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Questions tagged [recurrent-neural-network]

A recurrent neural network (RNN) is a class of artificial neural network where connections between units form a directed cycle.

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RNN not learning Keras

I have been training RNNs in keras for some time now, but recently I was faced with a problem of RNN not learning anything. Therefore, I want to make sure that I am feeding in the data correctly. I ...
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1answer
13 views

LSTM output Dense expects 2d input

I have features in shape of (size,2) and labels in shape of (size,1) i.e. for [x,y] in feature the label will be z. I want to build an LSTM in keras that can do such job since the feature is linked ...
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0answers
38 views

Different loss values with same data, same initial state, same recurrent neural network

I am writing a recurrent neural network (specifically, a ConvLSTM). Recently, I have noticed an interesting inconsistency that I cannot quite figure out. I have written this neural network from ...
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0answers
10 views

Using a placeholder to initialize the initial state for a RNN Cell in a TensorFlow Estimator model_fn

I'm having a problem making the cell initial_state configurable so I can use different batch sizes for training and prediction. Essentially at training, I am going to feed fixed size mini batches, ...
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1answer
35 views

Keras validation accuracy won't go over 75% and prediction performs bad

I'm working on this dataset to make pollution prediction (NO2) using keras library. I made interpolation on missing data, one hot encoding on wind direction. Divided records on train/validation and ...
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4 views

Training Multidimensional time series data from different sensors

I am working on Multidimensional Timeseries dataset from different sensors and struggling to fit an RNN model to it. Any ideas on whether it will be appropriate to have all the independent variables ...
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1answer
17 views

How can I train for high specificity for a single class in Tensorflow?

I have a GRU network that receives a sequence of data, and labels it as class 0 or class 1. I want the model to have a high specificity for class 0 (being at least >= 0.8), while making sure that it ...
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13 views

LSTM versatility optimization

So I have a keras-LSTM neural net that I use to help predict some weather patterns. I have some sequential data that it's been trained on, but I know there are parameters out there that I will want to ...
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1answer
23 views

How to generate more than 1 output per input in LSTM?

Assume this is my model: _________________________________________________________________ Layer (type) Output Shape Param # ==========================================...
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3answers
27 views

Bidirectional RNN cells - shared or not?

Should I use the same weights to compute forward and backward passes in a bidirectional RNN, or should those weights be learned independently?
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1answer
40 views

Recurrent Neural Network that learns all features and predicts them all

MODIFIED: I have some time series data that I want to use to predict future values of some features, and I have built a Recurrent Neural Network in Python. Since these data are divided into four ...
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0answers
38 views

Training loss decreases then increases when using train_on_batch

I'm training a stateful LSTM using ADAM optimizer and the train_on_batch method for submitting training data. I'm consistently finding that the training loss drops, and then steadily increases. I'm ...
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1answer
20 views

Keras LSTM using batch outputs incorrect shape

I'm currently trying to implement a LSTM network. The network itself looks as follows self.time_steps = 1 self.num_actions = 6 self.lstm_units = 64 input = Input(shape=(self.time_steps, self....
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0answers
30 views

Using incremental integer in Neural Network

I am using Brain.js to develop a neural network for a project of mine. The idea is to have something like this: { input: [day, month, hour, minute], output: some categoryID } Basically, I will train ...
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0answers
17 views

Keras embedding layer with LSTM

My original model is: input = Input(shape=(1, 6)) # 1 time step, 6 features LSTM_layer = LSTM(self.lstm_units, return_sequences=False, return_state=True) lstm_output, out_h, out_c = LSTM_layer(...
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0answers
17 views

Determining RNN activation sequence

I have obtained a design of RNN (using structural genetic mutations) which looks like below, Here are the legends, input node = red hidden nodes = blue output node = green The graph above forms a ...
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0answers
17 views

How to code the loops of nodes within an RNN / cyclic ANN?

I'm trying to understand the concept of an RNN. I understand regular feed-forward ANN's though because I've implemented one. In particular, I'm interested in a network containing cycles and how to ...
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1answer
132 views

logits and labels must be broadcastable error in Tensorflow RNN

I am new to Tensorflow and deep leaning. I am trying to see how the loss decreases over 10 epochs in my RNN model that I created to read a dataset from kaggle which contains credit card fraud data. I ...
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0answers
29 views

LSTM unit in AzureML and Create a Deep Learner using the unit?

