--- title: "预测不变区间 (Prediction-Invariant Intervals)" created: 2026-07-04 updated: 2026-07-04 type: concept tags: [certification, interval, prediction, semantics] sources: ["arXiv:2606.18839"] --- # 预测不变区间 (Prediction-Invariant Intervals) 语义鲁棒性认证的输出:将语义 extent 范围 $[\varphi_a, \varphi_{a'}]$ 切分为若干子区间,在每个区间内 VLM 预测类别保持不变。 ## 计算过程 1. **闭式 margin**:将语义变换 $\gamma(\varphi)$ 代入 pairwise margin $$m_{c,c'}(\varphi) = A_{c,c'} \cos\varphi + B_{c,c'} \sin\varphi + C_{c,c'}$$ 2. **求解穿越点**:$m_{c,c'}(\varphi) = 0$ 的闭式解 3. **收集排序**:所有类别对的穿越点集合 $\{\varphi_\ell\}_{\ell=0}^L$ 4. **区间划分**:$(\varphi_\ell, \varphi_{\ell+1})$ 内预测恒定 ## 证书输出 $$\mathcal{S} = \{((\varphi_\ell, \varphi_{\ell+1}), y_\ell) : \ell = 0, \ldots, L-1\}$$ - 每个区间标注预测类别 $y_\ell$ - 区间边界对应类别翻转点(class flip) ## 聚合指标:预测不变概率 $$\mathbb{P}(f(\gamma(\varphi)) = \hat{y}) = \frac{1}{\varphi_{a'} - \varphi_a} \sum_{\ell: y_\ell = \hat{y}} (\varphi_{\ell+1} - \varphi_\ell)$$ 度量整个语义 extent 范围内预测保持不变的**总比例**。 ## 参考 - [[semantic-robustness-certification|语义鲁棒性认证]] - [[semantic-extent|语义 extent]] - [[voronoi-decision-regions|Voronoi 决策区域]] - [[semantic-robustness-certification-vlm-2026|论文原文]]