zhang17173/Event-Extraction
基于法律裁判文书的事件抽取及其应用,包括数据的分词、词性标注、命名实体识别、事件要素抽取和判决结果预测等内容
This project helps legal professionals and researchers automatically extract crucial details from Chinese traffic accident court judgments. It takes raw legal case documents as input, processes them, identifies key event elements, and outputs structured information that can be used to predict judgment outcomes and find similar past cases. Legal analysts, judges, and law researchers who need to efficiently process large volumes of court documents would benefit.
604 stars.
Use this if you need to analyze Chinese traffic accident court judgments to extract structured event information, predict judicial outcomes, or find precedents.
Not ideal if your legal documents are not traffic accident judgments, or if they are in a language other than Chinese.
Stars
604
Forks
135
Language
Python
License
—
Category
Last pushed
Mar 07, 2026
Commits (30d)
0
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