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concepts/epistemic-uncertainty.md
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title: "认知不确定性 (Epistemic Uncertainty)"
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created: 2026-06-10
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updated: 2026-06-10
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type: concept
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tags: ["uncertainty-quantification", "bayesian-deep-learning", "clinical-ai"]
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sources: ["[[principled-uncertainty-clinical-ai]]"]
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---
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# 认知不确定性 (Epistemic Uncertainty)
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**认知不确定性**(Epistemic Uncertainty)是模型由于知识不足而产生的不确定性,可通过增加训练数据来减少。与之相对的是 [[aleatoric-uncertainty|随机不确定性]](数据本身的噪声,不可减少)。
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## 形式化定义
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在贝叶斯深度学习中,通过 [[mc-dropout|MC Dropout]] 进行 T 次随机前向传播来估计:
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方差 = (1/T) * 求和_t [f(z_t) - 均值]^2
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其中 z_t 通过重参数化采样:z_t = mu_fused + epsilon_t * sigma_fused, epsilon_t ~ N(0, I)
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## 临床意义
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认知不确定性在临床 AI 中的关键价值:
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- **分布外检测**:当患者特征偏离训练分布时(如农村医院患者),认知不确定性自然升高
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- **公平性信号**:系统性的认知不确定性差异揭示了模型训练数据的代表性不足
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- **人工升级触发**:高认知不确定性指示模型"知道自己不知道",应触发专家审核
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## 与其他不确定性的区别
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| 类型 | 来源 | 可减少性 | 估计方法 |
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|------|------|---------|---------|
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| **认知** | 模型知识不足 | 可减少 | MC Dropout 方差 |
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| 随机 | 数据噪声 | 不可减少 | 专用输出头 |
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## 参考
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- [[principled-uncertainty-clinical-ai|Principled Uncertainty in Clinical AI]]
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- [[uncertainty-quantification|不确定性量化]]
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- [[bayesian-deep-learning|贝叶斯深度学习]]
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- [[expected-calibration-error|ECE]]
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