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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AttributeError: 'KerasRegressor' object has no attribute 'model'

I have this piece of code. But when I try to run the prediction value code there's an error # Creating a data structure with n timesteps X_test = [] for i in range(5, 25): X_test.append(inputs[i-...
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How to apply model.fit() function over an CNN-LSTM model?

I am trying to use this to classify the images into two categories. Also I applied model.fit() function but its showing error. ValueError: A target array with shape (90, 1) was passed for an output ...
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My question is,on feature-selection with rnn in tensorflow and python

Sir can u please provide the sample code for tensor flow to select the top K features from N(of order 2000 and above) using RNN s (lstm) using dropout. and then view the the names of the same
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Why LSTM uses sigmoid function to mimic the gate mechanism instead of binary value(0/1)?

In LSTM, we usually use sigmoid function to mimic the gates mechanism (soft), but the problem is in a lot of cases, such function gives a value around 0.5, which does not mean anything in terms of ...
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Dealing with missing data for time series data for a custom LSTM in Pytorch

I am coding up a custom LSTM in Pytorch, and would like to train my network on time series data with instances that have quite a few missing time steps. I was looking for a reasonable approach to ...
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NLP model giving results only for RNN but not for any of GRU, LSTM, Bidirectional, Stacked, GloVe (PyTorch)

I am building a NLP model for Jigsaw Toxic Comments classification using PyTorch. My model with RNN cell gives me good accuracy results as just over 90% accuracy but when I am using ANY OF THE GRU,...
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IndexError: tuple index out of range for data structure in making prediction

Need your help!! I've been running this code below # Creating a data structure with 60 timesteps X_test = [] for i in range(60, 24): X_test.append(inputs[i-60:i, 0]) X_test = np.array(X_test) # ...
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How to initialise the h_n and h_c in LSTM?

I try to use LSTM do to some classifications, and I see some examples where h_n and h_c are set to 0, can I initialise these two parameters with other values?
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Printing the intermediate output vector in an RNN [closed]

I'm a beginner when it comes to RNNs and was playing around with this repo. It is a basic RNN encoder-decoder model. This code is very new to me and a lot to process. Now I'm trying output the ...
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TensorFlow text generation model isn't trained on all samples

I'm trying to learn text generation so I've implemented the code from the guide Text generation with an RNN in the TensorFlow documentation. Instead of Shakespeare my dataset consists of the integers ...
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how to set time_step in LSTM in pytorch

I'm dealing with string classification, and I want to use LSTM, but I have some questions about setting time_step. My data set looks like: Data ----- Label DKWL----0 FCHN----0 KDQP----0 IHGS----1 ......
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Is there any alternative for tf.nn.raw_rnn in tensorflow 2?

I know I can use tf.compat.v1 but I want to know if there is another alternative to this
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why my rnn-lstm model gives same prediction in a flask web app?

I have saved a RNN model for sentiment analysis and it gives perfect output in jupyter notebooks but it is giving a same value 0.48% when called using model.predict in flask app. os.environ['...
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Discrepancy between keras CosineSimilarity metrics and cosine similarity computed between target and predicted vector

I have trained a sequential model in keras, with sparse vectors as inputs (padded_inputs_multil for training and padded_inputs_tr for testing) and dense vectors as output (target_multil_array for ...
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Mathematical model for Recurrent neural networks for prediction

Am currently working on a research work predicting mobile phone new release tenure using RNN. So I need help with the mathematical model for this.
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When trying to use torch's rnn.py, AttributeError: 'builtin_function_or_method' object has no attribute 'size'

Im getting this error when I run the model I'm using. This is the code that seems to be causing the issue? def forward(self, b, xc, xw, lens): self.hidden = self.init_state(b) x = ...
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How to write a custom RNN ' for loop ' in tensorflow 2

In the Guide on Recurrent Neural Networks (RNN) with Keras, this is written as a second focus point: Ease of customization: You can also define your own RNN cell layer (the inner part of the for ...
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How to use TensorDataset in Pytorch for batching word into correct sequence?

