We propose an adaptive environment (CABINET) to support caselaw analysis (identifying key argument elements) based on a novel cognitive computing framework that carefully matches various machine learning (ML) capabilities to the proficiency of a user. CABINET supports law students in their learning as well as professionals in their work. The results of our experiments focused on the feasibility of the proposed framework are promising. We show that the system is capable of identifying a potential error in the analysis with very low false positives rate (2.0-3.5%), as well as of predicting the key argument element type (e.g., an issue or a holding) with a reasonably high F1-score (0.74).
翻译:我们提议建立一个适应环境(CABINET),以支持基于新颖的认知计算框架的判例法分析(识别关键参数),该框架仔细地将各种机器学习(ML)能力与用户熟练程度相匹配。CABINET支持法律学生的学习以及专业工作者的工作。我们侧重于拟议框架可行性的实验结果很有希望。我们表明,该系统能够以非常低的假正数率(2.0-3.5%)在分析中找出潜在的错误,并预测关键参数类型(如问题或持有者)具有相当高的F1-score(0.74)。