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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.

67
votes
1answer
22k views

Many to one and many to many LSTM examples in Keras

I try to understand LSTMs and how to build them with Keras. I found out, that there are principally the 4 modes to run a RNN (the 4 right ones in the picture) Image source: Andrej Karpathy Now I ...
23
votes
2answers
13k views

TensorFlow: Remember LSTM state for next batch (stateful LSTM)

Given a trained LSTM model I want to perform inference for single timesteps, i.e. seq_length = 1 in the example below. After each timestep the internal LSTM (memory and hidden) states need to be ...
15
votes
2answers
11k views

LSTM module for Caffe

Does anyone know if there exists a nice LSTM module for Caffe? I found one from a github account by russel91 but apparantly the webpage containing examples and explanations disappeared (Formerly http:/...
15
votes
4answers
6k views

Get the last output of a dynamic_rnn in TensorFlow

I have a 3-D tensor of shape [batch, None, dim] where the second dimension, i.e. the timesteps, is unknown. I use dynamic_rnn to process such input, like in the following snippet: import numpy as np ...
17
votes
2answers
13k views

Is RNN initial state reset for subsequent mini-batches?

Could someone please clarify whether the initial state of the RNN in TF is reset for subsequent mini-batches, or the last state of the previous mini-batch is used as mentioned in Ilya Sutskever et al.,...
14
votes
1answer
5k views

Understanding stateful LSTM

I'm going through this tutorial on RNNs/LSTMs and I'm having quite a hard time understanding stateful LSTMs. My questions are as follows : 1. Training batching size In the Keras docs on RNNs, I ...
11
votes
3answers
3k views

Tensorflow: How to pass output from previous time-step as input to next timestep

It is a duplicate of this question How can I feed last output y(t-1) as input for generating y(t) in tensorflow RNN? I want to pass the output of RNN at time-step T as the input at time-step T+1. ...
15
votes
3answers
21k views

Error when checking model input: expected lstm_1_input to have 3 dimensions, but got array with shape (339732, 29)

My input is simply a csv file with 339732 rows and two columns : the first being 29 feature values, i.e. X the second being a binary label value, i.e. Y I am trying to train my data on a stacked ...
30
votes
3answers
19k views

How do I create a variable-length input LSTM in Keras?

I am trying to do some vanilla pattern recognition with an LSTM using Keras to predict the next element in a sequence. My data look like this: where the label of the training sequence is the last ...
18
votes
5answers
32k views

How to deal with batches with variable-length sequences in TensorFlow?

I was trying to use an RNN (specifically, LSTM) for sequence prediction. However, I ran into an issue with variable sequence lengths. For example, sent_1 = "I am flying to Dubain" sent_2 = "I was ...
18
votes
2answers
26k views

Tensorflow TypeError: Fetch argument None has invalid type <type 'NoneType'>?

I'm building a RNN loosely based on the TensorFlow tutorial. The relevant parts of my model are as follows: input_sequence = tf.placeholder(tf.float32, [BATCH_SIZE, TIME_STEPS, PIXEL_COUNT + ...
40
votes
8answers
23k views

What is num_units in tensorflow BasicLSTMCell?

In MNIST LSTM examples, I don't understand what "hidden layer" means. Is it the imaginary-layer formed when you represent an unrolled RNN over time? Why is the num_units = 128 in most cases ? I ...
18
votes
3answers
9k views

Time Series Prediction via Neural Networks

I have been working on Neural Networks for various purposes lately. I have had great success in digit recognition, XOR, and various other easy/hello world'ish applications. I would like to tackle the ...
15
votes
2answers
4k views

TimeDistributed(Dense) vs Dense in Keras - Same number of parameters

I'm building a model that converts a string to another string using recurrent layers (GRUs). I have tried both a Dense and a TimeDistributed(Dense) layer as the last-but-one layer, but I don't ...
9
votes
2answers
5k views

What is the equivalent of tf.nn.rnn in new versions of TensorFlow?

I used to create the RNN network, in version 0.8 of TensorFlow, using: from tensorflow.python.ops import rnn # Define a lstm cell with tensorflow lstm_cell = rnn_cell.BasicLSTMCell(n_hidden, ...
8
votes
5answers
5k views

LSTM Followed by Mean Pooling

I'm using Keras 1.0. My problem is identical to this one (How to implement a Mean Pooling layer in Keras), but the answer there does not seem to be sufficient for me. I want to implement this network:...
7
votes
1answer
2k views

Stateful LSTM: When to reset states?

