Improving Zero-Shot Text Matching for Financial Auditing with Large Language Models

L. Hillebrand, Armin Berger, Tobias Deußer, Tim Dilmaghani, Mohamed Khaled, Bernd Kliem, Rüdiger Loitz, Maren Pielka, David Leonhard, C. Bauckhage, R. Sifa
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Abstract

Auditing financial documents is a very tedious and time-consuming process. As of today, it can already be simplified by employing AI-based solutions to recommend relevant text passages from a report for each legal requirement of rigorous accounting standards. However, these methods need to be fine-tuned regularly, and they require abundant annotated data, which is often lacking in industrial environments. Hence, we present ZeroShotALI, a novel recommender system that leverages a state-of-the-art large language model (LLM) in conjunction with a domain-specifically optimized transformer-based text-matching solution. We find that a two-step approach of first retrieving a number of best matching document sections per legal requirement with a custom BERT-based model and second filtering these selections using an LLM yields significant performance improvements over existing approaches.
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基于大语言模型的财务审计零差文本匹配改进
审计财务文件是一个非常繁琐和耗时的过程。到目前为止,它已经可以通过采用基于人工智能的解决方案来简化,为严格会计准则的每项法律要求推荐报告中的相关文本段落。然而,这些方法需要定期进行微调,并且需要大量带注释的数据,而这在工业环境中通常是缺乏的。因此,我们提出了ZeroShotALI,这是一个新颖的推荐系统,它利用了最先进的大型语言模型(LLM),并结合了特定领域优化的基于转换器的文本匹配解决方案。我们发现,首先使用基于自定义bert的模型检索每个法律要求的最佳匹配文档部分,然后使用LLM过滤这些选择的两步方法比现有方法产生了显着的性能改进。
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