AIIRNov 12, 2024

Unlocking Legal Knowledge with Multi-Layered Embedding-Based Retrieval

arXiv:2411.07739v17 citationsh-index: 1
Originality Synthesis-oriented
AI Analysis

This addresses the problem of retrieving complex legal information for legal professionals and systems, though it is incremental as it adapts existing embedding methods to a specific domain.

The paper tackles the challenge of capturing legal knowledge complexities by proposing a multi-layered embedding-based retrieval method for legal texts, resulting in enhanced retrieval tailored to user queries across different granularities.

This work addresses the challenge of capturing the complexities of legal knowledge by proposing a multi-layered embedding-based retrieval method for legal and legislative texts. Creating embeddings not only for individual articles but also for their components (paragraphs, clauses) and structural groupings (books, titles, chapters, etc), we seek to capture the subtleties of legal information through the use of dense vectors of embeddings, representing it at varying levels of granularity. Our method meets various information needs by allowing the Retrieval Augmented Generation system to provide accurate responses, whether for specific segments or entire sections, tailored to the user's query. We explore the concepts of aboutness, semantic chunking, and inherent hierarchy within legal texts, arguing that this method enhances the legal information retrieval. Despite the focus being on Brazil's legislative methods and the Brazilian Constitution, which follow a civil law tradition, our findings should in principle be applicable across different legal systems, including those adhering to common law traditions. Furthermore, the principles of the proposed method extend beyond the legal domain, offering valuable insights for organizing and retrieving information in any field characterized by information encoded in hierarchical text.

Foundations

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