RECOVER: Robust Entity Correction via agentic Orchestration of hypothesis Variants for Evidence-based Recovery
arXiv cs.CL / 3/18/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- RECOVER presents an agentic correction framework that uses multiple ASR hypotheses, retrieves relevant entities, and applies LLM-based corrections under constraints to reduce entity errors.
- The framework uses several hypothesis strategies (1-Best, Entity-Aware Select, ROVER Ensemble, and LLM-Select) to strengthen evidence for corrections.
- It was evaluated on five diverse datasets, achieving 8-46% relative reductions in E-WER and up to 22 percentage points in recall, while preserving overall WER.
- LLM-Select delivered the best overall performance by balancing entity correction improvements with maintaining WER.
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