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Main Authors: Lee, Nayeon, Song, Jiwoo, Kang, Byeongcheol
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.25676
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author Lee, Nayeon
Song, Jiwoo
Kang, Byeongcheol
author_facet Lee, Nayeon
Song, Jiwoo
Kang, Byeongcheol
contents Multilingual retrieval-augmented generation (mRAG) is often implemented within a fixed retrieval space, typically via query or document translation or multilingual embedding vector representations. However, this approach may be inadequate for culturally grounded queries, in which retrieval-condition misalignment may occur. Even strong retrievers and generators may struggle to produce culturally relevant answers when sourcing evidence from inappropriate linguistic or regional contexts. To this end, we introduce CORAL (COntext-aware Retrieval with Agentic Loop, an adaptive retrieval methodology for mRAG that enables iterative refinement of both the retrieval space (corpora) and the retrieval probe (query) based on the quality of the evidence. The overall process includes: (1) selecting corpora, (2) retrieving documents, (3) critiquing evidence for relevance and cultural alignment, and (4) checking sufficiency. If the retrieved documents are insufficient to answer the query correctly, the system (5) reselects corpora and rewrites the query. Across two cultural QA benchmarks, CORAL achieves up to a 3.58%p accuracy improvement on low-resource languages relative to the strongest baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2604_25676
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CORAL: Adaptive Retrieval Loop for Culturally-Aligned Multilingual RAG
Lee, Nayeon
Song, Jiwoo
Kang, Byeongcheol
Computation and Language
Artificial Intelligence
Multilingual retrieval-augmented generation (mRAG) is often implemented within a fixed retrieval space, typically via query or document translation or multilingual embedding vector representations. However, this approach may be inadequate for culturally grounded queries, in which retrieval-condition misalignment may occur. Even strong retrievers and generators may struggle to produce culturally relevant answers when sourcing evidence from inappropriate linguistic or regional contexts. To this end, we introduce CORAL (COntext-aware Retrieval with Agentic Loop, an adaptive retrieval methodology for mRAG that enables iterative refinement of both the retrieval space (corpora) and the retrieval probe (query) based on the quality of the evidence. The overall process includes: (1) selecting corpora, (2) retrieving documents, (3) critiquing evidence for relevance and cultural alignment, and (4) checking sufficiency. If the retrieved documents are insufficient to answer the query correctly, the system (5) reselects corpora and rewrites the query. Across two cultural QA benchmarks, CORAL achieves up to a 3.58%p accuracy improvement on low-resource languages relative to the strongest baselines.
title CORAL: Adaptive Retrieval Loop for Culturally-Aligned Multilingual RAG
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2604.25676