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Questions tagged [lstm]

Long Short Term Memory. A neural network architecture that contains recurrent NN blocks that can remember a value for an arbitrary length of time. A very popular building block for deep NN.

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8 views

Best approach for multiple time series prediction in Tensor Flow Js

Other questions I found do not cover normalization or my specific goal of prediction beyond 1 point into the future, where locality is kept in mind i.e. if 1 is predicted at T+1, then T+2, is more ...
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12 views

Confused about multi-layered Bidirectional RNN in Tensorflow

I'm building a multilayered bidirectional RNN using Tensorflow .I'm a bit confused about the implementation though . I have built two functions that creates multilayered bidirectional RNN the first ...
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19 views

TensorFlow LSTM: Why does test accuracy become low, but not training one?

I have tried to build LSTM model with TensorFlow. The training of the LSTM seem to work fine, getting more than 90% accuracy. A problem plagued me is “test accuracy” that is very low. So, I thought ...
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8 views

Keras LSTM Seq2Seq with integer sequences decodes only final token

I'm working with the example on the Keras blog but can't get the decode_sequence to work with integer sequence input. My decoder inputs are defined like: decoder_inputs = Input(shape=(None,), name='...
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27 views

Comparing LSTM structure

I'm trying to build an LSTM model according to that picture. I'm a beginner in deep learning particulary WITH RNN structure, so i require your advice to lead me so, for that i'm dealing with a ...
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29 views

Define multiple different lstm in keras or tensorflow

I am currently play with lstm and rnn for some time. I have tried them in both tensorflow and keras. However some thing makes me really confused. Like in tensorflow, if I want to define multiple rnn ...
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1answer
68 views

What dimension is the LSTM model considers the data sequence?

I know that an LSTM layer expects a 3 dimension input (samples, timesteps, features). But which of it dimension the data is considered as a sequence. Reading some sites I understood that is the ...
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11 views

What is the purpose of unrolling an LSTM into multiple time steps if you can just use a stateful LSTM of 1 time step? [on hold]

As far as I understand the follwoing two models are essentially identical: Having a stateful LSTM with just a single time step and passing 10 time-series data points into it one by one, and using the ...
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3 views

Output of lstm is off by offset, in timeseries prediciton

I get the following predictions from the LSTM based model I have. The prediction seems to capture the general pattern, but the output is way off from the actual values. What am I doing wrong? The ...
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19 views

multivariate time series regression using tensorflow and lstm, dimensions issue in implementation

My question is about tensorflow implementation to forecast multiple correlated time series. Let suppose I have N_in time series and I want make a future prediction for them or some of them : so ...
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67 views

Pytorch LSTM - Training for Q&A classification

I'm trying to train a model to classify if an answer answers the question given using this dataset. I'm training in batches and using GloVe word embeddings. I train in batches of 1000 except the last ...
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31 views

News article generation using Deep learning

I want to generate a news article using previous 4-5 news articles with neural net and NLP. I have tried zombie writer , deep writing(Multi-layer RNN for for model building) , word embedding/character ...
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11 views

Ensure the presence of a word/token/noun in Encoder-Decoder text generation deep learning models

I am stuck with a problem where in I want to ensure that specific tokens/words are produced while decoding and generating abstractive-style sentences. I am working with deep learning models like ...
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1answer
31 views

Keras LSTM Input Transpose

I'm training a timeseries LSTM model using Keras. I understand that the input to the model has to be in the format: [samples, timesteps, features]. However, when I reverse transpose each input ...
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37 views

LSTM / Pretrained word embedding - Positive/Negative review prediction

I have one Thousand review sentences (or paragraphs) with associated Positive or Negative labels (Same one Thousand), so i am trying to use glove word embedding (Pretrained word representation), so ...
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23 views

LSTM for session based prediction

I'm trying to build an LSTM model according to that picture. I'm a beginner in deep learning particulary WITH RNN structure, so i require your advice to lead me so, for that i'm dealing with a ...
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12 views

Training Tesseract-ocr 4.0 LSTM on windows7 / windows10

TrainingTesseract-4.00 introduce the way to train LSTM on linux, a few of tools and libraries need to install. How to embark on training the LSTM engine on windows?? Does anybody know the steps?
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16 views

Do we use different weights in Bidirectional LSTM for each batch?

