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                ??碼云GVP開源項目 12k star Uniapp+ElementUI 功能強大 支持多語言、二開方便! 廣告
                * 前面使用了兩個隱藏層。你可以嘗試使用一個或三個隱藏層,然后觀察對驗證精度和測試精度的影響。 * 嘗試使用更多或更少的隱藏單元,比如 32 個、64 個等。 * 嘗試使用`mse`損失函數代替`binary_crossentropy`。 * 嘗試使用`tanh`激活(這種激活在神經網絡早期非常流行)代替`relu`。
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