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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Accuray of evaluate using LSTM model is different from fit model

For many days, I encounter the problem that accuray of evaluate using LSTM model is different from fit model. In deatail, I run the below code in Rstudio: seed<-42 use_session_with_seed(seed) ...
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7 views

How to optimize a network

I have optimized a recurrent network by adding multicell LSTMs. The network adapts now faster to the training set, but in the testing set the loss increases (it goes even over 2.0!). I tried adding ...
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24 views

Many-to-one prediction using LSTM in Keras, reshaping data

I have multiple pandas dataframes containing multiple users, with for each user, a sequence of sequential timestamps of multiple features. It looks something like the following: user day ...
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39 views

How to change this Sequential model to Functional model?

Sequential model: X = tokenizer.texts_to_sequences(data['text']) X = pad_sequences(X) embed_dim = 128 lstm_out = 300 batch_size = 32 ##Buidling the LSTM network model = Sequential() model.add(...
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17 views

Multivariate forecasting with LSTM input output data shape

I have to predict the number of sales for 215 products in 60 different shops, training on the sales of 31 months(973 days) and validating on 2 months(61 days). I have created 4 dataframes. train_x: [...
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Different zooms in cropped image- LSTM image classification

I have the problem that while cropping face images (with the same output size 256x256) the face looks bigger in some images than in another ones(the others have more background and less face). I want ...
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27 views

Keras LSTM shape doesn't contain length of sequence

I ran the following code from keras import layers input_shape = (1000, 10) x = layers.Input(shape=input_shape) print(x.shape) lstm1 = layers.LSTM(input_shape=input_shape, units=50, return_sequences=...
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LSTM Input variables with different time stamps

What I am trying to achieve Contractual Monthly prices such as December 2018, January 2019, February 2019 and so on till December 2026 for Natural Gas change every 10 minutes and there are close to ...
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23 views

LSTM hyperparameters not available in model.summary() after loading model

I try to load a LSTM model (created by Keras) after using the command: model_json = model.to_json() with open("model.json", "w") as json_file: json_file.write(model_json) with the ...
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1answer
19 views

Keras masking layer as input to lstm layer

I'm trying to create a LSTM model. Before passing the data to the first LSTM layer, I want to add a Masking layer. I am able to do this using Sequential approach in Keras. See example. However when I ...
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34 views

Tensorflow Java RNN-LSTM reset state

Is it possible to reset RNN-LSTM hidden state using Tensorflow Java API? I'm currently predicting using loaded model; model = SavedModelBundle.load(MODEL_PATH, "serve"); outputs = model.session()....
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30 views

Keras shows shape error at the end of first epoch

I try to create an LSTM autoencoder with keras While, it shows a value error at the end of first epoch ValueError: operands could not be broadcast together with shapes (32,20) (20,20) (32,20) The ...
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15 views

When to use GlobalAveragePooling1D and when to use GlobalMaxPooling1D while using Keras for an LSTM model?

I have to make LSTM classification model for some text and I am confused between GlobalAveragePooling1D and GlobalMaxPooling1D in the pooling layer while using keras. Which one should I use and what ...
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1answer
22 views

How to make a selective back-propagation in a mini-batch in Tensorflow?

Recently, I'm working on a project "predicting future trajectories of objects from their past trajectories by using LSTMs in Tensorflow." (Here, a trajectory means a sequence of 2D positions.) Input ...
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17 views

Concatenate an input of 27 fields to the output of the LSTM layer using Keras in Python

I have an existing LSTM model that looks as follows: model_glove1 = Sequential() model_glove1.add(Embedding(vocabulary_size, 25, input_length=50, weights=[embedding_matrix25],trainable=False)) ...
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20 views

LSTM autoencoder Issue on the dimension with Keras

I am trying to make an autoencoder with Keras. I am having error as follows ValueError: Error when checking input: expected lstm_1_input to have 3 dimensions, but got array with shape (480, 7) ...
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LSTM Keras Chunks Window Size vs Timesteps

