Variations in Assessor Agreement in Due Diligence

Adam Roegiest, Anne McNulty
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引用次数: 2

Abstract

In legal due diligence, lawyers identify a variety of topic instances in a company's contracts that may pose risk during a transaction. In this paper, we present a study of 9 lawyers conducting a simulated review of 50 contracts for five topics. We find that lawyers agree on the general location of relevant material at a higher rate than in other assessor agreement studies, but they do not entirely agree on the extent of the relevant material. Additionally, we do not find strong differences between lawyers who have differing levels of due diligence expertise. If we train machine learning models to identify these topics based on each user's judgments, the resulting models exhibit similar levels of agreement between each other as to the lawyers that trained them. This indicates that these models are learning the types of behaviour exhibited by their trainers, even if they are doing so imperfectly. Accordingly, we argue that additional work is necessary to improve the assessment process to ensure that all parties agree on identified material.
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评估员协议在尽职调查中的变化
在法律尽职调查中,律师识别公司合同中可能在交易过程中构成风险的各种主题实例。在本文中,我们提出了一项研究,9名律师对5个主题的50份合同进行了模拟审查。我们发现,与其他评估员协议研究相比,律师对相关材料的一般位置的同意率更高,但他们对相关材料的范围并不完全同意。此外,我们没有发现具有不同尽职调查专业知识水平的律师之间存在很大差异。如果我们训练机器学习模型根据每个用户的判断来识别这些主题,那么产生的模型之间就会表现出与训练它们的律师相似的一致性。这表明这些模型正在学习它们的训练者所展示的行为类型,即使它们做得并不完美。因此,我们认为有必要进行额外的工作来改进评估过程,以确保各方就已确定的材料达成一致。
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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