I got this function to do Implement the batch_data function to batch words data into chunks of size batch_size using the TensorDataset and DataLoader classes. For example, say we have these as input:...
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Interpretation of `hidden units` in an RNN Layer (tensorflow,Pytorch)

This is a general question for any of the frameworks for both RNN and LSTM. When we use a Vanilla or plain networks, for a single layer, such as current_layer = torch.nn.Linear(100,125) means that ...
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Classification Problem with Neural Network

So, i have the task to classify different job titles into categories. The data is really noisy and consists of around 200 categories containing around 20 job titles. So my thought has been to create a ...
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Relationship between dimensions of hidden-output state of an LSTM-cell with the number of LSTM-cells in an LSTM layer?

I was trying to figure out how to estimate the number of parameters in an LSTM layer. What is the relationship of number of parameters with the num lstm-cells, input-dimension, and hidden output-state ...
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1answer
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Using Softmax Activation function after calculating loss from BCEWithLogitLoss (Binary Cross Entropy + Sigmoid activation)

I am going through a Binary Classification tutorial using PyTorch and here, the last layer of the network is torch.Linear() with just one neuron. (Makes Sense) which will give us a single neuron. as ...
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Keras - Trouble understanding RNN units

I have started Deep Learning few months ago using Tensorflow and tf.keras. I fully get the concept behind classic Dense Layers or Convolutional/pooling layers where the unit parameter is the number ...
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TimeSeries prediction / optimization problem for a solar powered water pump

I would like to solve an "optimization problem" by using new and fancy machine learning methods (also to learn more about them) and I haven't found yet which methods / models will help me to solve my ...
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Generating Dinosaur names with Tensorflow RNN

I try to adapt "Text generation with an RNN" tutorial to generate new dinosaur names from a list of the existing ones. For training RNN tutorial text is divided into example character sequences of ...
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Is it possible to add additional information to Recurrent Neural Network?

I'm a beginner to Recurrent Neural Network, while learning it I find that the RNN only takes 1 previous value into consideration or 'n' previous value into consideration to predict the next value. But ...
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Python open() function - issue with file opening

I'm currently playing with this GitHub repo. I'm having an issue with the file opening/reading part of it. In the prepare.py, there is the line fo = open(sys.argv[1]). Now when I create a file and ...
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1answer
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Should <EOS> and <BOS> tags be explictly added to vocabulary after using keras.preprocessing.text Tokenizer?

In Keras we have keras.preprocessing.text to tokenize the text on our requirement and generate a voabulary. tokenizer = tf.keras.preprocessing.text.Tokenizer(split=' ', oov_token=1) tokenizer....
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RNN scratch long training time and multi batch

To summarize, I write my own RNN from scratch and it seems that it has no problem working. However, it takes a lot of time to train the data, so I want to determine the batch size. The system is ...
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Tensorflow Reinforcement Learning RNN returning NaN's after Optimization with GradientTape

def create_example_model(): tf.keras.backend.set_floatx('float64') model = Sequential() model.add(LSTM(128, input_shape=((60, len(df_train.columns))))) model.add(Dense(64, activation='...
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interpreting strange output from keras.predict

im using keras for a multiclass clasffication of text-comments problem, this one, to be precise: https://www.kaggle.com/c/jigsaw-toxic-comment-classification-challenge There is six classes, and the ...
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Defining the target for next element prediction during sequence modeling

I have a question about shifting the input sequence to predict the "next word" in a sequence. I'm providing a toy example below but note my samples are IID and not from a giant corpus of text but ...
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Character-based Text Classification with Triplet Loss

Im trying to implement a text-classifier using triplet loss to classify different job descriptions into categories based on this paper. But whatever i do, the classifier yields very bad results. For ...
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1answer
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RNN model not learning anything

I am practicing with RNN. I randomly create 5 integers. If the first integer is an odd number, the y value is 1, otherwise y is 0 (So, only the first x counts). Problem is, when I run this model, it ...
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Neural Network ==> Multiple Output (3000++) ==> Predict the same values? How to fix it?

