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Main Authors: Gakhar, Ishaan, Nandwani, Harsh
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.22292
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author Gakhar, Ishaan
Nandwani, Harsh
author_facet Gakhar, Ishaan
Nandwani, Harsh
contents The classification of legal documents from an unstructured data corpus has several crucial applications in downstream tasks. Documents relevant to court filings are key in use cases such as drafting motions, memos, and outlines, as well as in tasks like docket summarisation, retrieval systems, and training data curation. Current methods classify based on provided metadata, LLM-extracted metadata, or multimodal methods. These methods depend on structured data, metadata, and extensive computational power. This task is approached from a perspective of leveraging discriminative features in the documents between classes. The authors propose ReLeVAnT, a framework for legal document binary classification. ReLeVAnT utilises n-gram processing, contrastive score matching, and a shallow neural network as the primary drivers for discriminative classification. It leverages one-time keyword extraction per corpus, followed by a shallow classifier to swiftly and reliably classify documents with 99.3% accuracy and 98.7% F1 score on the LexGLUE dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22292
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ReLeVAnT: Relevance Lexical Vectors for Accurate Legal Text Classification
Gakhar, Ishaan
Nandwani, Harsh
Computation and Language
Artificial Intelligence
I.2.1; J.1
The classification of legal documents from an unstructured data corpus has several crucial applications in downstream tasks. Documents relevant to court filings are key in use cases such as drafting motions, memos, and outlines, as well as in tasks like docket summarisation, retrieval systems, and training data curation. Current methods classify based on provided metadata, LLM-extracted metadata, or multimodal methods. These methods depend on structured data, metadata, and extensive computational power. This task is approached from a perspective of leveraging discriminative features in the documents between classes. The authors propose ReLeVAnT, a framework for legal document binary classification. ReLeVAnT utilises n-gram processing, contrastive score matching, and a shallow neural network as the primary drivers for discriminative classification. It leverages one-time keyword extraction per corpus, followed by a shallow classifier to swiftly and reliably classify documents with 99.3% accuracy and 98.7% F1 score on the LexGLUE dataset.
title ReLeVAnT: Relevance Lexical Vectors for Accurate Legal Text Classification
topic Computation and Language
Artificial Intelligence
I.2.1; J.1
url https://arxiv.org/abs/2604.22292