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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TimeDistributed in Keras/Tensorflow

I am trying to implement a simple many to many LSTM for Sequence Prediction. The problem is very easy. The input is a sequence of 0s and 1s. The output at each time step is the count of ones in the ...
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Tensorflow sequence to sequence with LSTM

I am new to python. When I try to run the below program I get the following error. ValueError: Variable model/embedding/seq2seq/seq2seq_encode/rnn/multi_rnn_cell/cell_0/lstm_cell/kernel does not ...
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My LSTM code give flat prediction and don't know what is wrong..Anyone can help take a look?

Here is the code. I think the class mylstm has problem but I can not find it... The input is simple, which is just 7 columns data. I tried to print out all the tensors but did not find what was wrong....
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Error when checking model input: the list of Numpy arrays that you are passing to your model Keras

I am writing a LSTM in keras that can detect how toxic are comments. I train my model on X. Operations that i did on X 1. max_features = 2000 tokenizer = Tokenizer(num_words=max_features) tokenizer....
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Error when checking target: expected dense_2 to have 2 dimensions, but got array with shape (1, 1226, 2)

Here is the code that I am trying to run: y = Df[['label']] y_train = np.column_stack((y_train['label'])) y_test = np.column_stack((y_test['label'])) data_dim = 18 timesteps = 1 num_classes = 2 ...
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How implement attention layer in Keras?

I want to implement model in Python like in this article - https://bmcbioinformatics.biomedcentral.com/articles/10.1186/s12859-017-1868-5. The main problem for me is that I don't now how build ...
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How to bundle nearby features inside keras model?

I have model with character embedding and word embedding pre-trained before model. The structure of model is below: # input and embeddings for characters char_in = Input(shape=(50, 20,)) emb_char = ...
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Is it okay to RNN/LSTM/GRU has negative input

I was looking for an explanation in the web, but failed to find one. Let's talk about a specific time step of a RNN. Assume we have a negative input at that point say, x(t) = (-2,4,-4) and we also ...
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28 views

Slice a 3D tensor, based on the given sequence length array in tensorflow

I want a tensorflow function, which accepts a 3D matrix and an array ( shape of the array is similar to the first dimension of a 3D matrix ) and I want to slice the elements from each 2D matrix inside ...
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Complicated LSTM in Keras

I followed keras lstm examples and can understand those. I understand the single lstm layer networks. Now, I am trying to have something similar to the following, I am confused as to how to get the ...
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Error 'Input 0 is incompatible with layer conv1d_48: expected ndim=3, found ndim=2' when adding Conv1D layer

I am trying to construct the following model: model = Sequential() model.add(Embedding(input_dim = num_top_words, output_dim = 64, input_length = input_length)) model.add(LSTM(100, activation = 'relu'...
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Keras multi-step LSTM batch train classification at each step

Question How to batch train a multi-step LSTM in Keras for single-label multi-class classificaiton, at each time-step for > 2 classes? Current Error Each target batch is a 3-dimensional array with ...
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“Merge” replacement Keras/Tensorflow/Python3

Merge is not running with Keras/Tensorflow/Python3 version. With previous versions, Merge was running. But now, it is not running. So I think I should convert this code with replacement "Merge". "...
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43 views

Keras fit model: TypeError: unhashable type: 'numpy.ndarray'

I implement following code. It successfully works in previous version of Keras: max_sequence = 56 input_dim = 26 print("Build model..1") first_input = Input(shape=(max_sequence,input_dim)) ...
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Tensorflow RNN how to create zero state with various batch size?

In this question How do I set TensorFlow RNN state when state_is_tuple=True?: the accepted answer initialize the initial state like this: state_placeholder = tf.placeholder(tf.float32, [num_layers, 2,...
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How can I run pytorch bi-LSTM+CRF pytorch model on GPU?