How to implement an LSTM unit in AzureML and Create a Deep Learner using the unit? Is there any implemented unit for LSTM in AzureML? I should notice that I just found this sample in AzureML gallery.
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1answer
27 views

Matrix dimensions for weight matrices in an LSTM

I'm trying to implement an LSTM Unit object using the following definition for the activations: I wanted to confirm my shapes are correct. For intents and purposes, assume my data is some arbitrary ...
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2answers
37 views

Keras and sentiment analysis prediction

Good morning, I trained a LSTM network on yelp https://www.yelp.com/dataset restaurants data set. It is a large dataset and it took several days to train on my PC. Anyways I saved the model and ...
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0answers
15 views

image feature extraction with custom cnn in caffe

I'm working on some image tagging problem based on CNN - RNN framework. I need to extract cifar-100 image features by CNN and feed them to the RNN. since the input dimensions of the networks like vgg ...
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0answers
8 views

What is the difference between these two methods of batching with stateful LSTM

With stateful LSTM, are these two methods effectively the same: batch_input_shape = [1,10,2] for _ in range(3): x_batch, y_batch = batcher() model.train_on_batch(x_batch, y_batch) model....
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0answers
15 views

Determining input shape for tensorflow keras LSTM?

I'm having a bit of trouble with this. To start off, here is what my data is like: test_data, test_labels, train_data, train_labels train_data[0] [1, 5, 5, 0, 0, 1, 1, 1, 25, 1, 1, 10, 0, 1, 1, 1, ...
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0answers
16 views

Difference RNN and DNN with shifted data

Whats the difference between an RNN (or LSTM) that gets inputs with timestep = 2 and a Feed-Forward Network that has the input_data (X) in the format below, with columns about the previous sample (t-1)...
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1answer
21 views

Recurrent Neural Network Text Generator

I'm very new to neural networks, and I'm trying to make an Elman RNN which generates text. I'm using Encog in Java. No matter what I feed the network, it takes a very long time to train, and it always ...
0
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1answer
35 views

Dimension of hidden layer LSTM Pytorch

I was reading the implementation of LSTM in Pytorch. The code goes like this: lstm = nn.LSTM(3, 3) # Input dim is 3, output dim is 3 inputs = [torch.randn(1, 3) for _ in range(5)] # make a sequence ...
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0answers
12 views

R ValueError: Error when checking : expected simple_rnn_46_input to have shape (1634, 14) but got array with shape (409, 14)

In this post I asked about an error to fit model: ValueError: Error when checking input: expected simple_rnn_input to have 3 dimensions, but got array with shape (1661, 3) I used suggestion from the ...
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0answers
19 views

Concatenate encoder hidden states/cells/outputs from different sources for attention calculation - issues?

I am using Pytorch for an LSTM encoder-decoder sequence-to-sequence prediction problem. As a first step, I would like to forecast 2D trajectories (trajectory x, trajectory y) from multivariate input - ...
8
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1answer
274 views

implementing RNN with numpy

I'm trying to implement the recurrent neural network with numpy. My current input and output designs are as follow: x is of shape: (sequence length, batch size, input dimension) h : (number of ...
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0answers
14 views

How should I choose the Encoder hyperparameters to make its memory state suitable for the Decoder in a Bidirectional Neural Network?

I'm studying Recurring Neural Networks and I'm trying to implement an Neural Machine Translator. I followed the tutorial on the Tensorflow website here https://www.tensorflow.org/versions/r1.8/...
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0answers
56 views

How to flatten the RNN output for Dense layer?

I'd like to classify a signal containing X = (n_samples, n_timesteps, n_features), where n_samples=476, n_timesteps=400, n_features=16 are the number of samples, timesteps, and features (or channels) ...
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0answers
15 views

How do I sample text from my LSTM model if the sequence length is greater than 1?

