Questions tagged [gated-recurrent-unit]

A Gated Recurrent Unit (GRU) is a type of unit in a recurrent neural network.

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Adapting an LSTM Encoder Decoder sequence prediction loop for GRUs

How do I resolve this error? ValueError: Layer model_101 expects 2 input(s), but it received 1 input tensors. Inputs received: [<tf.Tensor 'IteratorGetNext:0' shape=(None, 1, 1, 64) dtype=float32&...
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25 views

Tensorflow - Decoder for Machine Translation

I am going through Tensorflow's tutorial on Neural Machine Translation using Attention mechanism. It has the following code for the Decoder : class Decoder(tf.keras.Model): def __init__(self, ...
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2answers
420 views

AttributeError: 'tuple' object has no attribute 'size'

Below are my data loader and model. from torch.utils.data import TensorDataset, DataLoader def batch_data(log_returns, sequence_length, batch_size): """ Batch the neural ...
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111 views

RNN - RuntimeError: input must have 3 dimensions, got 2

I’m getting the following error: RuntimeError: input must have 3 dimensions, got 2 I have a single feature column that I am trying to feed into a GRU neural net. Below are my data loader and neural ...
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Why does my function get good values for LSTM but not for GRU?

I'm trying to implement a program that compares LSTM's performance vs GRU's performance for word prediction. I am using the same parameters for both of them, however while I am getting good perplexity ...
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1answer
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Problem running GRU model; missing argument for forward()

I am working on a GRU and when I try to make predictions I get an error indicating that I need to define h for forward(). I have tried several things and ran out of patience after googling and ...
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Finding TensorFlow equivalent of Pytorch GRU feature

I am confused about how to reconstruct the following Pytorch code in TensorFlow. It uses both the input size x and the hidden size h to create a GRU layer import torch torch.nn.GRU(64, 64*2, ...
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RNN Variational Autoencoder produces good reconstruction, but poor generation

I am trying to reproduce the results of this paper by training the RNN based variational autoencoder. While reconstruction of the original text is working very well, the generation of new text is ...
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1answer
2k views

Reset parameters of a neural network in pytorch

I have a neural network with the following structure: class myNetwork(nn.Module): def __init__(self): super(myNetwork, self).__init__() self.bigru = nn.GRU(input_size=2, ...
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Trigger Word Detection training giving wrong predictions

After completing the assignment on trigger word detection in Andrew ng s course. I made some training examples and tried the same model but eventhough the accuracy is .88(which is not great ...
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144 views

Input and hidden tensors are not at the same device, found input tensor at cuda:0 and hidden tensor at cpu

here is my code for lstm network, I instantiated it and passed to Cuda device but still getting the error that hidden and inputs are not in same device class LSTM_net(nn.Module): def __init__(self, ...
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Is there a better way to implement a customized GRU?

I have been trying to implement a customized GRU cell for work purposes in TensorFlow. So I have started with trying to build an custom simple GRU(with no added feature). But I have encountered a lot ...
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Calculating number of Parameters for GRU in Tensorflow 1.2.1 and Keras 2.0.5

I built following GRU model using Keras 2.0.5, input1 = keras.layers.Input(shape=(10,1)) x1 = (GRU(units = (100), dropout=(0.2),recurrent_dropout=(0.2)))(input1) x1 = keras.layers.Dense(100, ...
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slot-filling intent-detection joint model

Hi everybody i have developed two RNN models for a chatbot.Let's say that user says:"Tell me how the weather will be tomorrow in Paris". The first model will be able to recognize the user's intent ...
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1answer
942 views

How to get final hidden state of bidirectional 2-layers GRU in pytorch

I am struggling with understanding how to get hidden layers and concatenate them. I am using the following code as an example: class classifier(nn.Module): #define all the layers used in model def ...
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668 views

Keras - GRU layer with recurrent dropout - loss: 'nan', accuracy: 0

Problem description I am going through "Deep Learning in Python" by François Chollet (publisher webpage, notebooks on github). Replicating examples from Chapter 6 I encountered problems with (I ...
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GRU prediction input shape

I have implemented a multi-class classifier in Keras. The model accepts one text and two numerical features. While prediction, I am passing the input with correct shape but still getting error. ...
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122 views

KERAS: why adding a Conv1D after GRU layers, improves the network's results on natural language processing task?

