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@ -232,7 +232,7 @@ print(accuracy.eval(feed_dict={x: mnist.test.images, y_: mnist.test.labels}))
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## Build a Multilayer Convolutional Network
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Getting 91% accuracy on MNIST is bad. It's almost embarrassingly bad. In this
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Getting 92% accuracy on MNIST is bad. It's almost embarrassingly bad. In this
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section, we'll fix that, jumping from a very simple model to something
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moderately sophisticated: a small convolutional neural network. This will get us
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to around 99.2% accuracy -- not state of the art, but respectable.
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@ -243,7 +243,7 @@ To create this model, we're going to need to create a lot of weights and biases.
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One should generally initialize weights with a small amount of noise for
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symmetry breaking, and to prevent 0 gradients. Since we're using ReLU neurons,
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it is also good practice to initialize them with a slightly positive initial
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bias to avoid "dead neurons." Instead of doing this repeatedly while we build
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bias to avoid "dead neurons". Instead of doing this repeatedly while we build
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the model, let's create two handy functions to do it for us.
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```python
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