Fast AI classification for analyzing construction accidents claims

R. Li, H. Li, Beiqi Tang, Wai-hong Au
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引用次数: 6

Abstract

Safety has long been considered an important issue in the construction industry. One means of reducing accidents is to provide for heavy compensation. As per the common law system, precedents, once made, then become part of the legal system. Therefore, construction companies and legal firms have an interest in obtaining details of court cases relevant to the ones they are currently involved with. However, the cost of identifying relevant court cases can be excessive. Computer-based text classification, the process of classifying documents into predefined categories with regard to their content, is proposed in this paper as a way to speed up the procedure whereby court cases are identified as relevant to a particular claim for accident compensation. The data set used for this project consisted of 3000 sentences. The 'training split' was 90% training and 10% for testing. The results show that the precision of the system proposed here for classifying construction accident cases is 95.7% and that the recall is 95.7%. This demonstrates that the fastText-based classification employed can successfully classify papers as relevant to the acceptance or rejection of a compensation case at a fairly high rate of accuracy. This pilot research provides a practical example in order to showcase the possibility of utilising artificial intelligence, without human intervention, for document classification. Such a facility could reduce the time taken to identify relevant past cases, so saving human resources, and improving turn-round times.
快速人工智能分类分析建筑事故索赔
长期以来,安全一直被认为是建筑行业的一个重要问题。减少事故的一个方法是提供高额赔偿。根据英美法系,判例一旦形成,就成为法律体系的一部分。因此,建筑公司和法律公司都有兴趣获得与他们目前参与的案件相关的法庭案件的细节。然而,识别相关法庭案件的成本可能过高。本文提出基于计算机的文本分类,即根据文件内容将文件分类为预定义类别的过程,作为一种加快程序的方法,从而将法庭案件确定为与事故赔偿的特定索赔有关。这个项目使用的数据集包括3000个句子。“训练分割”是90%的训练和10%的测试。结果表明,该系统对建筑事故案例分类的准确率为95.7%,召回率为95.7%。这表明所采用的基于fasttext的分类方法能够以相当高的准确率成功地对与接受或拒绝赔偿案件相关的论文进行分类。这项试点研究提供了一个实际的例子,以展示在没有人为干预的情况下利用人工智能进行文档分类的可能性。这种设施可以减少查明过去相关案件所需的时间,从而节省人力资源,缩短周转时间。
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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