I am working on a natural language processing task where the input is text and the labels are numerical (0, 1, 2, 3, 4, 5, 6, 7, 8, 9). My network has a recurrent part where I use two consecutive ...
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Credit attribution for prediction in recurrent neural nets

Consider a recurrent neural net, which has access two inputs sequences x1,x2,x3,x4.... and s1,s2,s3,s4... It emits a predictions p1,p2,p3,p4.... where pi = RNN(si,xi,hi) where hi is the ...
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2answers
600 views

Which One is Faster either GRU or LSTM

I tried to implement a model on keras with GRUs and LSTMs. The model architecture is same for both the implementations. As I read in many blog posts the inference time for GRU is faster compared to ...
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1answer
60 views

What do W and U notate in a GRU?

I'm trying to figure out how to backpropagate a GRU Recurrent network, but I'm having trouble understanding the GRU architecture precisely. The image below shows a GRU cell with 3 neural networks, ...
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1answer
2k views

what is the inputs to a torch.nn.gru function in pytorch?

I am using a gru function to implement a RNN. This RNN (GRU) is used after some CNN layers. Can someone please tell me what is the input to a GRU function here? Especially, is the hidden size fixed? ...
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1answer
77 views

Discrepancy between diagram and equations of GRU?

While I was reading the blog of Colah, In the diagram we can clearly see that zt is going to ~ht and not rt But the equations say otherwise. Isn’t this supposed to be zt*ht-1 And not rt*ht-1. Please ...
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Converting Keras Gru model to tf-lite

I am trying to convert my custom Keras model, with two bidirectional GRU layers, to tf-lite for use on mobile devices. I converted my model to the protobuff format and tried to convert it with the ...
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calculating the number of parameters of a GRU layer (Keras)

Why the number of parameters of the GRU layer is 9600? Shouldn't it be ((16+32)*32 + 32) * 3 * 2 = 9,408 ? or, rearranging, 32*(16 + 32 + 1)*3*2 = 9408 model = tf.keras.Sequential([ tf.keras....
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709 views

RuntimeError: Expected hidden size (2, 24, 50), got (2, 30, 50)

I am trying to build a model for learning assigned scores (real numbers) to some sentences in a data set. I use RNNs (in PyTorch) for this purpose. I have defined a model: class RNNModel1(nn.Module): ...
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1answer
355 views

Combined GRU and CNN network always returns the same value for all inputs

I am trying to train a combined CNN and GRU/LSTM to find out the number of objetcs in a series of pictures that move and the number of objects that do not move. For this reason I am using a CNN to ...
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1answer
293 views

How to apply a different dense layer for each timestep in Keras

I know that applying a TimeDistributed(Dense) applies the same dense layer over all the timesteps but I wanted to know how to apply different dense layers for each timestep. The number of timesteps is ...
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1answer
1k views

stacked GRU model in keras

I am willing to create a GRU model of 3 layers where each layer will have 32,16,8 units respectively. The model would take analog calue as input and produce analog value as output. I have written the ...
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198 views

How to freeze tensorflow variables inside tf.keras framework on eager execution mode?

I'm trying to fine tune the input weights in a recurrent cell without letting the backpropagation affect previous states (kind of truncated backpropagation with n = 1). I'm using tf.keras and eager ...
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90 views

Stateful Recurrent Neural Networks with fit_generator()

Context I read some blogs about the implementation of stateful recurrent neural networks in Keras (for example here and here). There are also several questions regarding stateful RNNs on ...
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LSTM/GRU and the use of overlapping sliding windows

Context I am currently running some experiments with LSTMs / GRUs in Keras. Anyhow, the following questions also relate to the general functionality of these networks, which means an answer does not ...
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1answer
985 views

Understanding GRU Architecture - Keras

I am using the Mycroft AI wake word detection and I am trying to understand the dimensions of the network. The following lines show the model in Keras: model = Sequential() model.add(GRU( ...
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2answers
359 views

GRU Language Model not Training Properly

I’ve tried reimplementing a simple GRU language model using just a GRU and a linear layer (the full code is also at https://www.kaggle.com/alvations/gru-language-model-not-training-properly): class ...
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1answer
2k views

How do I set the initial state of a keras.layers.RNN instance?

