e.g., financial reports, generally contain rich data such as charts and tabular data which invalidates most existing text summarization approaches. This paper is thus motivated to propose this novel approach to simultaneously summarize both textual and tabular data. Particularly, we first manually construct a “table+text → summary” dataset. Then, the tabular data is respectively embedded in a row-wise and column-wise manner, and the textual data is encoded at the sentence-level via an employed pre-trained model. We propose a salient detector gate respectively performed between each pair of row/column and sentence embeddings. The highly correlated content is considered as salient information that must be summarized. Extensive experiments have been performed on our constructed dataset and the promising results demonstrate the effectiveness of the proposed approach w.r.t. a number of both automatic and human evaluation criteria.
超越纯文本:基于文本和表格数据的财务报告总结
抽象文本摘要是生成简洁的摘要,既能很好地保存重要信息,又能保留给定文档的总体语义含义。然而,现实世界的文档,例如财务报告,通常包含丰富的数据,如图表和表格数据,这使大多数现有的文本摘要方法无效。因此,本文提出了这种同时总结文本和表格数据的新方法。具体来说,我们首先手动构建一个“表+文本→摘要”数据集。然后,分别以行和列的方式嵌入表格数据,并通过所采用的预训练模型在句子级对文本数据进行编码。我们提出了一个显著性检测器门,分别在每对行/列嵌入和句子嵌入之间执行。高度相关的内容被认为是必须总结的重要信息。在我们构建的数据集上进行了大量的实验,并且有希望的结果证明了所提出的方法在许多自动和人工评估标准下的有效性。
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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