Relevance Context Learning generates explicit relevance narratives from judged examples to guide LLM assessors, outperforming zero-shot and standard in-context learning for IR relevance judgments.
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cs.IR 2years
2026 2verdicts
UNVERDICTED 2representative citing papers
Reproducibility study finds TRIANGLE yields up to +8.7 Recall@1 gains in zero-shot multimodal retrieval but fails to reproduce learning-from-scratch results owing to joint optimization instability with DTM loss.
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Hybrid Pooling with LLMs via Relevance Context Learning
Relevance Context Learning generates explicit relevance narratives from judged examples to guide LLM assessors, outperforming zero-shot and standard in-context learning for IR relevance judgments.
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RE-TRIANGLE: Does TRIANGLE Enable Multimodal Alignment Beyond Cosine Similarity in Retrieval?
Reproducibility study finds TRIANGLE yields up to +8.7 Recall@1 gains in zero-shot multimodal retrieval but fails to reproduce learning-from-scratch results owing to joint optimization instability with DTM loss.