Automatic detection of arguments in legal texts 论文
2007引用 262
Natural Language Processing TechniquesTopic ModelingArtificial Intelligence in Law
摘要
This paper provides the results of experiments on the detection of arguments in texts among which are legal texts. The detection is seen as a classification problem. A classifier is trained on a set of annotated arguments. Different feature sets are evaluated involving lexical, syntactic, semantic and discourse properties of the texts. The experiments are a first step in the context of automatically classifying arguments in legal texts according to their rhetorical type and their visualization for convenient access and search.