Towards Trustworthy Reranking: A Simple yet Effective Abstention Mechanism
Gisserot-Boukhlef, Hippolyte, Faysse, Manuel, Malherbe, Emmanuel, Hudelot, Céline, Colombo, Pierre
–arXiv.org Artificial Intelligence
Neural Information Retrieval (NIR) has significantly improved upon heuristic-based IR systems. Yet, failures remain frequent, the models used often being unable to retrieve documents relevant to the user's query. We address this challenge by proposing a lightweight abstention mechanism tailored for real-world constraints, with particular emphasis placed on the reranking phase. We introduce a protocol for evaluating abstention strategies in a black-box scenario, demonstrating their efficacy, and propose a simple yet effective data-driven mechanism. We provide open-source code for experiment replication and abstention implementation, fostering wider adoption and application in diverse contexts.
arXiv.org Artificial Intelligence
Apr-2-2024
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