I'm extracting time windows from observations. Each window has a size with 300 which means the data is sampled for 3 seconds with 100Hz. My advisor told me that timesteps in input_shape=(timesteps, ...
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16 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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37 views

How do I shape multivariate data for input to LSTM

What I am trying to achieve. I am trying to predict opening price of Natural Gas ("NG Open") from multiple input parameters per table below. I have followed some tutorials but they don't explain the ...
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20 views

Keras Stateful LSTM get low accuracy when testing on training set

Generally, I use the stateful LSTM to make predictions. When I train the LSTM, the output accuracy is quite high. However, when I test the LSTM model on the training set, the accuracy is low! That ...
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16 views

Using scaled targets with Keras categorical_crossentropy?

I am building my first keras time series LSTM RNN and was hoping somebody more knowledgable could help me with my question: Is it possible (does it work) to scale the targets given to the network when ...
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45 views

Train LSTM with probabilistic labels

I´m currently working on a project where e.g. 10 users rated texted into two 2 categories. I´m trying to use the distibution as label for training a LSTM, e.g. if 8 out of 10 users voted for "yes" the ...
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33 views

Keras - LSTM on embedding - dense layers

I am trying to replicate the work of a paper (on binary classification of text) to form a benchmark for my model- the paper said: "these tokenized tweets are transformed into an embedding using the ...
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22 views

What is the correct format of the test input for LSTM neural network?

I have learned some tutorials for LSTM time series prediction. According to that tutorials, My training data format would be like, NOTE : This data is only for example. this is not the real data. x ...
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28 views

Keras Encoder Decoder expected to have 2 dimensions

A Keras Encoder Decoder returns an InvalidArgumentError as the shapes of the inputs seem incompatible. I have: X_numerical.shape gives (304, 2500, 4) as input data y_numerical.shape gives (304, 40, ...
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24 views

LSTM model doesn't predict values higher than certain value (not same value all the time)

First of all thanks for any help! I want to create a simple LSTM model that predict the value of next minute Household Electric Power Consumption. using this dataset: https://archive.ics.uci.edu/ml/...
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14 views

Keras embedding layer error using word2vec with gensim

I got this error: Error when checking input: expected embedding_2_input to have 2 dimensions, but got array with shape (831, 48, 200) I want to do RNN LSTM with Keras for classify each word of ...
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1answer
20 views

Training and evaluating accuracies come different in lstm model of keras

I am training a LSTM model for sentiment analysis using keras. Training the training set gives accuracy:80+ percentage during the epochs processing, but evaluating or predicting the model with the ...
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42 views

Repeating tf.data.Dataset.from_generator() from a Python generator, iterating a database

I have a panel dataset that I want to do Long short-term memory (LSTM) on it. Dataset comes from a postgreSQL database. My data structure is similar of the following: Therefore, my timestep is 4. It ...
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16 views

Predicting with a tensorflow Estimator without loading from a checkpoint every time

I have a tensorflow Estimator that I have trained on some data and I'd like to use it to predict. I'm using it to construct text with an RNN, so the input at step t + 1 is dependent on the output from ...
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2answers
25 views

Appending a recurrent layer to PyTorch LSTM model with different hidden size

I'm developing a BI-LSTM model for sequence analysis using PyTorch. For which I am using torch.nn.LSTM. Using that module, you can have several layers with just passing a parameter num_layers to be ...
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A Neural Network that accepts a binary vector as input and outputs a string

I am not familiar how to generate strings (words) using neural networks. Basically, that training data I have consists of many binary vectors, each sample/vector generated from a word. I am not ...
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1answer
21 views

batch_input_shape for Keras LSTM model

I am trying to build a neural network with an LSTM as first hidden layer with the Keras library (tensorflow backend). I am having problem understanding how to reshape my data and feed it to a stateful ...
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1answer
28 views

Why not use Flatten followed by a Dense layer instead of TimeDistributed?

