--- title: "Hypothesis Tree Refinement (HTR)" created: 2026-06-24 updated: 2026-06-24 type: concept tags: ["autonomous-research", "agent", "tree-search", "knowledge-management"] sources: - "[[arbor-htr-2026]]" --- # Hypothesis Tree Refinement (HTR) HTR 是 Arbor 框架的核心方法:将自主科研的中间状态持久化为假设树,通过分支探索、执行反馈回写、洞察向上传播和 held-out 准入门控实现累积式科研进步。 ## 树节点结构 n = ⟨h, ι, µ⟩ - **h (Hypothesis)**:可验证的改进主张,粒度随深度细化(根=方向,叶=具体干预) - **ι (Insight)**:可复用的证据解读——非执行日志,紧致语义记忆 - **µ (Metadata)**:状态/分数/git ref ## 五步循环 ``` Observe → Ideate → Select → Dispatch → Backpropagate ``` 1. **Observe**:观察当前树状态(前沿、洞察、约束) 2. **Ideate**:在选定父节点下生成 k 个子假设 3. **Select**:选择最有前景的叶子调度执行 4. **Dispatch**:将叶子分配给隔离 Executor 5. **Backpropagate**:将执行结果(分数/洞察)写回节点,沿祖先路径向上抽象 ## 三种角色合一 - **搜索前沿**:活跃/验证/剪枝方向的可视化 - **长期记忆**:成功+失败的复用证据 - **可审计记录**:每个产物变更可追溯到动机假设 ## 参考 - [[arbor-htr-2026]] - [[coordinator-executor-architecture]] - [[autonomous-optimization-ao]]