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CascadeDebate: Multi-Agent Deliberation for Cost-Aware LLM Cascades

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Cascaded LLM systems coordinate models of varying sizes with human experts to balance accuracy, cost, and abstention under uncertainty. However, single-model tiers at each stage often struggle with ambiguous queries, triggering premature escalations to costlier models or experts due to under-confidence and inefficient compute scaling. CascadeDebate addresses this gap by inserting multi-agent deliberation directly at each tier's escalation boundary. Confidence-based routers activate lightweight agent ensembles only for uncertain cases, enabling consensus-driven resolution of ambiguities internally without invoking higher-cost upgrades. Our unified architecture alternates single-model inference with selective multi-agent deliberation across model scales, culminating in human experts as the final fallback. This design scales test-time compute dynamically according to query difficulty. Across five benchmarks spanning science, medicine, and general knowledge, CascadeDebate outperforms strong single-model cascades and standalone multi-agent systems by up to 26.75 percent. An online threshold optimizer proves essential, boosting accuracy by 20.98 to 52.33 percent relative improvement over fixed policies and enabling elastic adaptation to real-world distributions.

Raeyoung Chang, Dongwook Kwon, Jisoo Lee, Nikhil Verma• 2026

Related benchmarks

TaskDatasetResultRank
Question AnsweringARC Easy--
597
Medical Question AnsweringMedMCQA
Accuracy76.33
346
Multi-task Language UnderstandingMMLU
MMLU Accuracy82.67
59
Medical Question AnsweringMedQA
Accuracy86.44
40
Question AnsweringARC Challenge
Accuracy92.89
34
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