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Apr
28 |
awarded | Notable Question |
Apr
21 |
comment |
2 dimension vector as output of LTSM Neural network
How about you let LSTM return 80 x 1, and then separate the dimensions manually (but with this you need to adjust your labels (flatten them to one dimension) so gradients can be backpropagated properly). This will certainly be possible in Theano & Tensor Flow. About multi-dimension output, I am not sure. This might be relevant: arxiv.org/pdf/0705.2011 |
Apr
2 |
comment |
How to calculate gradients for a neural network with theano when using Q-Learning
I don't have experience with applying reinforcement learning along with supervised learning; but if you can define your q-learning stuff with Theano expressions and make them part of computational graph, then you can just back-propagate errors the normal way (i.e using T.grad(..) ). This might be a bit relevant: github.com/spragunr/deep_q_rl |
Mar
30 |
comment |
How to fix dimensional error in Theano v0.8 tutorial code
The tutorial you referred uses T.vector for 'y' but you are using T.matrix; labels (generally) are always vector (at-least for classification problems). |
Mar
21 |
revised |
Vectorized equivalent of batched_dot
minor edit |
Mar
20 |
revised |
Vectorized equivalent of batched_dot
adding additional relevant tag |
Mar
20 |
asked | Vectorized equivalent of batched_dot |
Mar
17 |
revised |
column_stack equivalent in Theano
fixing missing inputs |
Mar
9 |
comment |
Shared variable indexing error in theano
What is 'x' ? It should be ftensor3() with dtype=float32. |
Mar
8 |
comment |
How to run a theano.function on TensorVariable
It does not make sense to pass 'Tensor Variables' to Theano function as tensor variables are symbolic expressions and need to be provided with extra input to determine their value. Therefore, one should define a function with tensor variables and later pass numerical values to compute the final result. You can always define multiple symbolic expressions which depend on previous expressions, I don't see a need to pass them to the Theano function. |
Mar
5 |
answered | Error using grad in theano |
Feb
19 |
comment |
Wrong number of dimensions: expected 0, got 1 with shape (1,)
You are right, the output of predict_model(seed) i.e rnn.y was a vector not a scalar. It was really dumb on my part :(, Thank you ! |
Feb
19 |
accepted | Wrong number of dimensions: expected 0, got 1 with shape (1,) |
Feb
19 |
revised |
Wrong number of dimensions: expected 0, got 1 with shape (1,)
added 11 characters in body |
Feb
19 |
asked | Wrong number of dimensions: expected 0, got 1 with shape (1,) |
Jan
14 |
accepted | column_stack equivalent in Theano |
Jan
13 |
asked | column_stack equivalent in Theano |
Jan
6 |
answered | theano GRU rnn adam optimizer |
Jan
6 |
comment |
Prediction using Theano Neural Network
The predictorfunction() takes no input but you are passing inputData as an argument to predictorfunction(), may be you can change it like this (un-tested pseudo-code): ip_data = T.tensor3() predictorfunction=theano.function(inputs=[ip_data] outputs=myNN.y_predict) # now it should be called in a normal way. Hope it helps a bit. |
Jan
6 |
comment |
Theano: How to implement the distance between desired output (1d) and label as cost function
Are you sure you only need one output neuron ? you can actually have two neurons (One to output '0', second to output '1'), If you do it this way you can use the same cost function as in the example; however, if you want only one output neuron then you are actually doing 'regression', in this case the simplest cost function could be the average distance between your prediction and true label. Also, I see you are using 'softmax' to compute output (you only have to use softmax to interpret output as a probability), for one output neuron multiplying weight matrix with the input matrix is enough. |