I am training an LSTM NN to forecast the time series of more than 3000 features. The things is each features has a particular time series, but the NN predict a constant value which is different for ...
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1answer
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does output from keras fit show average of loss?

I am using binary cross entropy, and I have 2 epochs: batch_size = 32 epochs = 2 History = model.fit(padded_train, y_train, batch_size = batch_size, epochs = epochs, validation_split = 0.1) Now i ...
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LSTM/GRU TImeSeries multioutput strategy forecasts give dropped values

Currently, I'm playing with Stocks Predictions task which I try to solve using LSTM/GRU. Problem: After training LSTM/GRU I get huge drop predicted values Model training process Train, test data is ...
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1answer
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In TensorFlow 2.0 how to pass the output of a LSTM model at the previous time-step as input to next time-step?

I want to build a LSTM model where the input to the (n+1)th timestep is a function of the output at the (n)th timestep. I don't see a way this can be done in the current framework. People have been ...
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How do I do a GridSearch for Timesteps for a KerasRegressor RNN?

the GridSearch parameter tuning for batch_size, epochs, optimizer, and units work perfectly for my RNN: X_train = []        y_train = [] for i in range(60, np.ma.size(training_set_scaled)): #have ...
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1answer
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Tensorflow 2.0 - LSTM statefulness and input size

For a specific problem in reinforcement learning (inspired in this paper), I'm using a RNN which is fed with data of shape (batch_size, time_steps, features) = (1,1,1), for L data-points, and then a "...
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1answer
23 views

ModuleNotFoundError: No module named 'tensoflow'

%matplotlib inline import tensoflow as tf import matplotlib.pyplot as plt from rnn.lstm_recurrent_model import LSTMRecurrentModel from rnn.lstm_solver import LSTMSolver from rnn.data_util import ...
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ValueError: Input 0 of layer bidirectional_16 is incompatible with the layer: expected ndim=3, found ndim=2. Full shape received: [None, 64]

model=tf.keras.Sequential([tf.keras.layers.Embedding(encoder.vocab_size,64), tf.keras.layers.Bidirectional(tf.keras.layers.LSTM(64, return_sequences=True)), ...
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How to extract relevant phrases from sentences regarding a particular topic using Neural networks?

I have training data as two columns 1.'Sentences' 2.'Relevant_text' (text in this column is a subset of text in the column 'Sentences') I tried training a RNN with LSTM directly treating 'Sentences' ...
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advantages of using 'relu' for deep layer and 'sigmoid' for output layerin lstm with keras?

im currently looking around at some lstm models using keras, and trying to learn about how they function. Im currently looking at this guide (not necessary to check out): https://www.kaggle.com/...
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Merge character-level RNN and word-level RNN

Given a task of sentence corruption detection(binary classification), I wonder is it possible to use both charcter-level and word-level RNN as the corruption happens both at character level(...
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What happend to my RNN states when the input change from one batch to another

I have a theoretical question based on RNN. As we all know, RNN have hidden states and it holds its previous time step information. While working with RNN we also batch our input data for better ...
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LSTM activation function for monotonic input data

If I am using an LSTM to predict future values of a time series chart which is more or less monotonically increasing. Does tanh work as an activation function for all the LSTM units since it is a ...
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1answer
27 views

Overfitting in LSTM even after using regularizers

I am having a time series prediction problem and building an LSTM like below : def create_model(): model = Sequential() model.add(LSTM(50,kernel_regularizer=l2(0.01), recurrent_regularizer=l2(...
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Error decreases on train set but stop to decrease in test set (NN) what is the diagnostic? Treatment?

I am relatively new in Neural Network and Keras. I am trying different Neural Network architectures and my goal is not to get the best accuracy but more to understand and be able to diagnostic the ...
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Why don't the weights in Recurrent Neural Networks change?

How the model learn without changing its parameters/ weights? If we train the RNN on some data and then apply it to test data , what changes do we make ? Cause the weights/parameters don't change ...

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