论文标题
收费预测模型学习法律理论吗?
Do Charge Prediction Models Learn Legal Theory?
论文作者
论文摘要
收费预测任务旨在预测案件的事实描述。最近的模型已经在这项任务中实现了令人印象深刻的准确性,但是,关于他们用来执行判决的机制几乎没有理解。对于实际应用,指控预测模型应符合民法国家中某些法律理论的统一,因为在民法框架下,所有案件均根据某些地方法律理论进行判断。例如,在中国,几乎所有刑事法官都根据四个要素理论(FET)做出决定。在本文中,我们认为,可信赖的指控预测模型应考虑法律理论,并在模型解释中坚持先前的研究,我们提出三个信任模型的原则,应遵循这项任务,这些模型是否是敏感,选择性,选择性,选择性的,以便进一步研究了一个新的范围。我们的发现表明,尽管现有的电荷预测模型符合基准数据集中的选择性原理,但其中大多数仍然不够敏感,并且无法满足无罪的假设。我们的代码和数据集在https://github.com/zhenweian/exp_ljp上发布。
The charge prediction task aims to predict the charge for a case given its fact description. Recent models have already achieved impressive accuracy in this task, however, little is understood about the mechanisms they use to perform the judgment.For practical applications, a charge prediction model should conform to the certain legal theory in civil law countries, as under the framework of civil law, all cases are judged according to certain local legal theories. In China, for example, nearly all criminal judges make decisions based on the Four Elements Theory (FET).In this paper, we argue that trustworthy charge prediction models should take legal theories into consideration, and standing on prior studies in model interpretation, we propose three principles for trustworthy models should follow in this task, which are sensitive, selective, and presumption of innocence.We further design a new framework to evaluate whether existing charge prediction models learn legal theories. Our findings indicate that, while existing charge prediction models meet the selective principle on a benchmark dataset, most of them are still not sensitive enough and do not satisfy the presumption of innocence. Our code and dataset are released at https://github.com/ZhenweiAn/EXP_LJP.