Given X with dimensions (m samples, n sequences, and k features), and y labels with dimensions (m samples, 0/1): Suppose I want to train a stateful LSTM (going by keras definition, where "stateful = ...
4
votes
1answer
2k views

Difference between bidirectional_dynamic_rnn and stack_bidirectional_dynamic_rnn in Tensorflow

I am building a dynamic RNN network with stacking multiple LSTMs. I see there are 2 options # cells_fw and cells_bw are list of cells eg LSTM cells stacked_cell_fw = tf.contrib.rnn.MultiRNNCell(...
2
votes
1answer
718 views

Keras functional API: Combine CNN model with a RNN to to look at sequences of images

So i was stuck with a question on how to combine a CNN with a RNN in Keras. While posting the question someone pointed me out that this is the correct way to approach the problem. Apparently i just ...
16
votes
1answer
19k views

ValueError: Tensor must be from the same graph as Tensor with Bidirectinal RNN in Tensorflow

I'm doing text tagger using Bidirectional dynamic RNN in tensorflow. After maching input's dimension, I tried to run a Session. this is blstm setting parts: fw_lstm_cell = BasicLSTMCell(LSTM_DIMS) ...
2
votes
1answer
1k views

Cyclic computational graphs with Tensorflow or Theano

Both TensorFlow and Theano do not seem to support cyclic computational graphs, cyclic elements are implemented as recurrent cells with buffer and unrolling (RNN / LSTM cells), but this limitation is ...
37
votes
2answers
18k views

What is the intuition of using tanh in LSTM

In LSTM Network (Understanding LSTMs), Why input gate and output gate use tanh? what is the intuition behind this? it is just a nonlinear transformation? if it is, can I change both to another ...
29
votes
2answers
14k views

What's the difference between tensorflow dynamic_rnn and rnn?

There are several classes in tf.nn that relate to RNNs. In the examples I find on the web, tf.nn.dynamic_rnn and tf.nn.rnn seem to be used interchangeably or at least I cannot seem to figure out why ...
15
votes
1answer
4k views

How to construct input data to LSTM for time series multi-step horizon with external features?

I'm trying to use LSTM to do store sales forecast. Here is how my raw data look like: | Date | StoreID | Sales | Temperature | Open | StoreType | |------------|---------|-------|-------------...
12
votes
1answer
5k views

Keras : How should I prepare input data for RNN?

I'm having trouble with preparing input data for RNN on Keras. Currently, my training data dimension is: (6752, 600, 13) 6752: number of training data 600: number of time steps 13: size of feature ...
8
votes
2answers
5k views

How to calculate perplexity of RNN in tensorflow

I'm running the word RNN implmentation of tensor flow of Word RNN How to calculate the perplexity of RNN. Following is the code in training that shows training loss and other things in each epoch: ...
6
votes
3answers
12k views

Tensorflow RNN weight matrices initialization

I'm using bidirectional_rnn with GRUCell but this is a general question regarding the RNN in Tensorflow. I couldn't find how to initialize the weight matrices (input to hidden, hidden to hidden). Are ...
3
votes
1answer
1k views

TensorFlow dynamic_rnn state

My question is about the TensorFlow method tf.nn.dynamic_rnn. It returns the output of every time step and the final state. I would like to know if the returned final state is the state of the cell ...
2
votes
1answer
3k views

How to use tensorflow's Dataset API Iterator as an input of a (recurrent) neural network?

When using the tensorflow's Dataset API Iterator, my goal is to define an RNN that operates on the iterator's get_next() tensors as its input (see (1) in the code). However, simply defining the ...
9
votes
1answer
920 views

What is a “cell class” in Keras?

Or, more specific: what is the difference between ConvLSTM2D and ConvLSTM2DCell? What is the difference between SimpleRNN and SimpleRNNCell? Same question for GRU and GRUCell Keras manuals are not ...
8
votes
1answer
5k views

ValueError: The two structures don't have the same number of elements

with tf.variable_scope('forward'): cell_img_fwd = tf.nn.rnn_cell.GRUCell(hidden_state_size, hidden_state_size) img_init_state_fwd = rnn_img_mapped[:, 0, :] img_init_state_fwd = tf.multiply( ...
1
vote
1answer
106 views

Is there a way to implement recurrence in numpy without for-loops?

I have the following problem. There is a matrix X and I need to generate a matrix H such that values of i_th row in matrix H are determined by i_th row of the matrix X and (i-1)_th row of matrix H. ...
8
votes
3answers
914 views

How can I feed last output y(t-1) as input for generating y(t) in tensorflow RNN?

