Key Point Analysis(KPA) is a relatively new task in NLP that combines summarization and classification by extracting argumentative key points (KPs) for a topic from a collection of texts and categorizing their closeness to the different arguments. In our work, we focus on the legal domain and develop methods that identify and extract KPs from premises derived from texts of judgments. The first method is an adaptation to an existing state-of-the-art method, and the two others are new methods that we developed from scratch. We present our methods and examples of their outputs, as well a comparison between them. The full evaluation of our results is done in the matching task -- match between the generated KPs to arguments (premises).
翻译:关键分析(KPA)是国家劳工政策中一项相对较新的任务,它通过从文本汇编中提取一个专题的引证关键点并将其与不同论点的近距离分类,将归纳和分类结合起来。我们在工作中侧重于法律领域,制定从判决文本中得出的前提中识别和提取KP的方法。第一种方法是调整现有的最新方法,另外两种方法是我们从零开始开发的新方法。我们介绍了我们的方法及其产出的示例,并比较了它们。我们的成果是在匹配任务中进行全面评估的 -- -- 将生成的KP与论据(假设)相匹配。