Small typo (#3150)

* Small typo

* Previous score is 92%, not 91%.
This commit is contained in:
Simon DENEL 2016-07-01 19:56:39 +02:00 committed by Vijay Vasudevan
parent 084c915c2d
commit 4e1221f01b

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