From 663a88a5873233147ea476a0b68ea62e3a32b6ca Mon Sep 17 00:00:00 2001 From: ElmaDavies <1306014226@qq.com> Date: Mon, 9 Sep 2019 19:59:29 +0800 Subject: [PATCH] =?UTF-8?q?=E7=BF=BB=E8=AF=91=E6=94=B9=E8=BF=9B=EF=BC=8C?= =?UTF-8?q?=E6=A0=BC=E5=BC=8F=E6=A0=A1=E5=AF=B9?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- .../display-deep-learning-model-training-history-in-keras.md | 4 +++- 1 file changed, 3 insertions(+), 1 deletion(-) diff --git a/docs/dl-keras/display-deep-learning-model-training-history-in-keras.md b/docs/dl-keras/display-deep-learning-model-training-history-in-keras.md index fa48370..3f62430 100644 --- a/docs/dl-keras/display-deep-learning-model-training-history-in-keras.md +++ b/docs/dl-keras/display-deep-learning-model-training-history-in-keras.md @@ -108,12 +108,14 @@ plt.show() 从精度图中我们可以看到,由于两个数据集的精度趋势在过去几个训练迭代中仍在上升,因此模型可能可以受到更多的训练,我们还可以看到,两个数据集可比较的技巧,显示了模型尚未过度学习训练数据集。 ![Plot of Model Accuracy on Train and Validation Datasets](img/aa735153796f8cda098d2fe7fb675e75.png) + 图:训练和验证数据集的模型精度图 从损失图中我们可以看到,模型在训练和验证数据集(标记测试)上具有可比较的性能,如果这些相互平行图开始一较为一致的分散,这可能是一个模型过早停止训练的信号。 ![Plot of Model Loss on Training and Validation Datasets](img/429db1e26cf59719f9b941d5e8a7b919.png) -图:关于训练和验证数据集的模型损失情节 + +图:关于训练和验证数据集的模型损失图 ## 摘要 -- GitLab