<p>Automating information extraction from legal documents and formalising
them into a machine understandable format has long been an integral challenge
to legal reasoning. Most approaches in the past consist of highly complex
solutions that use annotated syntactic structures and grammar to distil rules.
The current research trend is to utilise state-of-the-art natural language processing (NLP)
approaches to automate these tasks, with minimum human interference. In this
paper, based on its functional aspects, we propose a legal taxonomy of semantic
types in Korean legislation, such as definitional provision, deeming provision,
penalty, obligation, permission, prohibition, etc. In addition to this, a NLP classifier has
been developed to facilitate the automated legal norms classification process
and an overall F1 score of 0.97 has been achieved.</p><br>
History
School
La Trobe Law School
Publication Date
2020-11-04
Proceedings
Proceedings of The 12th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (KEOD 2020)
Publisher
ScitePress
Place of publication
Setúbal, Portugal
Pagination
86-97
ISBN-13
9789897584749
Name of conference
The 12th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (KEOD 2020)
Location
Setubal, Portugal
Starting Date
2020-11-02
Finshing Date
2020-11-04
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