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title: "HARS(调和适应保留评分)"
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created: 2026-05-21
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type: concept
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tags: ["evaluation-metric", "knowledge-injection", "continual-learning"]
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sources: ["[[kore-knowledge-injection]]"]
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---
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# HARS(调和适应保留评分)
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## 定义
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HARS(Harmonized Adaptation-Retention Score)是 [[kore-knowledge-injection|KORE]] 提出的**统一评估指标**,将[[knowledge-adaptation|知识适应]]和[[knowledge-retention|知识保留]]整合为单一调和分数,类似 F1 平衡 Precision 和 Recall。
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## 公式
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HARS = 2 · (f_A · f_R) / (f_A + f_R)
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其中:
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- f_A = G_A / (G_A + 100) × 100:归一化适应分数
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- f_R = G_R + 100:归一化保留分数
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- G_A = (K.A - K.A_0) / K.A_0:适应相对增益
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- G_R = (K.R - K.R_0) / K.R_0:保留相对增益
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- K.A_0, K.R_0:预训练模型的基准表现
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## 意义
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知识注入方法常面临"适应-保留"权衡——提升一方面往往以牺牲另一方面为代价。HARS 提供了一个**单一数值**来衡量方法的整体平衡性,而非分散在多个指标中难以比较。
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## 参见
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- [[knowledge-adaptation|知识适应]]
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- [[knowledge-retention|知识保留]]
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- [[kore-knowledge-injection|KORE]]
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