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Applying a Convolutional Neural Network to Legal Question Answering

机译:将卷积神经网络应用于法律问答

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摘要

Our legal question answering system combines legal information retrieval and textual entailment, and we describe a legal question answering system that exploits a deep convolutional neural network. We have evaluated our system using the training/test data from the competition on legal information extraction/entailment (COLIEE). The competition focuses on the legal information processing related to answering yeso questions from Japanese legal bar exams, and it consists of three phases: ad-hoc legal information retrieval, textual entailment, and a learning model-driven combination of the two phases. Phase 1 requires the identification of Japan civil law articles relevant to a legal bar exam query. For that phase, we have implemented a combined TF-IDF and Ranking SVM information retrieval component. Phase 2 requires the system to answer "Yes" or "No" to previously unseen queries, by comparing extracted meanings of queries with relevant articles. Our training of an entailment model focuses on features based on word embeddings, syntactic similarities and identification of negation/antonym relations. We augment our textual entailment component with a convolutional neural network with dropout regularization and Rectified Linear Units. To our knowledge, our study is the first to adapt deep learning for textual entailment. Experimental evaluation demonstrates the effectiveness of the convolutional neural network and dropout regularization. The results show that our deep learning-based method outperforms our baseline SVM-based supervised model and K-means clustering.
机译:我们的法律问答系统结合了法律信息检索和文本蕴含,我们描述了利用深度卷积神经网络的法律问答系统。我们已经使用来自法律信息提取/包含(COLIEE)比赛中的培训/测试数据对我们的系统进行了评估。比赛的重点是与回答日本法律律师考试中的是/否问题有关的法律信息处理,它分为三个阶段:即席法律信息检索,文本内容确定以及由学习模型驱动的两个阶段的组合。第1阶段要求识别与法律律师资格考试查询相关的日本民法文章。在该阶段,我们实现了TF-IDF和Rank SVM信息检索组件的组合。第2阶段要求系统通过将查询的提取含义与相关文章进行比较,对以前看不见的查询回答“是”或“否”。我们对蕴含模型的训练重点在于基于单词嵌入,句法相似性和否定/反义词关系识别的特征。我们使用带有辍学正则化和整流线性单位的卷积神经网络来扩展文本包含组件。据我们所知,我们的研究是第一个使深度学习适应于文本蕴涵的研究。实验评估证明了卷积神经网络和辍学正则化的有效性。结果表明,基于深度学习的方法优于基于基线SVM的监督模型和K-means聚类。

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