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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ML - Prediction vs Test are Straight Lines and Struggling to Inverse Normalised Data - DNN, GRU, LSTM

I am making simple LSTM, GRU and DNN networks, I have data of around 2.5k rows of power consumption, and combining it for days (700+ days in total). This is split 80/20 for train and test. I have ...
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How to solve incompatible layer in keras RNN_LSTM?

I am trying to create an RNN model but I am struggling to resolve this error: lstm_model = tf.keras.Sequential() lstm_model.add(tf.keras.layers.LSTM(100, activation="relu", input_shape=(...
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Getting NotImplementedError: Cannot convert a symbolic Tensor in my Recurrent Nueral Network

I suspect the the problem maybe in the first layer of my RNN. Examples I have seen use an input_shape parameter but when I attempt it I still get the same error. The only example I had to go off of ...
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Pytorch Rnn Can't learn sin function dataset

Help to understand why the Pytorch RNN model is not trained on a simple formalized ( Sin function) dataset. I get predictions far from the original. (More like an exponent than a sine) I am using ...
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In TensorFlow/Keras, how do you use the `add_loss` method inside a custom RNN cell?

My Goal: Use the add_loss method inside a custom RNN cell (in graph execution mode) to add an input-dependent loss. General Setup: Using Python 3.9 Using TensorFlow 2.8 or 2.10 Assuming import ...
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multivariate time series prediction with RNN, python

I am a newbie in neural network. I have to make a model predicting total number of typhoons for each months, using 22 indices. I have total numbers of typhoons and 22 indices for certain period from ...
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Predict text binary classification with RNN and didn't get expected output

I'm doing Amazon review sentiment analysis with RNN and LSTM. df2['Texts'] are Amazon customer reviews, and df2['label'] are binary integer 0 or 1. tokenizer = Tokenizer(num_words=5000, split=' ') ...
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non-broadcastable output operand with shape (67,1) doesn't match the broadcast shape (67,2)

I am trying to predict Y with a exogenous variable with a LSTM test_set = df_test[['q_sales','holiday']] inputs = np.reshape(test_set, (len(test_set), 2)) inputs = min_max_scaler.transform(inputs) ...
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PyTorch RNN error: RuntimeError: For unbatched 2-D input, hx should also be 2-D but got 3-D tensor

I am trying to train a simple RNN off tabular .csv data with 9 features and 7 classes. However, I keep running into the runtime error that the hx should be 2-D input. Additionally, I'm not sure why it ...
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Why to invert predictions on LSTM-RNN?

Here: https://machinelearningmastery.com/time-series-prediction-lstm-recurrent-neural-networks-python-keras/ under the paragraph: LSTM Network for Regression this guy inverts predictions inside the ...
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Compression and Data Transfer Project Guidance Required

I'm very new in tensorflow/pytorch field. I have one project need assistance where i have to implement the Data compression and transfer infrastructure using prednet (Deep neural network). My main ...
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Why does my LSTM always predict a straight line? [closed]

I'm trying to predict some stock data with LSTM in Pytorch. The shape of my original dataset is (2577,6). I want to use 60 time steps to predict the next data, so I reshape my data to (number of ...
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Neural network predicts too low values

I have build a NN that in general predicts relatively good values, but they are always too low, as you can see in the diagram. Prediction (The values on the diagram are inverse transformed, the ...
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Difference between MLP and ANN

I hope you are well, I will start a project in my field of research related to artificial intelligence. I had a little problem when I started to search in scientific papers. Since in some articles all ...
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Understanding Keras Layer Shape

My features/targets look like: x[0] = [10, 15, 13] y[0] = [1, 4] The numbers represent lookup indexes for words in english and french. Here's the shape of my input and training data: input: (137861, ...
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Ouput dimension in Pytorch LSTM

I have about (10000, 6) time series data. I made a sequence with 10 bundles. The whole data consisted of (9990, 10, 6). If I use a batch size of 20 and put it as an LSTM(batch_first=True) input, is ...
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How can I use legacy_seq2seq.embedding_rnn_seq2seq in tensorflow?

