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CuSINeS: Curriculum-driven Structure Induced Negative Sampling for Statutory Article Retrieval

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arxiv 2404.00590 v1 pith:T67UFHLB submitted 2024-03-31 cs.IR cs.CL

CuSINeS: Curriculum-driven Structure Induced Negative Sampling for Statutory Article Retrieval

classification cs.IR cs.CL
keywords cusinesmodelnegativesamplingarticledifficultynegativesretrieval
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we introduce CuSINeS, a negative sampling approach to enhance the performance of Statutory Article Retrieval (SAR). CuSINeS offers three key contributions. Firstly, it employs a curriculum-based negative sampling strategy guiding the model to focus on easier negatives initially and progressively tackle more difficult ones. Secondly, it leverages the hierarchical and sequential information derived from the structural organization of statutes to evaluate the difficulty of samples. Lastly, it introduces a dynamic semantic difficulty assessment using the being-trained model itself, surpassing conventional static methods like BM25, adapting the negatives to the model's evolving competence. Experimental results on a real-world expert-annotated SAR dataset validate the effectiveness of CuSINeS across four different baselines, demonstrating its versatility.

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