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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MInMax Scaling after Standarization of data for Time Series Prediction with RNN

Problem I am trying to predict to build a Recurrent Neural Network (RNN) for time series predictions. A common problem in RNNs is the Exploding Gradients problem, in which large error gradients could ...
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Error in Recurrent neural networks (RNN) code

Code: from IPython.display import clear_output from random import sample s.run(tf.global_variables_initializer()) batch_size = 32 history = [] for i in range(1000): batch = to_matrix(sample(...
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how is stacked rnn (num layers > 1) implemented on pytorch?

The GRU layer in pytorch takes in a parameter called num_layers, where you can stack RNNs. However, it is unclear how exactly the subsequent RNNs use the outputs of the previous layer. According to ...
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Value error due to dimension equality in LSTM model

Working on a multivariate LSTM model. Timesteps = 30 Days_ahead = 10 train_dataset = (2027,5) test_dataset = (51,10,5) x_train = (1988,30,5) y_train = (1988,10,5) The dataset is split into 80/20 (...
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Tensorflow GRU layer call() arguments -- TypeError: call() got an unexpected keyword argument 'reset_after'

I implement a model with a GRU layer, the model and its training work fine with just class MyModel(tf.keras.Model): def __init__(self, vocab_size, embedding_dim, rnn_units): super()....
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Understanding the architecture of an LSTM for sequence classification

I have this model in pytorch that I have been using for sequence classification. class RoBERT_Model(nn.Module): def __init__(self, hidden_size = 100): self.hidden_size = hidden_size ...
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How to build Sequential model for multiple outputs

This is a Classification problem (multiclass multioutput). I want Sequential model to give 3 outputs. Below is the required code. Whatever I do its throwing me errors. I have tried training data using ...
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<Google -magenta> How to reverse-quantizing midi notes, possible with performance RNN?

I read about 'Performance Rnn' at Google-magenta and trying to reverse-quantize my own midi files. Read the 'readme' and I understand that It generates music with expressive timing I have some midi ...
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20 views

Defining a loss function such that an external array is used

In my neural network (RNN), I am defining the loss function such that the output of the neural network is used to find the index (binary) and then the index is used to extract the required element ...
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Using RNN, predict the number of children playing outside from several temporal factors

Consider such a set-up. We want to estimate the number of children playing outside in the playground today. However, that depends on three factors, temperature (today and in the previous days), rain ...
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Can someone explain batch-size and timestep for a regression model using RNN?

I am working on a regression model, which has 50 datapoints per hour. I am having a hard time deciding on the difference between batch size and time-step. From my understanding, batch size is used to ...
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Predict an Eventlog with RNN and LSTM Model

I am trying to process an event log (from process mining) with the three key attributes CaseID, Activity and Timestemp for my thesis. I managed the data preprocessing and the creation of the model ...
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deprication of tf.contrib.rnn.LayerNormBasicLSTMCell

From the documentation I can see that tf.contrib has been deprecated for tensorflow 2. However, the Migration Guide page isn't found. I'm essentially trying to do write an rnn in tensorflow 2.1. Are ...
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Inverse Scaling Error with MinMaxScaler and RNN

I am trying to forecast a multivariate time series with RNNs using Keras. My plan is to forecast 12 targets simultaneously (1 step ahead forecasts) and use 56 features (12 target variables are also ...
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Shap DeepExplainer values with LSTM doen't fit

for my Thesis, I need to use Shap in order to explain the forecast of a LSTM model. In order to do so, I need to downgrade to TensorFlow V1 as it otherwise throws an error. Now after thousand of trial ...
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Why my neural network always predicts the same class?

