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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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How to predict the future value in python LSTM?

How can i predict the future values which are not in the data-frame. The following code predicts the values on the training data-set and validation data-set but not the future values. I want to ...
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Can I use Simple ANN for house price prediction [closed]

I am trying to build a ML model using tensorflow for custom house price prediction. I tried using simple ANN however losses are too high and model is not working right. I am bit new to ML so not sure ...
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Converting function to tensorflow 2.x

def bidirectional_recurrent_layer_output_new(fw_cell, bw_cell, input_layer, sequence_len, scope=None): if not isinstance(input_layer, tf.Tensor): raise ValueError("input_layer must be a ...
Anjali's user avatar
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What is the exact purpose of input modulation gate in LSTMs?

Basically, I was learning about LSTMs where I found LSTMs are made up of three gates: The forget gate, input gate and output gate. However, I came across some sources that state there is a fourth gate ...
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keras throwing error while training the LSTM

I have this input: [['step', 'step', 'guide', 'invest', 'share', 'market', 'india'], ['story', 'kohinoor', 'kohinoor', 'diamond'], ['increase', 'speed', 'internet', 'connection', 'using', 'vpn'], ['...
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Why do LSTMs solve the vanishing gradient problem, when we multiply f_t a lot of times while backpropagating through time?

I am currently working on my assignment about LSTMs and want readers to understand why we even use those. I can explain, why the vanishing / exploding gradient problem is happening with normal RNNs. ...
Silas Schröder's user avatar
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LSTM return_sequences=True/False and target variable shape

I am working on a stock price prediction project where I am trying to use an LSTM to predict stock prices. Currently, I am using trying to use 10 days of data to predict the 11th day's stock price. To ...
amxiao's user avatar
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logits and labels do not have same shape

this is my code for translation machine(english to spainsh) # import what i need import tensorflow as tf import numpy as np import matplotlib.pyplot as plt url = 'https://storage.googleapis.com/...
soroushmirzavandi's user avatar
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Stability issue to replicate the behavior of torch LSTM

I have implemented a custom LSTM in PyTorch to replicate the behavior of PyTorch’s built-in nn.LSTM module. When I initialize the weights with specific values (using a normal distribution with mean -0....
ir0098's user avatar
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LSTM not learning with the label/answer literally in the features

In my code, I put the labels as the first feature in the first timestep, and the LSTM is unable to learn that the answer is in the first timestemp, almost like it is blind to it. I ran this test ...
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lstm is not learning anything pytorch

I am trying to use lstm for binary classification of comments (comments are alredy pre processed and split). I created a model, but it is not learning anything. In some cases I receive exactly the ...
Pavlo Chaikivskyi's user avatar
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Why this snippet returns 0 gradients? Pytorch RNN understanding

I'm trying to understand how slicing the output affects the gradients in a RNN. I built this simple script. # Test the gradient of a RNN import torch from torch import nn from torch.autograd import ...
Riccardo Ricci's user avatar
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Can we create a Single Model on multiple Time series data that captures on/off state of sensors?

I have 5 input and 1 output column input columns : Time, state, power, rpm, temp output column : output Time is measured in seconds. state can be 0 or 1 indicating on/off. power, rpm, temp values are ...
Tharun PS's user avatar
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Model drift for VARIMA model when forecasting multivariate time series

I am currently trying to train a VARIMA model on multivariate time series data about 5 different kinds of sensor measurements of a cooling system. The data is of cyclical nature so the exact same ...
Max Bömer's user avatar
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Tensorflow saving model works but loading it doesn't

I trained an LSTM model in tensorflow, and it works fine, but when I save the model and then try to load it from disk, it throws me a ValueError when loading. FYI saving and loading works for other ...
AyoubLaar's user avatar
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How to take single instance of data and test my RNN?

I am making a RNN model to try and guess the close price of the stock market. Currently i'm trying to test a specific date. The data that I used to train and test the model is a lot more than just ...
SamuraOTS's user avatar
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Understanding ConvLSTM2D application with seasonal data

I have a dataset of the form (samples, t, x, y, channels), where x, y are pixels and t the sequence length. The data is seasonal, so each t represents a season. t doesn't extend far, as there's only ...
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can we use Keras Sequential model with dense layers for non-temporal data

can we use Keras Sequential model with dense layers for non-temporal data i want to use deep learning methods with a tabular dataset of depression i found that we can use keras sequential model with ...
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Both RNN regression models (LSTM and GRU) predict the same value during evaluation but predicts normally during training

I am trying to train a regression RNN to predict the emotional valence (float between 1 and 5) from audio samples. Both LSTM and GRU models make normal predictions during the training loop, but when ...
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What is the shape of the hidden/cell state of convLSTM2D?

