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Keywords: Retrieval-augmented generation
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Journal Articles
Comparative evaluation of embedding and generative model combinations in retrieval-augmented generation pipelines
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Journal:
Data Technologies and Applications
Data Technologies and Applications 1–19.
Published: 23 June 2026
...Mateo Hitl; Marina Bagić Babac; Vedran Mornar Purpose Retrieval-augmented generation (RAG) systems integrate information retrieval with generative language models to improve the relevance, accuracy and explainability of AI-driven responses. This study evaluates how different configurations...
