We report on an experiment in case outcome classification on European Court of Human Rights cases where our model first learns to identify the convention articles allegedly violated by the state from case facts descriptions, and subsequently uses that information to classify whether the court finds a violation of those articles. We assess the dependency between these two tasks at the feature and outcome level. Furthermore, we leverage a hierarchical contrastive loss to pull together article-specific representations of cases at the higher level, leading to distinctive article clusters. The cases in each article cluster are further pulled closer based on their outcome, leading to sub-clusters of cases with similar outcomes. Our experiment results demonstrate that, given a static pre-trained encoder, our models produce a small but consistent improvement in classification performance over single-task and joint models without contrastive loss.
翻译:我们报告对欧洲人权法院案件进行案件结果分类的实验,我们的模式首先从案件事实描述中发现国家据称违反的公约条款,然后利用这些信息对法院是否认为违反这些条款进行分类。我们评估这两个任务之间在特征和结果层面的依赖性。此外,我们利用等级对比性损失来将更高层次的特定条款案件陈述结合起来,从而形成不同的条款组别。每个条款组别中的案件根据结果进一步拉近,导致出现类似结果的子组别。我们的实验结果表明,鉴于一个固定的预先训练的编码器,我们的模型在分类业绩方面与单一任务和联合模型相比,在不造成对比性损失的情况下,在分类业绩方面产生微小但一致的改进。