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NeuralNetwork.py: This file hold the Neural Network class that is used in other files
NNExample.py: This file trains and plots the loss of the NN throughout training process (should be first file to be ran)
NNTests.py: This file contains tests for the NN
Packages used:
Numpy, matplotlib, and unittest
Class Neural Network:
Contains 7 class attributes
Contains 8 class methods
Info:
Creates a 3-6-2 Neural Network
3 nodes for input layer
6 nodes for hidden layer
2 nodes for output layer
Activation function used is a sigmoid
Uses back propergation to update the weights
Trains the NN 1,000 times
Plots the loss over number of training iterations
Prints out the shape of both weight matrices
Prints out the predicted value for the test case and the rounded value of the test case
Questions:
What are the dimensions of weight matrix 1 and weight matrix 2?
The dimension of weight matrix 1 is: 3x6
The dimension of weight matrix 2 is: 6x2
Test [1,1,1]. What are the predicted y values for it?
The predicted y values for this sample are: [0.98363427, 0.0157898] (subject to change)
The rounded y values for this sample are: [1,0]
Could you guess what is the meaning of y1 and y2?
My guess what the meaning of y1 and y2 mean is that the outcome is [0,1] when the input is even in binary and [1,0] when the outcome is odd in binary. For example 000, 010, 100 are all [0,1] while the sequences 001, 011, 111 are all [1,0]. This makes me believe that this is determining whether the binary sequence is even or odd.