I have created a stacked keras decoder model using the following loop: # Create the encoder # Define an input sequence. encoder_inputs = keras.layers.Input(shape=(None, num_input_features)) # Create ...
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Order of layers in hidden states in PyTorch GRU return

This is the API I am looking at, https://pytorch.org/docs/stable/nn.html#gru It outputs: output of shape (seq_len, batch, num_directions * hidden_size) h_n of shape (num_layers * num_directions, ...
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1answer
623 views

How to get the last output and full sequence of LSTM or GRU in Keras at same time?

In Keras, when using LSTM or GRU, if I set return_sequences=False, I will get the last output; if I set return_sequences=True, I will get the full sequence; but how to get them both at the same time?
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62 views

How to implement 1-sigmoid in Keras?

As I want to implement a structure which is similar to the update gate of GRU: ht = (1-zt)ht-1 + ztht And I am trying to implement it with these code but it doesn't work. I am sure the problem are ...
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1answer
30 views

Understanding OutPuts of Neural Network

I have a problem in outputs of neural network. I have 3 layers and in last layer my activation method is softsign and accuracy of it is 97% but i don't understand output of it. how can i interpret ...
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2answers
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RNN with GRU in Keras

I want to implement Recurrent Neural network with GRU using Keras in python. I have problem in running code and I change variables more and more but it doesn't work. Do you have an idea for solve it? ...
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stock prediction : GRU model predicting same given values instead of future stock price

i was just testing this model from kaggle post this model suppose to predict 1 day ahead from given set of last stocks. After tweaking few parameters i got surprisingly good result, as you can see. ...
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1answer
150 views

how does LSTM and GRU gates decide which word to keep in the memory

the update gate in a GRU decides which word to keep in the cell or to be clear what is the cell state. how does the update gate in gru decide when to be close to 1 and when to be close to 0? Basically,...
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3answers
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Keras GRU model predicts only [-0., -0., -0., -0., -0.]

I'm trying to predict 5 periodic prices of cryptocurrency based on previous 50 inputs. >>> X_train.shape, X_test.shape, Y_train.shape, Y_test.shape ((291314, 50, 8), (72829, 50, 8), (291314, ...
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Implementing Seq2Seq with GRU in Keras

I implanted the ten-minutes LSTM example from the Keras site and adjusted the network to handle word embeddings instead of character ones (from https://blog.keras.io/a-ten-minute-introduction-to-...
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1answer
2k views

Keras GRUCell missing 1 required positional argument: 'states'

I try to build a 3-layer RNN with Keras. Part of the code is here: model = Sequential() model.add(Embedding(input_dim = 91, output_dim = 128, input_length =max_length)) model.add(GRUCell(...
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GRU with random selection data in keras

I use a recurrent network (in special GRU) for predict a time serie with a lenght of 90 occurrences. The type of data is multivariante, and a follow this example. Multivariante Time Series Option 1: ...
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1answer
1k views

Converting sparse IndexedSlices to a dense Tensor

I got the following warning: 94: UserWarning: Converting sparse IndexedSlices to a dense Tensor with 1200012120 elements. This may consume a large amount of memory. For the following code: from ...
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1answer
1k views

How to reset the state of a GRU in tensorflow after every epoch

I am using the tensorflow GRU cell to implement an RNN. I am using the aforementioned with videos that range for maximum 5 mins. Therefore, since the next state is fed automatically into the GRU, how ...
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0answers
545 views

Tensorflow Stacked GRU Cell

I am trying to implement a stacked RNN with MultiRNNCell and GRUCell in tensorflow. From the default implementation of GRUCell, it can be seen that the "output" and the "state" of the GRUCell are the ...
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1answer
363 views

GRU in DeepLearning4J

I am trying to find a GRU implementation within DeepLearning4J but cannot seem to find one. Does anyone know if GRU's are implemented within DL4J? If so can you please direct me to an example. If ...