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RANKVIDEO: Reasoning Reranking for Text-to-Video Retrieval

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Reranking is a critical component of modern retrieval systems, which typically pair an efficient first-stage retriever with a more expressive model to refine results. While large reasoning models have driven rapid progress in text-centric reranking, reasoning-based reranking for video retrieval remains underexplored. To address this gap, we introduce RANKVIDEO, a reasoning-based reranker for video retrieval that explicitly reasons over query-video pairs using video content to assess relevance. RANKVIDEO is trained using a two-stage curriculum consisting of perception-grounded supervised fine-tuning followed by reranking training that combines pointwise, pairwise, and teacher confidence distillation objectives, and is supported by a data synthesis pipeline for constructing reasoning-intensive query-video pairs. Experiments on the large-scale MultiVENT 2.0 benchmark demonstrate that RANKVIDEO consistently improves retrieval performance within a two-stage framework, yielding an average improvement of 31% on nDCG@10 and outperforming text-only and vision-language reranking alternatives, while more efficient.

Tyler Skow, Alexander Martin, Benjamin Van Durme, Rama Chellappa, Reno Kriz• 2026

Related benchmarks

TaskDatasetResultRank
Video RetrievalMULTIVENT 2.0 (test)
Recall@1063.4
12
Article GenerationWikiVideo (test)
InfoP Score94.5
10
Multimodal RetrievalWikiVideo (test)
Alpha-nDCG62.8
10
Video RetrievalMULTIVENT 2.0
Recall@1059
7
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