I have the following neural network for binary classification. The problem is it always predicts the same class (class 1, or positive class). I tried oversampling the negative class so that the ratio ...
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How to make recurrent predictions in ML.Net

I've ported a RNN model from Matlab via ONNX, to be used in ML.Net. Gru/Lstm layers are supported in ML.Net, and I managed to do a one step prediction via the PredictionEngine and Predict function. My ...
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MinMaxScaler.fit_transform always return/transform to 0

following is my code, in which fit_transform() is always transforming to 0. I used same validation data and code while model training, however in testing it is behaving differently. Following is my ...
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22 views

Difficulty setting batch size correctltly in 2 layer RNN

I am building an RNN that makes a multi-class classification output for 11 dimensions in the output. The input are word embeddings that I took from a pretrained glove model. The error I get is (full ...
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PyTorch: "one of the variables needed for gradient computation has been modified by an inplace operation"

I'm training a PyTorch RNN on a text file of song lyrics to predict the next character given a character. Here's how my RNN is defined: import torch.nn as nn import torch.optim class RNN(nn.Module): ...
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Splitting an array to multiple batches, depending to a feature, to predict future events with the help of a RNN

enter image description hereI am trying to evaluate an event log(Process Mining) to predict future processes based on the three key attributes "CaseID", "Activity" and "...
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43 views

Using LSTM/RNN to predict a sequence of numbers

I am looking to apply RNN to a fairly simple problem, so as to grasp how it works. I followed this example which demonstrates how to use a LSTM layer to analyse input, and now I'd like to use it for ...
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26 views

ValueError in Inverse Scaling

I am building a RNN model and as I did for the training set, I need to scale my test data. I am running the code below and getting an error "ValueError: operands could not be broadcast together ...
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problem in finding which kind of model to use (RNN or some other thing)?

I am having trouble to find which kind of model to use (RNN or some other thing). I am trying to some project work in spare time. The problem I am trying to do is some kind of binary classification, ...
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Simple RNN has lower accuracy with Glove than without

I'm doing some sentiment analysis and have built 3 different models in two configurations: Simple RNN with GloVe and without LSTM with GloVe and without GRU with GloVe and without For LSTM and GRU ...
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How to train an RNN with examples of different lengths in Keras? [duplicate]

I am learning about RNNs and I'm using TensorFlow/Keras. I understand the basics of vanilla RNN and LSTM layers, but I'm having trouble understanding how to fit my model to the data. My dataset ...
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160 views

How to build RNN with multimodal input to classify time series

I have data of 50 samples per time series. I want to build a time series classifier. Each sample has three inputs - a vector with the shape 1X768, a vector with the shape 1X25, a vector with the shape ...
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Error when online training a stateful deep LSTM stack

I would like to use online training with a deep LSTM model. When using online training, my batch size is 1. I would also like the model to be stateful. As such, I don't want my input to be a sequence, ...
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Backpropagation Through Time and Vanishing Gradient

My question is a little bit complicated. Please bear with me for a moment. Suppose that we have a RNN structure for three input sequences (many-to-many). Image 1: RNN Structure The derivatives can be ...
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1answer
50 views

GRU model not learning

I’m trying to fit a GRU model on text data, to predict one of 26 labels. The problem is that the model is not really learning (accuracy is around 4%, which is just as random chance). Since I know that ...
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How to make a sequence to sequence prediction in GCN LSTM in tensorflow

I am using the GCN_LSTM function in the stellargraph module to make a multidimensional sequence to sequence prediction. gcn_lstm = GCN_LSTM( seq_len=seq_len, adj=sensor_dist_adj, ...
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63 views

How to caculate the perplexity using a trained model from Tensorflow's PTB model example?

During using the PTB model from the example, i got some questions. In the example, the author used the following way to get the test perplexity : def main(unused_args): if not FLAGS.data_path: ...
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join intent prediction and slot filling using Long Short Term Memory (LSTM) with Keras

I want to study a simple code that performs a join intent prediction and slot filling using Long Short Term Memory (LSTM) with Keras. Please recommend me.
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TensorFlow text generation RNN example failing on TF 2.6, tf.sparse.to_dense(), Invalid argument: indices[1] = [0] is repeated

I am trying to run through the TensorFlow text generation RNN example, https://github.com/tensorflow/text/blob/master/docs/tutorials/text_generation.ipynb Running on a local Windows computer with ...
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35 views

Why Epoch showing the same accuracy?