The problem is i am unable to find seq2seq in new tensorflow library Here's the code- decoderOutputs, states = tf.legacy_seq2seq.embedding_rnn_seq2seq( self.encoderInputs, # List<[batch=?, ...
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Why in RNN do we use loop iteration within the sequence for each instance in batch?

For example, we have a simple RNN cell, and we want to have 10 cells in just one layer. Why we should iterator inside for each item of x[i]. for epoch in range(100): loss = 0.0 # forward ...
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LSTM predict multiple steps ahead while having different input and output shapes

Let's say that I have input data that is of shape: NxTxD In my case, that is 1000x4x3 So I have a lookback (window size) of 4, and 3 dimensions (x1, x2 and x3). Let's say that I want to make 2 ...
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How to use LSTM outputs and feed a linear layer

I am creating a voice assistant like siri. As first step i am doing a wake word model. So i have bunch of audios for 2 second that has "wake up" word in it. Also bunch of the ones that doesn'...
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Need detailed description of the following set of parameters?

enter image description here I'm looking into some sort of LSTM compiling codes from internet and tried to read the documentation of the same but still i'm unable to get it into my head. so pls do ...
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How many LSTM neurons and how many layers are there in this Keras model?

My scrip as the follow: import keras def build_model(lr): model = keras.Sequential([ keras.layers.LSTM(units=33, batch_input_shape=(81, 33, 5), return_sequences=True, stateful=True), ...
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Train RNN network on EEG Timeseries for binary classificaton

I'm stuck trying to come up with the best logic to approach the following: I have a dataset composed of several csv files, each csv represents an EEG recording of a different person Each person is ...
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Modify gates in Keras LSTM layer

How can I modify gates (forget, input etc.) in keras LSTM layer?How can I modify gates (forget, input etc.) in keras LSTM layer?
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How to visualize each step's contribution for RNN's output (many-to-one frame)

Some papers say that RNN is a biased model (i.e., earlier words can weakly influence the prediction when later words appear). So, I want to ask how to visualize this influence. Can we say that this ...
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RNN classification prediction with temperature time series data

I'm kind of new to the field of RNNs and my current task is to predict a certain point of time in a series of temperature measurements based on previously labeled time series. More specific, I want to ...
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How do I approach a seq2seq problem with timed events?

I'm looking into building a sequence to sequence neural network, where each element of the sequence is a specific event happening in time. Specifically, the problem revolves around music: there are ...
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AttributeError: 'CuDNNLSTM' object has no attribute 'unroll'

I am trying to use Sherpa framework for population based training with this model x1 = Input((window_size, 3), name='x1') x2 = Input((window_size, 3), name='x2') convA1 = Conv1D(hidden_num,...
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LSTM seq2seq model for acronym expansion output issues

I am trying to create a lstm seq2seq model and train it on relevant data for acronym expansion. For example, if I feed in "I love NYC" to the model then it should output "I love New ...
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How can I initialize the hidden state (carry) of a (flax linen) GRUCell as a learnable parameter (e.g. using model.init)

I create a GRU model in Jax using Flax and I initialize the model parameters using model.init as follows: import jax.numpy as np from jax import random import flax.linen as nn from jax.nn import ...
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Is there a feature extraction process that can apply to SVR, RNN and Random Forests

My aim is to find the optimal of 3 models, RNN, Random Forests and SVM. My data set is classic stock price with variables Open, Close, High, Low, Adj Close and Volume I need a feature extraction ...
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Pre-processing data appropriately for a RNN

I’m trying to train a neural network which receives a text in active voice and outputs its passive voice conversion. Let’s say I have a csv file for the training set wherein all active voice sentences ...
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How to make a prediction on a RNN without training it every time [duplicate]

I am new to Neural networks and I have successfully trained an RNN but it takes a while to train the data. It would not be feasible for me to train the data every time I want to make a prediction. So ...
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usage of GRU in non sequential context

I was implementing a GRU in keras, I was still a bit confused about some things, but got to a model: modelGRU = tf.keras.models.Sequential() modelGRU.add(layers.Bidirectional(tf.keras.layers.GRU(50, ...
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InvalidArgumentError: Exception encountered when calling layer "sequence_features_30" (type SequenceFeatures). Condition x == y did not hold

