[Solved] ECE472 Deep Learning -Assingment 3

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Problem Statement Consider the mnist dataset consisting of 50,000 training

images, and 10,000 test images. Each instance is a 28 28 pixel handwritten digit

zero through nine. Train a (optionally convolutional) neural network for

classification using the training set that achieves at least 95.5% accuracy on the test

set. Do not explicitly tune hyperparameters based on the test set performance,

a validation set taken from the training set as discussed in class. Use dropout and

an L2 penalty for regularization. Note: if you write a sufficiently general program

the next assignment will be very easy.

Do not use the built in mnist data class from tensorflow.

Extra challenge (optional) In addition to the above, the student with the fewest

number of parameters for a network that gets at least 80% accuracy on the test set

will receive a prize. There will be an extra prize if any one can achieve 80% on the

test set with a single digit number of parameters. For this extra challenge you c

make your network have any crazy kind of topology youd like, it just needs to be

optimized by a gradient based algorithm.

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[Solved] ECE472 Deep Learning -Assingment 3[Solved] ECE472 Deep Learning -Assingment 3
$25