I am trying to build IDS intrusion detection system and trying to predict the label if it is benign or DDos. But I get the same accuracy along epochs. Code: from tensorflow import keras ...
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23 views

Different training result obtained from training simple LSTM in Keras and Pytorch

I’m trying to implement my LSTM model from Keras to Pytorch, but the results in Pytorch seem really bad at the moment. The network is really simple as below. model = Sequential() model.add(LSTM(10, ...
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32 views

Question about predicting stock prices using LSTM and saving future data

I went through this tutorial and tried to rewrite it so I could plot the future stock price. This tutorial:https://www.thepythoncode.com/article/stock-price-prediction-in-python-using-tensorflow-2-and-...
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GRU and LSTM does not see a clear sign of an "initial solution" in video regression task

I do the regression on the video. The initial solution was a one-frame convolutional network based on Xception. When I implemented GRU/LSTM-RNN (even with the addition of the initial solution as one ...
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1answer
33 views

Why does my Keras TimeDistributed CNN + LSTM model expect an incomplete shape

I am building a small CNN LSTM model in Keras for practice with video classification. The input dimensions of my data are (1, 5, 30, 10, 3) (batch size, time steps, width, height, channels). I found ...
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IndexError: index 440 is out of bounds for axis 0 with size 440 in Python

IndexError Traceback (most recent call last) in ----> 1 create_tf_record_2D(training_set, train_tfrec2D, LABELS) 2 create_tf_record_2D(test_set, test_tfrec2D, ...
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I am getting such error: WARNING:tensorflow:AutoGraph could not transform <function Model.make_test_function.?

Whenever I am trying to execute model.fit or other LSTM, RNN model related commands I am getting this warning: WARNING:tensorflow:AutoGraph could not transform <function Model.make_test_function.&...
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1answer
27 views

How can I set 'input_shape' of keras.layers.SimpleRNN, when Data is unvariate?

I am trying to do time-series forecasting using RNN, but an error continuously occurred in 'input_shape' of keras.layers.SimpleRNN, but I could not solve it, so I would like to ask a question. First ...
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I'm trying to create a deepVAR model and I keep running into a tuple index error in python

The following is the code I wrote so far for my gluonts deepvar model. I'm trying to use multiple time series to make a prediction and gluonts seemed to be a good option for that. The following below ...
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45 views

How does calculation in a GRU layer take place

So I want to understand exactly how the outputs and hidden state of a GRU cell are calculated. I obtained the pre-trained model from here and the GRU layer has been defined as nn.GRU(96, 96, bias=True)...
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How do I include repeated measures (unique identifier) when building a LSTM?

I am working with a time series dataset that has quarterly electricity consumption values for 20000 households over 5 years. How would I include the household unique identifier into an LSTM? I can ...
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How to Prepare training dataset for LSTM model training with different timestep values. My dataset look like below

my datasets looks like this. x_train = [[1,2,3,4.....100], [1,2,3,4.....50], [1,2,3,4....150], [1,2,3,4,...200]] y_train = [[1.0.0], [1.0.1], [0.1.0],...
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30 views

Can we get single output from multiple inputs while training the model?

I am trying to build a model on stock market prediction which helps traders to buy or sell any stock using Fibonacci retracement with LSTM RNN. For that, I have taken 30 days of sequential intervals ...
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21 views

Missing feature size when describing an LSTM layer/network based workload

The input tensor shape for an LSTM network is [batch, timesteps, features]. But in many places, I see only the batch size and the number of timesteps of an LSTM kernel are specified (in addition to ...
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ValueError:Input 0 of layer lstm_45 is incompatible with the layer: expected ndim=3, found ndim=4. Full shape received: (None, None, None, 128)

I'm new to deep learning and have a problem with understanding embedding and passing sequence of 4 feature vectors (all floats) to an LSTM model. My model looks as following: f_data = np.array([[[...
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32 views

Captcha Security and Deep Learning [closed]

I came across this research paper-http://www.cs.sjsu.edu/~pollett/papers/neural_net_plain.pdf. These researchers have come up with a way to break character-based CAPTCHAs and it seems they have ...

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