使用条件随机场识别越南法律文本中的逻辑部分

N. T. Son, Nguyễn Thụy Phương Duyên, H. Quoc, Le-Minh Nguyen
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引用次数: 3

摘要

分析法律文书中的法律句子结构是构建法律工程知识管理系统的重要环节。本文提出了一种基于统计机器学习方法-条件随机场的越南法律文件逻辑部分识别新方法。除了单词特征、词性特征等语言特征外,我们还利用逻辑部分的语义特征如触发器特征、本体特征等来改进标注系统的结果。在越南商法数据集上进行实验,准确率为78.12%,召回率为68.72%。与现有的系统相比,它改善了对某些逻辑部分的识别结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing logical parts in Vietnamese legal texts using Conditional Random Fields
Analyzing the structure of legal sentences in legal document is an important phase to build a knowledge management system in Legal Engineering. This paper proposes a new approach to recognize logical parts in Vietnamese legal documents based on a statistic machine learning method - Conditional Random Fields. Beside linguistic features such as word features, part of speech features, we use semantic features of logical parts such as trigger features and ontology features to improve the result of the annotation system. Experiments were conducted in a Vietnamese Business Law data set and obtained 78.12% at precision and 68.72% at recall measure. Compare to state-of-the-art systems, it improves the result for recognizing some logical parts.
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