I am new to convLSTM2D and I understood how it works. I have a confusion regarding the shape of the hidden state at different epochs (h_t). Coniser the following code: input_shape=(11, 70,70,5) model =...
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Recurrent neural network trained with torch.autograd predicts nonsense

I'm trying to use torch.autograd to train a simple recurrent neural network that predicts the next character in a sequence of characters that represent songs in an ABC notation. The model looks like ...
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Why doesn't my accuracy vary no matter the dataset and the model used?

I am working on a gait classification problem, using two type of data time-series skeleton and foot pressure. However, no matter which dataset I use and which type of model the accuracy stays pretty ...
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An error due to unwanted layer in image captioning model

When i had executed model.summary(), an unwanted layer named 'NotLayer' also seem to be connected to my input layer which is giving me an error. I even tried to access it but i can't using layers[] ...
Chirag Gupta's user avatar
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Implementation of Pass2Edit to model string edit behaviour

I am trying to implement Pass2Edit (this paper: read 3.1, 3.2). It takes in original password and current password strings, and tries to model the edit behaviour. The following is what it looks like: ...
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How can I increase the accuracy of 1D CNN to estimate stress concentration factors

I am trying to develop a neural network that can estimate the stress concentration factor Kt of V-notched specimens based on scans from the notch profile. The scans have been interpolated to create ...
Seppe Vanheulenberghe's user avatar
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TypeError: Could not locate class 'Model'

import tensorflow as tf from tensorflow.keras.applications import ResNet50 from tensorflow.keras.layers import LSTM, Dense, GlobalAveragePooling2D, Dropout from tensorflow.keras.activations import ...
Shivanand Garg's user avatar
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Problem running RNN and running torchsummary package

Right now, I'm training an RNN network for my DGPS application, taking latitude, longitude and altitude. Here's the network architecture: # Define our network class by using the nn.module class ...
Kenneth Ligutom's user avatar
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32 views

Recurrent Keras model with functional API

I am trying to create a simple recurrent model using Keras. My objective is to have multiple layers, and to connect only the final output of the last layer as an input into the first layer at the next ...
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Optimize ESN Hyperparameters with Grid Search MATLAB

I have the following echo state state network (ESN) hyperparameters: m_GS,k_GS,c_GS,gamma_GS. I would like to use my ESN to find the optimal values for these four hyperparameters using the grid search ...
Jonathan Frutschy's user avatar
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Build RNN from scratch with using only Dense layers and Sequential?

I'm intending to build RNN from scratch using only keras Dense layers and Sequential model? Is that possible at all? If we unfold RNN, it's just a sequence of a unique dense layer repeated over and ...
ThirstyOfKnowledge's user avatar
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how to add attention for lstm?

Here is the code of my model: class Net(nn.Module): def __init__(self,input_size,hidden_size,num_layers,output_size,batch_size,seq_length) -> None: super(Net,self).__init__() ...
user24521131's user avatar
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The LSTM training model predicts results that consistently form a horizontal line without any amplitude

The code of LSTM models: class Net(nn.Module): def __init__(self,input_size,hidden_size,num_layers,output_size,batch_size,seq_length) -> None: super(Net,self).__init__() self....
user24521131's user avatar
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tensorflow.python.framework.errors_impl.OperatorNotAllowedInGraphError: Iterating over a symbolic `tf.Tensor` is not allowed

I am trying to run an RNN model from here. Since this code is from nearly 7 years ago, it uses the old tensorflow version 1 (which does not run automatically). My code: def __init__(self, sess, ...
user24345915's user avatar
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1 answer
89 views

Issue when padding and packing sequences in LSTM networks using PyTorch

I'm trying to make a simple lstm neural network. I've got time series data which I am splitting into sequences and batches using Pytorch's Dataset and DataLoader. To account for the variable lengths ...
D Danne's user avatar
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How to keep track of hidden states for different input shapes

I defined a RNN "by hand", composed of multiple linear layers with pruned connections. To keep track of the hidden states, I have a variable next_hidden_states in which I save the hidden ...
samje's user avatar
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How do I fix the ValueError encountered in my vary_temperature function?