I want to design a single layer RNN in Tensorflow such that last output (y(t-1)) is participated in updating the hidden state. h(t) = tanh(W_{ih} * x(t) + W_{hh} * h(t) + **W_{oh}y(t - 1)**) y(t) = ...
2
votes
1answer
764 views

Input Shape Error in Second-layer (but not first) of Keras LSTM

EDITED for conciseness. I am trying to build an LSTM model, working off the documentation example at https://keras.io/layers/recurrent/ from keras.models import Sequential from keras.layers ...
1
vote
1answer
4k views

Reuse Reusing Variable of LSTM in Tensorflow

I'm trying to make RNN using LSTM. I made LSTM model, and after it, there is two DNN network, and one regression output layer. I trained my data, and the final training loss become about 0.009. ...
1
vote
1answer
743 views

TensorFlow: loss jumps up after restoring RNN net

Environment info Operating System: Windows 7 64-bit Tensorflow installed from pre-built pip (no CUDA): 1.0.1 Python 3.5.2 64-bit Problem I have problems with restoring my net (RNN character base ...
0
votes
1answer
61 views

RNN/LSTM deep learning model?

I am trying to build an RNN/LSTM model for binary classification 0 or 1 a sample of my dataset (patient number, time in mill/sec., normalization of X Y and Z, kurtosis, skewness, pitch, roll and yaw, ...
0
votes
1answer
709 views

Multivariate LSTM Forecast Loss and evaluation

I have a CNN-RNN model architecture with Bidirectional LSTMS for time series regression problem. My loss does not converge over 50 epochs. Each epoch has 20k samples. The loss keeps bouncing between ...
10
votes
2answers
6k views

Tensorflow: What are the “output_node_names” for freeze_graph.py in the model_with_buckets model?

I trained a tf.nn.seq2seq.model_with_buckets with seq2seq = tf.nn.seq2seq.embedding_attention_seq2seq very similar to the example in the Tensorflow Tutorial. Now I would like to freeze the graph ...
5
votes
2answers
2k views

How to use Tensorflow's PTB model example?

I'm trying out Tensorflow's rnn example. With some problems at the start I could run the example in order to train the ptb and now I have a model trained. How do I exactly use the model now to create ...
3
votes
1answer
861 views

Classifying sequences of different lengths [duplicate]

Despite going through multiple examples, I still don't understand how to classify sequences of varying length using Keras, similar to this question. I can train a network that detects frequencies of ...
2
votes
1answer
1k views

MultiRNN and static_rnn error: Dimensions must be equal, but are 256 and 129

I want to build an LSTM network with 3 Layers. Here's the code: num_layers=3 time_steps=10 num_units=128 n_input=1 learning_rate=0.001 n_classes=1 ... x=tf.placeholder("float",[None,time_steps,...
1
vote
1answer
1k views

How to use Bidirectional RNN and Conv1D in keras when shapes are not matching?

I am brand new to Deep-Learning so I'm reading though Deep Learning with Keras by Antonio Gulli and learning a lot. I want to start using some of the concepts. I want to try and implement a neural ...
29
votes
2answers
12k views

How to use return_sequences option and TimeDistributed layer in Keras?

I have a dialog corpus like below. And I want to implement a LSTM model which predicts a system action. The system action is described as a bit vector. And a user input is calculated as a word-...
51
votes
7answers
32k views

What's the difference between convolutional and recurrent neural networks?

I'm new to the topic of neural networks. I came across the two terms convolutional neural network and recurrent neural network. I'm wondering if these two terms are referring to the same thing, or, ...
19
votes
1answer
13k views

Soft attention vs. hard attention

In this blog post, The Unreasonable Effectiveness of Recurrent Neural Networks, Andrej Karpathy mentions future directions for neural networks based machine learning: The concept of attention is ...
26
votes
4answers
17k views

What's the difference between a bidirectional LSTM and an LSTM?

Can someone please explain this? I know bidirectional LSTMs have a forward and backward pass but what is the advantage of this over a unidirectional LSTM? What is each of them better suited for?
10
votes
1answer
10k views

TensorFlow Embedding Lookup

I am trying to learn how to build RNN for Speech Recognition using TensorFlow. As a start, I wanted to try out some example models put up on TensorFlow page TF-RNN As per what was advised, I had ...
7
votes
1answer
9k views

Tensorflow dynamic RNN (LSTM): how to format input?

I have been given some data of this format and the following details: person1, day1, feature1, feature2, ..., featureN, label person1, day2, feature1, feature2, ..., featureN, label ... person1, dayN,...
13
votes
1answer
5k views

Shuffling training data with LSTM RNN

Since an LSTM RNN uses previous events to predict current sequences, why do we shuffle the training data? Don't we lose the temporal ordering of the training data? How is it still effective at making ...