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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LSTM ValueError: cannot reshape array of size 396 into shape (99,1)

I am trying to implement LSTM using Keras for a multivariate problem. I created a dummy dataframe to use as an example with columns B,C,D,E as features and A being the tagret (397X5). Below is the ...
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Using dynamic input shape in keras

I am working with some data that contains some features in some continues days and the shape of the array of each of these data is as below: (number of days, 1, number of features) Number of ...
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LSTM and GRu model not giving correct predictions

I am building a LSTM model multi class classification which will classify text in one out of 4 classes. But it is not giving good accuracy.Even if it gives good accuracy prediction is getting wrong. ...
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LSTM Layer class conversion from using “add_variable” to “add_weight”

I am using a class for initializing the LSTM-hidden layers of my neural network. This has actually worked out quite well so far, however since add_variable will not be available anymore at some time ...
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unknown tokens appearing when using pack_padded_seq and not appearing without packing

I'm trying to implement a text generation model using Pytorch and LSTM and I have tried to omit padding tokens from the input that goes to LSTM by using pack_padded_sequence. But, for some reason, it ...
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int too large to convert to float [closed]

When I try to apply the standardization or normalization to my data (that I want to pass to an LSTM) that has only 1 column containing very big numbers like: float(...
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Error In Multi input model for graph neural network in tf keras

I am training a Graph neural network using Spektral with an auxiliary input layer. I am concatenating the layers. The model compiles perfectly. But when fitting the data into the model I am getting ...
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ValueError: Expected input batch_size (1) to match target batch_size (26)

I’m getting the following error when using BERT with BiLSTM (my batch_size on BERT is 26). I want to concat last 4 hidden layer of BERT then feed it to BiLSTM. Here is my model: from transformers ...
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Issue with concatenating Keras layers

I am trying to build an LSTM model to predict temperature for a given day using say past 7 days of temperature, rainfall etc of a Zipcode or PinCode. I understand that the training dataset needs to be ...
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Keras error: Input 0 is incompatible with layer lstm_10: expected ndim=3, found ndim=2

please bear with me i'm quite new to SO. I'm training a classifier using LSTM and have the below code I'm having a problem where the 3rd LSTM layer is saying that there is a problem with the ...
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How can i retrain LSTM for each new prediction using keras?

When i run my trained lstm on the test data it predicts all of it at once without retraining on each new prediction, but since i am working with time series this is necessary for my work. Isn't there ...
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LSTM for panel data

I have a panel data like this. |---------|--------------|-----------|-----------| | id | timestamp | feature1 | feature2 | |---------|--------------|-----------|-----------| | 1 | ...
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How to feed data into Keras LSTM model

I am totally new to RNN models and I am going to run a LSTM model to predict given rate to an item in my database . My raw database looks like this: Columns: user ID , item ID , rate , timestamp ...
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How to predict one data point at a time then update the network using all the data including the last using an LSTM

I have a Data set of 27 features, 1012 training data and 125 for testing. Using an LSTM Network i trained the data on the training set. But when testing it i don't want it to predict all 125 at once ...
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LSTM - bad results of AUC

I have trouble understanding why my LSTM has a high accuracy (80%) but a bad AUC (50%). I thought the problem was the imbalanced classes, but it isn't. I have tried GridSearchCV with diferent ...
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How to fix strange model accuracy graph?

I am trying to create a model that predicts'a' with 'b'. I try to predict time-series data. It consists of a total of 72 weeks of training set data and 32 weeks of verification data. And my model ...
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Encoding a dataframe with mixed datatype columns and preparing data to train a classification model with LSTM

I have a software which collects usage data from a computer (mostly from Microsoft Word and Outlook) and outputs it in a JSON format. I have written a code to collect the data and organize it into a ...
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Getting Nan for custom loss function in Keras for time series regression encoder-decoder model

I have read some of the other topics that are about this issue, but I don't understand how to solve it in my case as the loss functions they use are usually a lot more complex than mine. I believe the ...
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What changes should i made in existing code to get summary for validation dataset?

Guys I was checking out text summarization and i came across this code which use three stacked LSTM layer for summarizing text . As i new in this area, I wanted to know what are changes to be made So ...
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`return_sequences = False` equivalent in pytorch LSTM

In tensorflow/keras, we can simply set return_sequences = False for the last LSTM layer before the classification/fully connected/activation (softmax/sigmoid) layer to get rid of the temporal ...
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How to train LSTM on multiple inputs?

Team I'm trying to classify LSTM on donors choose dataset with multiple inputs, But I'm getting the following error TypeError: len is not well defined for symbolic Tensors. (sub_4:0) Please call x....
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torch.save(model.state_dict()) line comes error while model complated train and trying to save it how can i solve?

