Legal Judgment Prediction is one of the most acclaimed fields for the combined area of NLP, AI, and Law. By legal prediction we mean an intelligent systems capable to predict specific judicial characteristics, such as judicial outcome, a judicial class, predict an specific case. In this research, we have used AI classifiers to predict judicial outcomes in the Brazilian legal system. For this purpose, we developed a text crawler to extract data from the official Brazilian electronic legal systems. These texts formed a dataset of second-degree murder and active corruption cases. We applied different classifiers, such as Support Vector Machines and Neural Networks, to predict judicial outcomes by analyzing textual features from the dataset. Our research showed that Regression Trees, Gated Recurring Units and Hierarchical Attention Networks presented higher metrics for different subsets. As a final goal, we explored the weights of one of the algorithms, the Hierarchical Attention Networks, to find a sample of the most important words used to absolve or convict defendants.
翻译:法律判决预测是NLP、AI和Law综合领域最受欢迎的领域之一。法律预测是指能够预测具体司法特征的智能系统,如司法结果、司法阶级、预测具体案件。在这项研究中,我们利用AI分类器预测巴西法律体系的司法结果。为此目的,我们开发了一个文本爬行器,从巴西官方电子法律体系中提取数据。这些文本形成了二级谋杀和现行腐败案件的数据集。我们应用了不同的分类器,例如支持矢量机和神经网络,通过分析数据集的文字特征来预测司法结果。我们的研究表明,递减树、重现单位和定级注意网络为不同的子群提出了更高的衡量标准。作为最终目标,我们探讨了一种算法的权重,即高压关注网络,以找到用来免除被告或定罪的最重要词的样本。