Automatic Taxonomy Generation - A Use-Case in the Legal Domain

10/04/2017
by   Cécile Robin, et al.
0

A key challenge in the legal domain is the adaptation and representation of the legal knowledge expressed through texts, in order for legal practitioners and researchers to access this information easier and faster to help with compliance related issues. One way to approach this goal is in the form of a taxonomy of legal concepts. While this task usually requires a manual construction of terms and their relations by domain experts, this paper describes a methodology to automatically generate a taxonomy of legal noun concepts. We apply and compare two approaches on a corpus consisting of statutory instruments for UK, Wales, Scotland and Northern Ireland laws.

READ FULL TEXT
research
06/13/2022

Indian Legal Text Summarization: A Text Normalisation-based Approach

In the Indian court system, pending cases have long been a problem. Ther...
research
01/20/2021

Using Full-text Content of Academic Articles to Build a Methodology Taxonomy of Information Science in China

Research on the construction of traditional information science methodol...
research
10/03/2018

Fast Approach to Build an Automatic Sentiment Annotator for Legal Domain using Transfer Learning

This study proposes a novel way of identifying the sentiment of the phra...
research
05/31/2014

Bridging the gap between Legal Practitioners and Knowledge Engineers using semi-formal KR

The use of Structured English as a computation independent knowledge rep...
research
11/03/2021

Building Legal Datasets

Data-centric AI calls for better, not just bigger, datasets. As data pro...
research
07/19/2023

RaTE: a Reproducible automatic Taxonomy Evaluation by Filling the Gap

Taxonomies are an essential knowledge representation, yet most studies o...
research
01/31/2022

Don't let Ricci v. DeStefano Hold You Back: A Bias-Aware Legal Solution to the Hiring Paradox

Companies that try to address inequality in employment face a hiring par...

Please sign up or login with your details

Forgot password? Click here to reset