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                # Keras 高級激活層 這些層實現了高級激活函數,這些函數無法作為簡單的底層后端函數實現。它們的操作類似于我們在核心層部分中介紹的 `Activation()` 層: | **層名稱** | **描述** | | --- | --- | | `LeakyReLU` | 該層計算`ReLU` 激活函數的泄漏版本。 | | `PReLU` | 該層計算參數 `ReLU` 激活函數。 | | `ELU` | 該層計算指數線性單元激活函數。 | | `ThresholdedReLU` | 該層計算閾值版本的`ReLU`激活函數。 |
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