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Autori principali: Hatem, M'hamed Amine, Batata, Sofiane, Mammasse, Amine, Azouaou, Faiçal
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.00731
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author Hatem, M'hamed Amine
Batata, Sofiane
Mammasse, Amine
Azouaou, Faiçal
author_facet Hatem, M'hamed Amine
Batata, Sofiane
Mammasse, Amine
Azouaou, Faiçal
contents Test collections are essential for evaluating retrieval and re-ranking models. However, constructing such collections is challenging due to the high cost of manual annotation, particularly in specialized domains like Algerian legal texts, where high-quality corpora and relevance judgments are scarce. To address this limitation, we propose STCALIR, a framework for generating semi-synthetic test collections directly from raw legal documents. The pipeline follows the Cranfield paradigm, maintaining its core components of topics, corpus, and relevance judgments, while significantly reducing manual effort through automated multi-stage retrieval and filtering, achieving a 99% reduction in annotation workload. We validate STCALIR using the Mr. TyDi benchmark, demonstrating that the resulting semi-synthetic relevance judgments yield retrieval effectiveness comparable to human-annotated evaluations (Hit@10 \approx 0.785). Furthermore, system-level rankings derived from these labels exhibit strong concordance with human-based evaluations, as measured by Kendall's τ (0.89) and Spearman's \r{ho} (0.92). Overall, STCALIR offers a reproducible and cost-efficient solution for constructing reliable test collections in low-resource legal domains.
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spellingShingle STCALIR: Semi-Synthetic Test Collection for Algerian Legal Information Retrieval
Hatem, M'hamed Amine
Batata, Sofiane
Mammasse, Amine
Azouaou, Faiçal
Information Retrieval
Test collections are essential for evaluating retrieval and re-ranking models. However, constructing such collections is challenging due to the high cost of manual annotation, particularly in specialized domains like Algerian legal texts, where high-quality corpora and relevance judgments are scarce. To address this limitation, we propose STCALIR, a framework for generating semi-synthetic test collections directly from raw legal documents. The pipeline follows the Cranfield paradigm, maintaining its core components of topics, corpus, and relevance judgments, while significantly reducing manual effort through automated multi-stage retrieval and filtering, achieving a 99% reduction in annotation workload. We validate STCALIR using the Mr. TyDi benchmark, demonstrating that the resulting semi-synthetic relevance judgments yield retrieval effectiveness comparable to human-annotated evaluations (Hit@10 \approx 0.785). Furthermore, system-level rankings derived from these labels exhibit strong concordance with human-based evaluations, as measured by Kendall's τ (0.89) and Spearman's \r{ho} (0.92). Overall, STCALIR offers a reproducible and cost-efficient solution for constructing reliable test collections in low-resource legal domains.
title STCALIR: Semi-Synthetic Test Collection for Algerian Legal Information Retrieval
topic Information Retrieval
url https://arxiv.org/abs/2604.00731