LK-IB:为强制措施预测注入法律知识的混合框架

IF 3.1 2区 社会学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence and Law Pub Date : 2023-05-30 DOI:10.1007/s10506-023-09362-x
Xiang Zhou, Qi Liu, Yiquan Wu, Qiangchao Chen, Kun Kuang
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引用次数: 0

摘要

人工智能的可解释性与其性能同等重要。在法律人工智能领域,人们一直在努力提高模型的可解释性,但在可解释性和预测准确性之间进行权衡仍然不可避免。在本文中,我们针对法律人工智能的关键任务之一--强制措施预测(CMP),介绍了一种名为 LK-IB 的新型框架。LK-IB 利用法律知识,将可解释模型和黑盒模型相结合,以平衡可解释性和预测性能。具体来说,LK-IB 包括三个步骤:(1) 将案件输入第一个模块,在该模块中使用一阶逻辑(FOL)规则进行预测,并在可能的情况下直接输出预测结果;(2) 如果 FOL 规则不适用,则将案件发送到第二个模块,在该模块中,案件分配器将案件分为 "简单 "或 "复杂 "两类;(3) 将简单案件发送到可解释性强的可解释模型,将复杂案件发送到性能卓越的黑盒模型。实验结果表明,与其他最先进的模型相比,LK-IB 框架能提供更多可解释性和更准确的预测。鉴于 LegalAI 中的大多数案例都很简单,模型组合的想法在实际应用中具有很大的潜力。
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LK-IB: a hybrid framework with legal knowledge injection for compulsory measure prediction

The interpretability of AI is just as important as its performance. In the LegalAI field, there have been efforts to enhance the interpretability of models, but a trade-off between interpretability and prediction accuracy remains inevitable. In this paper, we introduce a novel framework called LK-IB for compulsory measure prediction (CMP), one of the critical tasks in LegalAI. LK-IB leverages Legal Knowledge and combines an Interpretable model and a Black-box model to balance interpretability and prediction performance. Specifically, LK-IB involves three steps: (1) inputting cases into the first module, where first-order logic (FOL) rules are used to make predictions and output them directly if possible; (2) sending cases to the second module if FOL rules are not applicable, where a case distributor categorizes them as either “simple” or “complex“; and (3) sending simple cases to an interpretable model with strong interpretability and complex cases to a black-box model with outstanding performance. Experimental results demonstrate that the LK-IB framework provides more interpretable and accurate predictions than other state-of-the-art models. Given that the majority of cases in LegalAI are simple, the idea of model combination has significant potential for practical applications.

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来源期刊
CiteScore
9.50
自引率
26.80%
发文量
33
期刊介绍: Artificial Intelligence and Law is an international forum for the dissemination of original interdisciplinary research in the following areas: Theoretical or empirical studies in artificial intelligence (AI), cognitive psychology, jurisprudence, linguistics, or philosophy which address the development of formal or computational models of legal knowledge, reasoning, and decision making. In-depth studies of innovative artificial intelligence systems that are being used in the legal domain. Studies which address the legal, ethical and social implications of the field of Artificial Intelligence and Law. Topics of interest include, but are not limited to, the following: Computational models of legal reasoning and decision making; judgmental reasoning, adversarial reasoning, case-based reasoning, deontic reasoning, and normative reasoning. Formal representation of legal knowledge: deontic notions, normative modalities, rights, factors, values, rules. Jurisprudential theories of legal reasoning. Specialized logics for law. Psychological and linguistic studies concerning legal reasoning. Legal expert systems; statutory systems, legal practice systems, predictive systems, and normative systems. AI and law support for legislative drafting, judicial decision-making, and public administration. Intelligent processing of legal documents; conceptual retrieval of cases and statutes, automatic text understanding, intelligent document assembly systems, hypertext, and semantic markup of legal documents. Intelligent processing of legal information on the World Wide Web, legal ontologies, automated intelligent legal agents, electronic legal institutions, computational models of legal texts. Ramifications for AI and Law in e-Commerce, automatic contracting and negotiation, digital rights management, and automated dispute resolution. Ramifications for AI and Law in e-governance, e-government, e-Democracy, and knowledge-based systems supporting public services, public dialogue and mediation. Intelligent computer-assisted instructional systems in law or ethics. Evaluation and auditing techniques for legal AI systems. Systemic problems in the construction and delivery of legal AI systems. Impact of AI on the law and legal institutions. Ethical issues concerning legal AI systems. In addition to original research contributions, the Journal will include a Book Review section, a series of Technology Reports describing existing and emerging products, applications and technologies, and a Research Notes section of occasional essays posing interesting and timely research challenges for the field of Artificial Intelligence and Law. Financial support for the Journal of Artificial Intelligence and Law is provided by the University of Pittsburgh School of Law.
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