I'm learning NN with pytorch. I want to run Pytorch Example on GPU. I've tried using .to(device) and .cuda. But it occurs error. Can anyone suggest me where should I change? I've separated model ...
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Keras layer for downside the time steps after masking

I face with a problem when conducting sequences of varied time steps using LSTM layer. I want to restore the original time-step for each sequence in my model which is like this: model = Sequential() ...
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How to apply the dimension to tensorflow lstm cells?

I am a bit confused of how tensorflow lstm cells dimensions. Let's say I have this design: N number of sequences with the same length T. Each sequence is a series of 1-D array with length M The ...
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20 views

keras GRU model “ You must feed a value for placeholder tensor”

I'm working with this model : def controller(Cin,Cout,Ein,Eout,batch=1,load=1): inc1 = Input(batch_shape=(batch,Cin)) h1 = Reshape(target_shape=[1,Cin])(inc1) h1 = GRU(activation='relu',units=8,...
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Window Rolling Aggregation for categorical Data

I have one column Dataframe of size 5 milliom rows. I want reduce it to 25k rows by aggregating each 200 rows into one (25k x 200 = 5 000 000 ). This row value should take to class label that is most ...
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Analyzing the keywords or the words that decides the sentence sentiment [closed]

Sentence: My mobile is best because it has large screen and good speakers. This sentence is a positive. I'm getting the sentiment of the sentence by using RNN and LSTM. But i want to know why that ...
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Keras Graph disconnects when combining a LSTM with a CNN

The idea is to train a CNN on a cosine similarity matrix of the hidden states of two bilstms. I try to get the following code working, but it is failing giving the error message: Graph disconnected: ...
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early stopping in lstm with Python

How to do early stopping in lstm. I am using python tensorflow but not keras. I would appreciate if you can provide a sample python code. Regards
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Code to create a reliable Language model from my own corpus

I have a corpus of sentences in a specific domain. I am looking for an open-source code/package, that I can give the data and it will generate a good, reliable language model. (Meaning, given a ...
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LSTM prediction the next number in array of numbers grouped by mathematical operations of subtraction and additions

LSTM predicts the closed price of share for the next, the next word in the sentence etc. It inspire me to think about the application of the solution to my problem. What do you think if LSTM is ...
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46 views

Get output from last layer in each epoch in LSTM, Keras

We are already aware that output of each layer can be obtained from following code: def get_layer(model,x): from keras import backend as K get_3rd_layer_output = K.function([model.layers[0]....
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How to set size of hidden state vector in LSTM, keras?

I am currently setting the vector size by using model.add(LSTM(50)) i.e setting the value in units attribute but I highly doubt its correctness(In keras documentation, units is explained as ...
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How to index a list of LSTMStateTuple with a tensor?

I have a python list of LSTMStateTuple objects and I have to use a tensor as index to retrieve them. For example: index = tf.constant(0) lstm = tf.nn.rnn_cell.LSTMCell(128) states = [lstm.zero_state(...
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34 views

Keras LSTM and multiple input feature: how to define parameters

I am discoveting Keras in R and the LSTM. Following this blog post, I want to predict time series, and I would like to use various past time point (t-1, t-2) to predict the t point. Here is what I ...
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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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keras fit generator shape difference

Im trying to fit an LSTM using fit generator as my data is an array of sparse matrix and i need to feed the network with the non sparse matrix. the shape of my data is (835027,) each instance is a ...
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28 views

Time Series Prediction using a given Forecast

Let us consider the following problem: We have a time series F(t) that we want to predict. We know that F depends on some other time series G_1(t), G_2(t),...,G_m(t). We have access to forecast ...
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Can't restore variables properly , tensroflow 1.6, python 3.5

I was testing a hierarchical LSTM using Text8 text corpora. I constructed a network using tensorflow, and then trained on the training set, tested on the test set,and everything went well. Then I ...
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How To Overcome Class Inbalance In Temporal Data For Trigger Word Detection

I have a GRU that I'm training to detect a specific word. I've generated over 500 examples of this trigger word (1 second clips) and 500 examples of words that are negative. I combined these overtop ...
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LSTM in Keras: Number of parameters differs between sequential and functional API