For example this is one of the function which we need to call for each batch. Here it looks like different parameters are used for each batch. Is that correct? If it is then, why? Shouldn't we be ...
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25 views

Keras LSTM Input layer shape differs from actual input

Given that I'm not very experienced with this, the following may well be a silly question (and the title equally beside the point, any suggestions for modification are welcome). I'm trying to get a ...
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13 views

Re-encoding a context vector after every step of decoding?

I am currently working on a sequence model which aims to predict the head orientation of somebody watching VR for an arbitrary amount of frames in the future. Using an encoder-decoder paradigm, a ...
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1answer
20 views

LSTM many-to-many training in batches of independent examples

I'm still figuring out LSTMs and trying to come up with the optimal and appropriate training routine and data shape. A time series represents musical notes. Let's call it a song. So I have data in ...
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1answer
8 views

Conv1D as dimensionality reduction for LSTM

I was hoping to use CNN as a dimensionality reduction for my LSTM layers. I have a panel dataset as the following: sequence of days = 5065 lags = 14 days (those are time series lags) features = 2767 ...
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25 views

PyTorch LSTM States

Consider the following code snipped: lstm = nn.LSTM(10, 5, batch_first=True) states = (torch.rand(1, 1, 5), torch.rand(1, 1, 5)) h, states = lstm(torch.rand(1, 1, 10), states) print('h:') print(h) ...
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1answer
26 views

Tensorflow: Understanding the layer structure of LSTM model

I'm new to tensorflow and LSTM and I'm having some trouble understanding the shape and structure of the network (weights, biases, shape of inputs and logs). In this specific piece of code taken from ...
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1answer
22 views

GRU/LSTM dimension error with Keras

I am kind of new to deep learning and I have been trying to create a simple sentiment analyzer using deep learning methods for natural language processing and using the Reuters database. Here is my ...
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1answer
37 views

Keras LSTM has different output for single input

I came to a weird problem when using Keras LSTM model. I build a single layer LSTM and try to play with it. I found the output of the model is different between one input and multiple inputs, as shown ...
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29 views

Pytorch LSTM get output last state without loop

I was reading Seq2Seq tutorial here. Is it possible to get encoder_output from last time step without using this for loop? for ei in range(input_length): encoder_output, encoder_hidden = encoder( ...
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1answer
38 views

Keras example word-level model with integer sequences gives `expected ndim=3, found ndim=4`

I'm trying to implement the Keras word-level example on their blog listed under the Bonus Section -> What if I want to use a word-level model with integer sequences? I've marked up the layers with ...
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14 views

time series forecasting for future

#Keras LSTM model n_batch=1 model = Sequential() model.add(LSTM(2, batch_input_shape=(1, None,1),activation='sigmoid',return_sequences=True, stateful=True)) model.add(LSTM(2,return_sequences=False,...
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1answer
30 views

Difference between Keras and tensorflow implementation of LSTM with dropout

I was reviewing the documentation for the LSTM cell in tensorflow and Keras. In particular, I want to apply dropout as well. Here is what I have in Keras and would like to apply the same LSTM cell in ...
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1answer
32 views

Keras LSTM constant loss

I have an issue where the loss of my LSTM network does not change at all from one epoch to another. It does not happen systematically. Given the same code and the same dataset, one execution can run ...
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17 views

Tensorflow LSTM model loss or accuracy not changing after first epoch

I am trying to make a model using Bi-directional LSTM for pos tagging to identify whether a word represent attribute of a product or not. But the Tensorflow LSTM model's loss or accuracy doesn't ...
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75 views

Input to Bidirectional LSTM in tensorflow

Normally all inputs fed to BiLSTM are of shape [batch_size, time_steps, input_size]. However, I'm working on a problem of Automatic Grading of an Essay in which there's an extra dimension called ...
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1answer
43 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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20 views

How to do anomaly detection on univariate time series data where the variable is categorical?