So i am trying to replicate a simple autocomplete model based on the article below https://jaketae.github.io/study/auto-complete/ When i run my final function, i am running into a value error. It ...
Revanth Subramaniam's user avatar
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Call Volume prediction using LSTM and GRU

I am trying to predict the number of incoming calls using LSTM and GRU I have done all the data preprocessing but upon training the model I getting 0.0 accuracy what could be the the problem ...
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Many-to-Many RNN from Scratch by Pytorch

I have a problem implementing many-to-many RNN from scratch in Pytorch. I'm using the ner-dataset on Kaggle. The first five rows of this dataset are like this: Firstly, I use a pre-train embedding ...
MY_NAME_S3M's user avatar
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1 answer
127 views

Test loss immediately goes up on LSTM

I'm trying to create an LSTM that predicts the sixth sports match for team A based on a sequence of 5 previous matches. My data is set up in a structure like this. Team A game 1 vs random team, team B ...
WILLYB's user avatar
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1 answer
91 views

Can build sequence to sequence model rnn with text input and output which is pattern of number?

I'm a beginner of seq2seq with pytorch and I want to create the model that have text as input and output is pattern of numeric. For example, I have 'en_ids' is input that had already transform to word ...
Ninlawat Phuangchoke's user avatar
1 vote
1 answer
108 views

What's the difference with `hidden size` and `proj_size` in PyTorch LSTM?

I recently starting exploring LSTMs in PyTorch and I don't quite understand the difference between using hidden_size and proj_size when trying to define the output size of my LSTM? For context, I have ...
Ahijit's user avatar
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Getting error in TensorFlowJS RNN example in TypeScript

I am trying to create a minimal RNN TensorFlowJS example in TypeScript, but I can't seem to get the tensor shapes right. The goal is to take two hard coded melodies and predict a new melody. I am ...
Gregg Reno's user avatar
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0 answers
65 views

Predicting with LSTM for TS in R

I have a problem with TSLSTM in R. I created a model basing on those arrays: TrainY is 1 column, 3500 rows, TrainX is 3 columns, 3500 rows, PredictX is 3 columns, 50 rown Data: > head(y_train) [1] ...
Damian Kowalski's user avatar
-1 votes
1 answer
85 views

LSTM giving more generalize result with accuracy of 89% when using non sequential data while with sequential data 64%

I am working on time series classification. I have used two preprocessing steps given below Time series Dataset --> Slicing Time Series ---> Train-Validation-Test-Split --> Model Training ...
Alex's user avatar
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0 answers
228 views

Modifying PyTorch GRU implementation

I am attempting to implement a Recurrent Attention Unit (RAU) as described in the paper [https://www.sciencedirect.com/science/article/pii/S0925231222013339?via%3Dihub#b0160%5C](Recurrent Attention ...
VINBEN zerozerosept's user avatar
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30 views

Matrix multiplication issue in a Bidirectional LSTM Model

class BiLSTMNERTagger(nn.Module): def __init__(self, emb_dim, hid_dim, n_layers, token_vocab_size, tag_vocab_size): super().__init__() self.embedding = nn.Embedding(...
John Stuart's user avatar
1 vote
0 answers
25 views

How can i edit the "wake-word-detection notebook" on coursera so it fit my own word?

I have understood and solved the notebook available on Coursera for the Deep Learning Specialization (Sequence Models course) by Andrew Ng. In the notebook, he provides a detailed walkthrough for ...
user23662181's user avatar
0 votes
1 answer
30 views

Ask nn.MSELoss() calculation mechnism in pytorch framework

I want to ask that when calculating MSE loss about time-sequence data shaped like (minibatch, feature, sequence length) in pytorch by using nn.MSELoss() with reduction="mean", average just ...
user23880552's user avatar
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33 views

Low Precision and Recall in LSTM Anomaly Detection Model

My LSTM anomaly detection model for telemetry data has high accuracy (90%) but struggles with low precision and recall (around 10%) for identifying actual anomalies. I suspect the issue might be ...
Basil Saju's user avatar
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0 answers
16 views

Unable to store predictions of a LSTM network back in my original dataframe

I have a dataframe that contains a category column and a values column, both indexed by date: date={2023-01 , 2023-02 , ... , 2023-01 , 2023-02 , ...} ciiu={'A2032' , 'A2032' , ... , 'B4030' , 'B4030' ...
Fer Escobar's user avatar

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