40 lines
1.2 KiB
Markdown
40 lines
1.2 KiB
Markdown
---
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title: "Inference-Time Scaling(推理时扩展)"
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created: 2026-05-23
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updated: 2026-05-23
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type: concept
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tags: [inference, scaling, reasoning, compute]
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sources: [raw/papers/gram-generative-recursive-reasoning-2026.md]
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confidence: high
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---
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# Inference-Time Scaling
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> GRAM 提出的双维度推理扩展:不仅通过**递归深度**(deeper),还通过**并行轨迹采样数**(wider)来提升推理质量。
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## 两种扩展维度
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| 维度 | 方式 | 效果 |
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|------|------|------|
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| **深度** (Deep) | 增加递归步数 T | 更多精炼迭代 |
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| **宽度** (Wide) | 并行采样更多轨迹 | 更好的边际化估计、多解发现 |
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## 与传统扩展方式的区别
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- **Chain-of-Thought**: 只能 depth(更长 token 序列)
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- **Ensemble**: 只能 width(多个独立模型)
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- **GRAM**: **depth x width**(单一模型的递归深度 x 轨迹数)
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## 关键洞察
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深度和宽度的边际收益不同:
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- 深度对单解精炼最有效
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- 宽度对多解覆盖和不确定性处理最有效
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- 最优配置 = 任务依赖的资源分配
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## 相关概念
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- [[width-based-scaling]]
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- [[deep-and-wide-reasoning]]
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- [[gram-generative-recursive-reasoning|GRAM]]
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