I am trying to build a simple model that looks at sequences of system calls and tries to detect anomalies. My data is a long list of system calls made by a program, where I have the timestamp and the ...
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71 views

When there are some zeros in input vector, run the biLstm model will get a 'floating error 8'

I do the padding process by myself, so there some 0 values in 'debate', 'reason', 'claim' or 'warrant'. Put into the BiLSTM architecture will get the 'floating error 8' without any other reminder. ...
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1answer
43 views

how to create Keras multi LSTM layer using for loop?

I'm trying to implement a multi layer LSTM in Keras using for loop and this tutorial to be able to optimize the number of layers, which is obviously a hyper-parameter. In the tutorial, the author used ...
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1answer
39 views

How to restore a saved model with LSTM layers in Keras

I was following a tutorial to generate English text using LSTMs and using Shakespeare's works as a training file. This is the model I am using with reference to that- model = Sequential() model.add(...
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21 views

How to set the variables of LSTMCell as input instead of letting it create it in Tensorflow?

When I create a tf.contrib.rnn.LSTMCell, it creates its kernel and bias trainable variables during initialisation. How the code looks now: cell_fw = tf.contrib.rnn.LSTMCell(hidden_size_char, ...
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1answer
32 views

Keras Reshape: total size of the new array must be unchanged

I'm trying to use Keras Reshape function API to reshape the output of a glove embedding (4D shape: (?, 9, 20, 100)) down to 3D (?, 9, 2000). However, when I tried Reshape((9, 2000))(text_layer), an ...
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2answers
25 views

Tensorflow value error when chaining content of data - Cannot feed value of shape (1, 1) for Tensor 'Placeholder_1:0',

This post is related to the following question. The code above is taken from the accepted answer. The program itself works fine as is, but if I only changed the values of the data provided from df =...
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1answer
27 views

Error when checking target: expected dense_1 to have 3 dimensions, but got array with shape (118, 1)

I'm training a model to predict the stock price and input data is close price. I use 45 days data to predict the 46th day's close price and a economic Indicator to be second feature, here is the model:...
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17 views

How does an MDLSTM hierarchical network work?

In this paper, the network shown in Figure 4 on page 11 is hierarchical structure that uses MDLSTM. This is what I have gathered so far from the diagram: Suppose the input image is of size 8X6. It is ...
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13 views

Implementing beam search for non-text tasks in tensorflow

Say i have an rnn cell trained with dynamic_rnn: rnn_cell = tf.contrib.rnn.BasicLSTMCell(num_units) # input_tensor: [batch_size, max_time, feature_size], each element of the last dimension is an ...
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27 views

time series prediction horizon using accord .net (Levenberg-Marquardt & LSTM)

I'm new in machine learning, trying to do some time series predictions with accord.net, focusing my investigations mainly in 2 ways: An example from accord .net using Levenberg-Marquardt algorithm. ...
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1answer
11 views

Keras Hidden State and Cell State have the wrong shape

There are many resources on how to obtain c and h from your LSTM. It has both returns set to true, and I'm storing h and c in variables as you can see in the code below. This is during inference after ...
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1answer
21 views

On training LSTMs efficiently but well, parallelism vs training regime

For a model that I intend to spontaneously generate sequences I find that training it sample by sample and keeping state in between feels most natural. I've managed to construct this in Keras after ...
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1answer
27 views

ValueError: could not broadcast input array from shape (90742,1) into shape (240742,1)

I have encountered a ValueError: could not broadcast input array from shape (90742,1) into shape (240742,1). Here is my code: # shift train predictions for plotting train_predict_plot = np....
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1answer
22 views

How to connect LSTM layers in Keras, RepeatVector or return_sequence=True?

I'm trying to develop an Encoder model in keras for timeseries. The shape of data is (5039, 28, 1), meaning that my seq_len is 28 and I have one feature. For the first layer of the encoder, I'm using ...
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1answer
20 views

LSTM prediction how to incorporate multiple autocorrelation

I am working on a project which aims at prediction of highly autocorrelated time series. LSTM seems very ideal for my purpose. However, does anyone know how I can incorporate multiple large ...