I am trying to understand the Keras layers better. I am working on a sequence to sequence model where I embed a sentence and pass it to a LSTM that returns sequences. Hereafter, I want to apply a ...
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107 views

Implementing a many-to-many regression task

Sorry if I present my problem not clearly, English is not my first language Problem Short description: I want to train a model which map input x (with shape of [n_sample, timestamp, feature]) to an ...
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1answer
34 views

Keras LSTM different input output shape

In my binary multilabel sequence classification problem, I have 22 timesteps in each input sentence. Now that I have added 200 dimensions of word embedding to each timestep, so my current input shape ...
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27 views

How can I backprop over PyTorch LSTM built from primitive tensor operations (eg not `nn.LSTM`)

EDIT : the problem with my implementation was trying to extract my output, IE a one-hot vector, directly from the hidden state. I added a dense layer on top instead and it works fine. I'm trying to ...
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2answers
25 views

How to input a classification time series data into LSTM

I want to feed my data into a LSTM network, but can't find any similar question or tutorial. My dataset is something like: person 1: t1 f1 f2 f3 t2 f1 f2 f3 ... tn f1 f2 f3 . . . ...
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34 views

How to add recurrent dropout to CuDNNGRU or CuDNNLSTM in Keras

One can apply recurrent dropout onto basic LSTM or GRU layers in Keras by passing its value as a parameter of the layer. CuDNNLSTM and CuDNNGRU are LSTM and GRU layers that are compatible with CUDA. ...
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42 views

LSTM. Online studing [closed]

I have a question about LSTM neural network and didn't find full answer. 1). I have some data and training my model one this data (so, in a future I will have a prediction by model based on this data)...
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1answer
18 views

Problems with Bidirectional LSTM

Initially I used a LSTM with two hidden layers then decided to see if using a Bidirectional layer would have any improvements. I made no changes to the shape of the input from LSTM to Bidirectional ...
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1answer
39 views

Having incompatible issue when build LSTM VAE model

I try to build a VAE LSTM model with keras. Input shape is (sample_number,20,31) While, there are some incompatible issue happening. I'm not sure which part of my code being wrong, forgive me for ...
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41 views

Getting wrong output while executing the spell check program

I'm using this code for spelling correction. python version is 3.6.5. I'm executing this code in jupyter notebook. code: import os import errno from collections import Counter from hashlib ...
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41 views

Variational Dropout in Keras

I am trying to implement an LSTM neural network based on the variational RNN architecture defined in Yarin Gal and Zoubin Ghahramani's paper https://arxiv.org/pdf/1512.05287.pdf using Keras with ...
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31 views

Generator-Function for Video Frame Prediction with RStudio/Keras

I'm currently working on a project for anomaly detection in surveillance videos using a convolutional LSTM autoencoder (following the method discussed in this paper: https://arxiv.org/pdf/1605.08104....
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34 views

Should Pytorch LSTM batch input predict more than one output?

I am trying to understand how pytorch implements batching for multiple feature time series data. I am experimenting with stock data that has [open, close, high, low, volume] for each timestep. In ...
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17 views

Visualize LSTM hidden states

I have seen this visualisation in differents blog/website such as: http://blog.echen.me/2017/05/30/exploring-lstms/ or http://karpathy.github.io/2015/05/21/rnn-effectiveness/ But even if I ...
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15 views

Overfittin an LSTM RNN for debugging

I'm using tensor flow with keras and I'm trying to build a simple two-layer RNN with LSTM cells (for language modeling, predicting the next word). I'm using the PTB dataset and I'm trying to implement ...
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RNN_LSTM_TENSORFLOW does not feed updated w, b in new epoch, although it does in the next batch in the same epoch

I have a problem, it may be obvious but I don't know how to fix it. Although it seems that the w, b are updated in each batch, when a new epoch beggins the w, b are not the last ones(the ones that ...
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1answer
51 views

Why is import cntk as C not working in google colab

I installed opencv version 3.4.4, installed cntk,Importing into google collab gives the following results. import cntk as C /usr/local/lib/python3.6/dist-packages/cntk/cntk_py_init.py:56: ...