I'm working on some code about nlp. I want to train and save model but here comes this error. I searched some documentation but i didn't find right solution. How can i solve this problem? import ...
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Pytorch: Future forecasting using lstm time series

I am working on a time series forecasting problem using LSTM. I have implemented it on pytorch. The data structure is like below: X_train: shape(n,14,2) sequence length: 14, input parameters: 2 i.e ...
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To understand Input and Output value for each layer in CNN and how to calculte the parameters for each layer

I an working on Donor Choose Dataset from Kaggle. I develop different ML model and now i am trying to use LSTM. Here, i am able to understand the Embedding concept. But later when trying develop model ...
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RNN vs Simple Neural Network

(I conceptually understand how RNN works. I have also used RNN/LSTM as well for some use cases) To understand RNN and RNN-variant model's working deeply, I wanted to try out some experiment. ...
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Building CNN + LSTM in Keras for a regression problem. What are proper shapes?

I am working on a regression problem where I feed a set of spectograms to CNN + LSTM - architecture in keras. My data is shaped as (n_samples, width, height, n_channels). The question I have how to ...
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LSTM, Keras : How many layers should the inference model have?

Should the inference model in a chatbot model with keras lstm, have the same amount of layers as the main model or it doesnt matter?
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how to read multiple .csv files conataining feature vectors as input to lstm for implementing cnn lstm classifier?

I am having a dataset consisting of videos which I preprocessed into frames which were supposed to train model consisting of CNN followed by lstm for binary classification. I have used a pre-trained ...
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Predicting future values using RNN for time series data

I'm fairly new to the world of NNs so it could be that my question is extremely stupid, so sorry in advance. I'm working on a predictive model, where I have a set of input features(x.......x(n)...
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How to use TimeDistributed layer for predicting sequences of dynamic length? PYTHON 3

So I am trying to build an LSTM based autoencoder, which I want to use for the time series data. These are spitted up to sequences of different lengths. Input to the model has thus shape [None, None, ...
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LSTM Training Loss and Val Loss not changing

I have been trying to create a LSTM RNN using tensorflow keras in order to predict whether someone is driving or not driving (binary classification) based on just Datetime and lat/long. However, when ...
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LSTM Model for checking if two text have similar meanings

Let's say I have two sentences, A abd B. I want a Tensorflow Model that would ideally output wither or not the two sentences have similar meanings. Or, If the two sentences contradict with each other ...
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BPE vs WordPiece Tokenization - when to use / which?

What's the general tradeoff between choosing BPE vs WordPiece Tokenization? When is one preferable to the other? Are there any differences in model performance between the two? I'm looking for a ...
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Reshaping a 2D matrix to a 3D matrix with lag for Keras

I am trying to create a LSTM in Keras, but I fail at reshaping the input data. Let's consider 25 observations of 3 features: x <- 1:25 y <- seq(100, 2500, by = 100) z <- seq(1000, 25000, by ...
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Best model to predict failure using time series from sensors

I'm working with a company on a project to develop ML models for predictive maintenance. The data we have is a collection of log files. In each log file we have time series from sensors (Temperature, ...
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text generation with lstm in pytorch repating same charactere over and over

I'm curently working on a model which could generate text, i used many tutorial, i also tried to understand everything so that i could code it from scratch. The result is always the same, random ...
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How do i calculate the mean squared error for time series?

univariate_past_history = 100 univariate_future_target = 0 x_train_uni, y_train_uni = univariate_data(uni_data, 0, TRAIN_SPLIT, univariate_past_history, ...
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what is the number of LSTM cells in the network (in Matlab)?

I wrote the following code in Matlab : data = readmatrix('Google_Stock_Price.csv'); data=data(:,2); data=transpose(data); mu = mean(data); sig = std(data); data_scaled = (data - mu) / sig; ts=100; % ...
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TimeSeriesForecasting-Multivariate Time Series - Forecasting one time series from the behaviour of two other time series [closed]

I'm currently observing a time series problem where one time series is depending on the behaviour of three other ones. The depending time series are closing prices for precious metal prices such as ...
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Input & Output shape for LSTM on Keras

Currently, I am having a dataset in which the X_set shape is (A, B, C, D) in which there are A batches, with B timesteps, and each timestep there is a 2D array with shape (C, D). The Y_set (labeling) ...
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How does the logistic function relate to the gates in an LSTM?

What is the purpose of this relationship, how does it affect the models' output? I have read a lot of documentation on this but It seems to still be going over my head - I would appreciate a brief ...
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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 [closed]

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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I'm getting “Tensor.op is meaningless when eager execution is enabled.” in my simple encoder model. (TF 2.0)

The code of my encoder model is given below, I have made it using functional API(TF 2.0) embed_obj = EndTokenLayer() def encoder_model(inp): input_1 = embed_obj(inp) h = Masking([(lambda x: x*0)(...
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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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How to reconstruct sequence of unspecified length from LSTM autoencoder?

from keras import backend as K .... other dependencies ..... input_ae = Input(shape=(None, 2)) # shape: time_steps, n_features LSTM1 = LSTM(units=128, return_sequences=True, activation = 'relu')(...
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How to convert or prepare a taxi dataset into a time series with the fixed intervals?

I have NYC taxi trips dataset contains multiple attributes like (pickups and dropoffs) coordinates, DateTime also, trip distance and so on, indexed by "tpep_pickup_datetime" coulmn as datetime64[ns] ...
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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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