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Network structure inspired by simplified models of biological neurons (brain cells). Neural networks are trained to "learn" by supervised and unsupervised techniques, and can be used to solve optimization problems, approximation problems, classify patterns, and combinations thereof.
I'm new to tensorflow and am attempting to stray away from the mnist data set and try something a little different. I'm working with the emotion data set CK+ and can't seem to modify my code to succes …
I've read another post on here that discusses the intuition behind Tanh functions but it doesn't quite help me understand how the sigmoid and activation functions are forgetting and including informat …
As the title states, my CNN is getting terribly low accuracy on the mnist dataset (~70%). My architecture includes two convolution layers and two fully connected layers. I'm happy I've got it running …
So, here is a piece of my existing code:
def lstm(i,o, state):
input_gate = tf.sigmoid(tf.matmul(i, w_ii) + tf.matmul(o,w_io) + b_i)
output_gate = tf.sigmoid(tf.matmul(i, w_oi) + tf.matmul(o, …
First off, I apologize if this isn't appropriate for stack overflow. This isn't really a code related question rather than a theory question.
This isn't completely clear to me. Say you have a massiv …
Here is the code:
def lstm(o, i, state):
#these are all calculated seperately, no overlap until....
#(input * input weights) + (output * weights for previous output) + bias
input_gate = …
Here is a snapshot of my dataset, including its shape:
Now, here is the code I am using to build the NN:
# define the architecture of the network
model = Sequential()
model.add(Dense(50, input_dim= …
I ask because i'd like to use it to process the text input that I will be using for my LSTM.
Any feedback would be much appreciated.