Answering questions related to the legal domain is a complex task, primarily due to the intricate nature and diverse range of legal document systems. Providing an accurate answer to a legal query typically necessitates specialized knowledge in the relevant domain, which makes this task all the more challenging, even for human experts. QA (Question answering systems) are designed to generate answers to questions asked in human languages. They use natural language processing to understand questions and search through information to find relevant answers. QA has various practical applications, including customer service, education, research, and cross-lingual communication. However, they face challenges such as improving natural language understanding and handling complex and ambiguous questions. Answering questions related to the legal domain is a complex task, primarily due to the intricate nature and diverse range of legal document systems. Providing an accurate answer to a legal query typically necessitates specialized knowledge in the relevant domain, which makes this task all the more challenging, even for human experts. At this time, there is a lack of surveys that discuss legal question answering. To address this problem, we provide a comprehensive survey that reviews 14 benchmark datasets for question-answering in the legal field as well as presents a comprehensive review of the state-of-the-art Legal Question Answering deep learning models. We cover the different architectures and techniques used in these studies and the performance and limitations of these models. Moreover, we have established a public GitHub repository where we regularly upload the most recent articles, open data, and source code. The repository is available at: \url{https://github.com/abdoelsayed2016/Legal-Question-Answering-Review}.
翻译:回答与法律领域有关的问题是一项复杂的任务,主要是由于复杂的法律文件系统的错综复杂性和多样性。为法律查询提供准确的答案通常需要相关领域的专业知识,即使对于人类专家来说,这项任务也更具挑战性。问答(QA)是设计用于生成对人类语言中提出的问题的答案的系统。它们使用自然语言处理来理解问题并搜索信息以找到相关的答案。QA有各种实际应用,包括客户服务、教育、研究和跨语言交流。然而,它们面临着诸如改进自然语言理解和处理复杂和模糊的问题等挑战。回答与法律领域有关的问题是一项复杂的任务,主要是由于复杂的法律文件系统的错综复杂性和多样性。目前缺乏讨论法律问答的综述。为解决这个问题,我们提供了一个全面的调查,对法律领域的14个问题回答基准数据集进行了回顾,并提出了现代法律问答深度学习模型的全面回顾。我们涵盖了这些研究中使用的不同架构和技术以及这些模型的性能和局限性。此外,我们建立了一个公共GitHub存储库,定期上传最新的文章、开放数据和源代码。该存储库位于: \url {https://github.com/abdoelsayed2016/Legal-Question-Answering-Review}.