I am trying to sample text from my LSTM model, using model.predict(...). My model has a sequence length of 3. This is not a problem in the context of training, where I take the first sequence_length ...
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0answers
49 views

Tensorflow MultiRNNCell LSTM: “'Tensor' object is not iterable”

I have the following code: self.inputs = tf.placeholder(shape=[None, num_inputs], dtype=tf.float32) # Recurrent network for temporal dependencies def make_cell(units): cell = tf.contrib.rnn....
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2answers
41 views

Index out of range when loading data into CNN LSTM Model keras

I would like to implement a convolutional recurrent neural net with lstm in keras. I am a only a beginner in Machine Learning therefore I struggle understanding everything. Here is my code : def ...
0
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1answer
21 views

RNN Return sequence

I am working in RNN. I have following lines of code from some site. If you observe second layer has no "returnSequence" parameter. I am assuming return sequence is mandatory as it should return the ...
1
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1answer
47 views

Running RNN in Tensorflow

If I have an array of 20 elements of type float. Based on the values of the first ten elements I want a RNN to predict what the value of the last ten elements are. Using various online resources and ...
0
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1answer
43 views

Accumulating output from a graph using tf.while_loop (TensorFlow)

Long story short, I have an RNN that is stacked on top of a CNN. The CNN was created and trained separately. To clarify things, let's suppose the CNN takes input in the form of a [BATCH SIZE, H, W, C] ...
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0answers
13 views

Is it sensible to use popular Neural Networks optimizers like Adam with the variable length inputs?

Let's say we have RNN with the inputs that can have very different lengths. One input can be batch_size x 13 x num_features, another can be batch_size x 150 x num_features. Loss is accumulating over ...
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0answers
54 views

How to implement a Many-to-Many RNN in tensorflow?

The below code gives me all the hidden state values of the unrolled RNN. hidden_states,final_hidden_state = tf.nn.dyanamic_rnn(...) How do I multiply each of the hidden_states with the weight "Why" ...
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1answer
34 views

Prepading vs postpading inputs for Bidirectional LSTM

As my inputs are of variable length , I need to pad them all to get them to same size so as to feed them to Bidirectional LSTM. But, what difference can prepading make over postpadding. for example: ...
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0answers
45 views

How to feed LSTM in tensorflow with multidimensional input data such as s&p 500 to predict values of one column using other columns?

A screenshot of s&p 500 data. As you see, I want to predict values for y using values of x1:x18 Almost all of other tutorials and posts on the web, used just 1 value (for example x1) to predict a ...
0
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0answers
55 views

DMN neural network with poor validation results — only 50%

I have this problem with my Neural Network. I'm trying to implement what's called a DMN (Dynamic Memory Network) for the babi data set. A paper about the DMN model can be found here: http://arxiv.org/...
0
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1answer
28 views

Clipping Gradient with stochastic gradient descent

I'm training a recurrent neural network, but I want to apply the clipping gradient. I'm using sgd. Can I use the clipping gradient to the sum of the gradients computed for a minibatch?
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0answers
20 views

The loss of lstm increase when traning

the loss When I traning my lstm using tensorflow: the loss increase after several epoches, I checked my code and I cannot find the solution: def build_lstm(lstm_size, num_layers, batch_size, ...
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0answers
22 views

How to pass multiple text in the same timestamp to keras embedding layer

I have a text dataset with 50 timestamps and each time stamp contains 2-3 texts. I want to pass this data to LSTM for sequence modelling. I want to use keras embedding layer for this purpose. I am ...
0
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0answers
25 views

Unable to restore RNN model

I have trained a RNN model in Tensorflow and saved it using tf.train.Saver() But When I try to restore it, It gets angry. I have been searching for the cause for a few days but still could not find ...
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0answers
25 views

Avoiding overfitting on sequential data?

I'm trying to solve a text classification problem using Keras and Tensorflow, and I'm seeing some massive overfitting that I wish to understand the cause of. Concretely, my task is to predict from a ...
0
votes
1answer
48 views

Train Keras LSTM model with a variable number of features

I am training a seq-to-seq autoencoder in Keras and my input is (num_examples, time_step, num_features). The problem is, the num_features is not the same for all examples and, furthermore, I will get ...
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1answer
71 views

How to customize a RNN cell

I would like to implement a custom LSTM or GRU cell in TensorFlow (Python 3). For example, I want to scale the cell state signal from the cell at time step T before entering the cell at time step T+1. ...