With the Sequential API If I create a LSTM with the Sequential API of Keras with the following code: from keras.models import Sequential from keras.layers import LSTM model = Sequential() model.add(...
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Keras.prediction() is getting worse with more prediction

I am new using Keras ans I was experimenting with it. I have built the following network, as I am trying to understand the "stateful" option in Keras LSTM. : rdrop = 0.3 rdrop2 = 0 model = Sequential(...
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35 views

Keras Sequence to Sequence Prediction, issues with shapes

I'm trying to do sequence to sequence learning with Keras. My data looks like the following. h h h l l l i r h h l l l l i r h l l l l l i r h m h m h h c u ... What I've done is to one-hot ...
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41 views

Possible to add a bidirectional LSTM before a CNN in Keras?

I am currently working on a system that classifies whether two sentences share the same content or not. For this purpose I use pretrained word vectors, so there is an array with the word vectors of ...
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28 views

You must feed a value for placeholder tensor

I am trying to implement an lstm nn using tesorboarb and I am receiving this error message: You must feed a value for placeholder tensor 'performance_1/loss_summary'. I have already searched for an ...
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using LSTM to predict multiple independent output

I have 10 data features (A1-> A10) and two outputs (B, C). B and C are independent of each other. When using LSTM to predict B and C, should I just use TimeDistributed(Dense(2)), or should I run ...
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31 views

Meaning of the hidden state in Keras LSTM

Since I am new to deep learning this question may be funny to you. but I couldn't visualize it in the mind. That's why I am asking about it. I am giving a sentence as the vector to the LSTM, Think I ...
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22 views

Getting very low accuracy using lstm for imdb reviews

I have converted the imdb reviews into 300 dimension using Word2Vec. I have kept embedding_vecor_length = 32, input_length = 300 of 25000 reviews. I am getting very poor accuracy and high loss. At ...
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Does Stateful=False in Keras means only last batch matters

According to Keras's source code, stateful means the "state" is assigned to the initial_state of next batch, otherwise initial_state would be reinitialized. What does initial_state mean? After ...
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How to use Scikit Learn Wrapper around Keras Bi-directional LSTM Model

I have created a Keras LSTM model that does sequence classification. I have 27 sequences in the Training set and 18 sequences in the Test set. Each sequence has 4000 time-steps that I have achieved by ...
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Regularizations do not change the point of inflection when loss start increasing

I am using an LSTM network to solve a multi-class (3 classes) classification problem. Without regularization, the model overfits within 5 epochs (val loss starts to increase while training loss ...
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27 views

Dimensionality of the `Y` input for LSTM in Keras

What dimension should the LSTM output be? Currently I'm using return_sequences=False and model.summary() suggests that the Dense(1, activation='sigmoid') layer should have output: (None, 1) Where ...
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46 views

Keras fit_generator raise You must compile your model before using it Error

I try to build a CNN + LSTM model by Keras to train a model for video classification task. Firstly, A simple model was built and trained with mock data, 'fit()' api, also it works! But actually, what ...
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Evaluating Perplexity on Keras LSTM model for language

I created a language model using this LST network: w2v_model = gensim.models.Word2Vec(sentences, size=150, window=4, min_count=2, workers=10) pretrained_weights = w2v_model.wv.syn0 vocab_size, ...
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rescale and inverse_transform not returning predicted and actual values in original scale for LSTM multivariate time-series forecast

I'm currently building an LSTM multivariate time-series model to predict one output at current time (t) using 22 features from the previous timestamp (t-1) as inputs. I've been following the ...
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44 views

Why there will be a baseline for LSTM and how to improve the performance?

I have a LSTM network with the following configuration: model3 = tf.keras.Sequential() model3.add(tf.keras.layers.LSTM(15, input_shape=(1, 10), return_sequences=True)) model3.add(tf.keras.layers....