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Comparative benchmarking of retrieval-augmented generation reranker for medical domain

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  • Additional Information
    • Contributors:
      REN, Tsang Ing; http://lattes.cnpq.br/0584418432535071; https://buscatextual.cnpq.br/buscatextual/visualizacv.do?id=K4723420U2&tokenCaptchar=03AFcWeA51yoC1oQDbWoyrGypOjBF0-qOrwGpyv6MPXsDeY2biWAECHynTwU9u16QklN5C0hvK17umg1G1wiMmInJbnAeBV67SYzRFljaDqyFaqF8S77XOEQ_LkKbiQUAbBvnHcTXJugBM9Mllq7poEX5IrLqFPsVOJ40KdE48B_IStfXU0FjwiPRri9UZqMOAXgCxJ5NuCiZni3X9cxfocovEnxLuoYCt7JngB49BqMOCNinMxcmXOituG9x77elOcsLzQNNDvEY0wR-JuuAJ4IzvA0BBhXIore9f0E4JoH1WSdVERpOP_4aBvGsVJsKAMXqtSLa9vzdw3AkEmW_mbT0_OQFthsyVrlw3lHsRailvd1NDMI9GCWqY3e1jgSYMwy55flcG0rtTtx-X7deGGY8qeXP1bmCfahFEpqRZIIq3I7GQt_wkttKj4JkqykbNHzMFTH7ZNwqEu5CrRMKDl4VDe7MlziruNqBAmmlVR_3z2MbqRMQ-ukRcK0DO-W4dTahbr93sl49HL8SQui6owscbdhOIMAZm3fQbPRjsw1V52wAdl-tpAtqSs4CAk06e0erUK7hd9ZqNb-I4GHvFv8EPylIlKEWOnD7IMzl8UMJ-UwTo7qy6IoeEWtv5Ax-0ETCg9eMLtcpljq-Ujj7TTKj41JJ1Txk0JKpP8Kz4VCcXsNf27di1T_G-IXnOFq5EkdOy_eV1bLqj-zaVyZ0zAzpGT2OTLCQ8stI_J3PbG1icFRmELEosQFBLKYlAn8ybiKuDWWCStuWJEwj3NBCP5I80amJFSO2PLrEo5uUwKf70tqQ-kfM22epvwS_DOnmJ2IwMv4MLm2mD-HCczlUC3k6cZ6XmxcUByWcghrr4PPsUZvOmXDfjb4qg9ov1_69Qm-eNnn3G4PPq3T4OjoH6BpWv3Z-6kbvWSd8WykDsGCA23yfIr3G4jxM
    • Publication Date:
      2025
    • Collection:
      Repositório Institucional UFPE (Universidade Federal de Pernambuco)
    • Abstract:
      9,5 ; The exponential growth of digital medical information poses significant challenges in delivering reliable, evidence-based responses to clinical inquiries. Traditional systems often fall short in bridging the gap between vast data repositories and the need for authoritative, contextually relevant insights. In this study, we introduce a pipeline that leverages a Retrieval-Augmented Generation reranker architecture, combined with a Chain-of-Thought (CoT) prompting strategy, to enhance the performance of Large Language Models in addressing complex medical questions. By integrating a robust retrieval mechanism that sources trustworthy evidence from established medical literature and by refining the information with reranking, our approach not only improves answer accuracy but also demonstrates that larger models can be effectively distilled into smaller, more resource-efficient variants while maintaining comparable performance. The pipeline is evaluated in zero-shot question-answering scenarios, employing a question-only retrieval strategy to simulate realistic clinical contexts where prior domain-specific fine-tuning is absent. This work underscores the potential of combining retrieval techniques with sequential reasoning to overcome the inherent challenges in medical AI, paving the way for more accurate, transparent, and accessible systems in healthcare applications. ; O crescimento exponencial de informações médicas digitais apresenta desafios significativos na entrega de respostas confiáveis e baseadas em evidências para consultas clínicas. Sistemas tradicionais frequentemente falham em preencher a lacuna entre vastos repositórios de dados e a necessidade de insights contextualmente relevantes e autorizados. Neste estudo, apresentamos um pipeline que utiliza uma arquitetura de Retrieval-Augmented Generation (RAG) com rerranqueamento, combinada a uma estratégia de Chain-of-Thought (CoT), para aprimorar o desempenho de Modelos de Linguagem de Grande Porte (LLMs) na abordagem de questões médicas complexas. Ao ...
    • File Description:
      14p.; application/pdf
    • Relation:
      https://repositorio.ufpe.br/handle/123456789/64920
    • Online Access:
      https://repositorio.ufpe.br/handle/123456789/64920
    • Rights:
      openAccess ; https://creativecommons.org/licenses/by-nc-nd/4.0/
    • Accession Number:
      edsbas.28A93EBE