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MixReasoning: Switching Modes to Think

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arxiv 2510.06052 v2 pith:MPNVQBWF submitted 2025-10-07 cs.AI cs.CL

MixReasoning: Switching Modes to Think

classification cs.AI cs.CL
keywords reasoningmixreasoningstepsanswermodelssub-problemsthoughtability
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Reasoning models enhance performance by tackling problems in a step-by-step manner, decomposing them into sub-problems and exploring long chains of thought before producing an answer. However, applying extended reasoning to every step introduces substantial redundancy, as sub-problems vary widely in difficulty and complexity: a small number of pivotal steps are genuinely challenging and decisive for the final answer, while many others only involve straightforward revisions or simple computations. Therefore, a natural idea is to endow reasoning models with the ability to adaptively respond to this variation, rather than treating all steps with the same level of elaboration. To this end, we propose MixReasoning, a framework that dynamically adjusts the depth of reasoning within a single response. The resulting chain of thought then becomes a mixture of detailed reasoning on difficult steps and concise inference on simpler ones. Experiments on GSM8K, MATH-500, and AIME show that MixReasoning shortens reasoning length and substantially improves efficiency without compromising accuracy.

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  1. Mix-Quant: Quantized Prefilling, Precise Decoding for Agentic LLMs

    cs.CL 2026-05 unverdicted novelty 5.0

    Mix-Quant quantizes prefilling to NVFP4 and keeps BF16 for decoding in agentic LLMs, achieving up to 3x prefilling speedup while largely preserving task performance on long-context and agentic benchmarks.