I have an use-case on SequenceFeatures that is similar to the sample code from the Tensorflow documentation. (https://www.tensorflow.org/api_docs/python/tf/keras/experimental/SequenceFeatures). The ...
-1 votes
1 answer
41 views

loss value deep learning model is inf

I train a RNN deep learning model as bellow: model = Sequential() initializer = tf.keras.initializers.RandomNormal(mean=.5, stddev=1) model.add(LSTM(512, return_sequences=True, dropout=0.2,input_shape=...
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ValueError while fine-tuning TensorFlow image classification model using BiLSTM

When I'm trying to fit my model, the following ValuError problem arise but I can't solve it at all. Any help is welcome, My model here: model = Sequential() model.add(Conv2D(128, kernel_size = (3, 3), ...
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Re-Train huggingface pre trained model properly

I have a hugginface model, I am re-training it after adding a few layers of my own. embedding = model(input_ids, attention_mask=input_mask)[0] embedding = tf.layers.Embedding(tokenizer.vocab_size, ...
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RNN LSTM network for inputting a sequence of numbers

I'm trying to use LSTM networks to input a simple dataset that has multiple different sequences of numbers that represent musical data. The data is just a bunch of numpy arrays of floating point ...
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The size of tensor a (20) must match the size of tensor b (25) at non-singleton dimension 1 for pad_sequence() in pytorch

My Code : import torch.nn.utils.rnn as r a = torch.ones([1, 20]) b = torch.ones([1, 25]) c = r.pad_sequence([a, b], batch_first=True, padding_value=0) The Traceback of this code is : ...
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Tensorflow gradient tape returns None for all variables

I'm trying to adapt the tensorflow text generation tutorial (https://www.tensorflow.org/text/tutorials/text_generation) to using a simple gan akin to (https://www.tensorflow.org/tutorials/generative/...
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LSTM custom Loss function caued error. ValueError: too many values to unpack (expected 4)

I tried to implement LSTM with custom function by tf.random.set_seed(7) model = Sequential() model.add(LSTM(100, input_shape=(18,1 ), return_sequences=True)) model.add(Dropout(0.2)) #model.add(LSTM(...
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Bidirectional GRU from keras weight to inference in c

I trained BiGRU in python using Keras, saved the weights, and used them when inferencing in c. I succeeded in implementing forward GRU inference but failed when I used it to infer the BiGRU. I took ...
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How to buid keras model with multi dimensional input multi dimensional output

I want to use sensor reading to estimate some quantities. My sensor readings in each time step have 9 elements and the out quantities have 4 elements input_size = (304414,9) target_size = (304414,4) ...
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Bidirectional model mixing gru and lstm layer

Is it ok to mix both LSTM and GRU layers inside bidirectional enter image description here
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ValueError: Input 0 of layer lstm_27 is incompatible with the layer: expected ndim=3, found ndim=2. Full shape received: (None, 5)

I have some pixel movement data and it has 5 features and 3715489 training samples. I keep getting this error and I don't know what I should make the input_shape for the LSTM. X_train shape is (...
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pytorch rnn loop over rnncell

I'm trying to understand actual implementation of RNN forward , which I expect at some point has to have a loop over time step(sequence) that uses rnn cell. While checking actual c++ code on github at ...
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ValueError: Input 0 of layer "sequential_20" is incompatible with the layer: expected shape=(None, 304413), found shape=(None, 1, 13)

I am trying to create a LSTM model for time series prediction, at each time step input has 9 elements and the output has 4. To create a dataset I write this code: def create_dataset(dataset, look_back)...
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Multi dimensional input multi dimensional output rnn keras data preprocessing

I want to create a RNN model in Keras. In each time-step the input has 9 element and the output has 4 element. input_size = (304414,9) target_size = (304414,4) How can I create a dataset of sliding ...
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How to build model with 3D array label with TensorFlow

I have data predictor in 2D array like this below array([[ 0, 0, 0, ..., 10, 6, 1], [ 0, 0, 0, ..., 12, 6, 1], [ 0, 0, 0, ..., 8, 6, 1], ...

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