Questions tagged [lstm]

Long short-term memory. A neural network (NN) 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.

Filter by
Sorted by
Tagged with
-1 votes
0 answers
27 views

SHAP Explainer: 'numpy.ndarray' object is not callable with LSTM model

I'm creating an LSTM model for a 3-dim classification task and wish to have the SHAP values for every classification target, here is my code: #train dataset = loadtxt('traindata.csv', delimiter=',') x ...
user avatar
-1 votes
1 answer
15 views

LSTM with autoencoder

I am trying to wrap my head around when to use LSTM with an autoencoder and when to use one without. Does anyone have a good rule of thumb of when to use a LSTM with an autoencoder? I am not trying to ...
user avatar
0 votes
1 answer
31 views

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 ...
user avatar
0 votes
0 answers
43 views

Problems with LSTM neural network

I am designing a neural network using LSTM with keras library for what I think is a sequence classification problem. But I am having problems when fitting the model. This is the problematic code: # ...
user avatar
0 votes
0 answers
16 views

LSTM predicting next product in sequence with time

I have a dataset that contains, for every customer, the sequence of products they took over the last 10 years. Every product has an execution date, which is the time a customer took that product. The ...
user avatar
0 votes
0 answers
40 views

Masking inputs in bidirectional lstm in keras

I am training an LSTM in Keras: model2 = Sequential(name="LSTM-Model") # Model model2.add(Input(shape=(X_train_tensor.shape[1],X_train_tensor.shape[2]), name='Input-Layer')) # Input Layer - ...
user avatar
0 votes
0 answers
12 views

Taking data till same day and predicting for the same day in multivariate LSTM stock market forecasting

In this below Github post, the author predicted the next "1" day with a multivariate LSTM model. But I think he is taking data till the same day and also predicting for the same day. I am ...
user avatar
0 votes
0 answers
34 views

Custom loss function returns correct values, but sets all of my model weights to nan

I am attempting to train an LSTM with a custom loss function. The model's goal is to read in some sequential noisy points on a curve, and generate coefficients for an nth degree polynomial that fits ...
user avatar
0 votes
0 answers
32 views

Keras class weight for multi-label binary classification on temporal data

I'm training a network with temporal data, and determine which of ~60 outputs are "active" at any given timestep (classified as 1 or 0 in the label data) - so I have an output of 60x1 floats ...
user avatar
  • 500
0 votes
0 answers
19 views

Keras LSTM performance is terrible when using recurrent prediction

I have developed a simple LSTM RNN to predict the propagation of a light pulse through a waveguide, here is the summary: Model: "sequential_6" ...
user avatar
-2 votes
0 answers
12 views

Selecting neural network architecture for battery degradation problem

I want to design a neural network capable of detecting the degradation of the capacity of a battery. When the capacity is ok, the battery performs like this (x axis is the time in seconds and y axis ...
user avatar
0 votes
0 answers
8 views

Changing model parameters in TensorFlow and Sonnet

I'm trying to modify a LSTM model implemented with Sonnet and Tensorflow. The idea is that the model should update itself whenever new results are received. The problem is that Python classes are used ...
user avatar
  • 1
-1 votes
1 answer
164 views
+50

Accuracy remains constant at 58%

I am creating a CNN-LSTM based model to classify intracranial hemorrhage using CT scan images. I am using a custom data generator that generates x of array shape (512, 512, 3) and y [1]. This is a ...
user avatar
  • 566
0 votes
0 answers
20 views

Keras LSTM model to PyTorch LSTM model

I am currently working on my first ever LSTM model used for time series forecasting. I managed to build, run and tune the hp for the LSTM model in keras, but now I want to give it a try to PyTorch too....
user avatar
0 votes
0 answers
25 views

Keras LSTM trained with masking and custom loss function breaks after first iteration

I am attempting to train an LSTM that reads a variable length input sequence and has a custom loss function applied to it. In order to be able to train on batches, I pad my inputs to all be the ...
user avatar
0 votes
1 answer
25 views

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(...
user avatar
0 votes
0 answers
17 views

RayTune for Hyperparameters optimization of an LSTM model in PyTorch

I am trying to implement RayTune hyperparameter optimization for an LSTM model in Pytorch, but i really struggle to get in touch with it. I googled my question but I didn't find any usefull articles. ...
user avatar
-1 votes
1 answer
27 views

Deep learning accuracy changes

Every time I change the dataset, it gives a different accuracy. Sometimes it gives 97%, 50%, and 92%. It is a text classification. Why does this happen? The other 95% comes from 2 datasets that are ...
user avatar
  • 1
-1 votes
0 answers
13 views

I'm trying to build a Deep learning-based time-series forecasting model

Can somebody type what is the python code of the sequential model of the One-dimensional Convolutional Neural Network paired with Long Short-Term Memory with attention mechanism with this model ...
user avatar
0 votes
0 answers
22 views

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 (...
user avatar
  • 1
0 votes
0 answers
20 views

Convert TensorFlow data to be used by ONNX inference

I'm trying to convert a LSTM model from TensorFlow into ONNX. The code for generating data for TensorFlow model training is as below: def make_dataset(self, data): data = np.array(data, dtype=np....
user avatar
-2 votes
0 answers
23 views

Split time series data for machine learning prediction [closed]

I want to make a predictive Machine Learning Model that will predict the next 3 days of occupancy at a day camp. My initial thought was to use a LSTM over a 7 day period, since there seems to be a ...
user avatar
0 votes
0 answers
9 views

Understanding variable length backpropagation sequences

Citing from "Regularizing and Optimizing LSTM Language Models paper": Given a fixed sequence length that is used to break a dataset into fixed length batches, the data set is not efficiently ...
user avatar
0 votes
1 answer
31 views

what is the difference between Sequential and Model([input],[output]) in TensorFlow?

It seems Sequential and Model([input],[output]) have the same results when I just build a model layer by layer. However, when I use the following two models with the same input, they give me ...
user avatar
0 votes
0 answers
38 views

CNN-LSTM for image sequences classification | high loss

I'm working on a project where I need to classify image sequences of some plants (growing over time). I tried implementing a CNN-LSTM with a pretrained ResNet18 as a feature extractor and then feeding ...
user avatar
0 votes
0 answers
28 views

InvalidArgument Error: Graph execution error when trying to train model

Here is the model im using X_test, X_valid, y_test, y_valid = train_test_split(testReview,testLabel, test_size = 0.4,shuffle=True, random_state = 42,stratify=testLabel) print(len(X_test), len(X_valid))...
user avatar
0 votes
0 answers
28 views

Forecasting Future values in R using LSTM

I am currently learning to code multiple neural networks including RNN, on my own. I have a dataset that contains 1300 hours of solar PV power generation, this dataset is hourly. I have completed ...
user avatar
0 votes
0 answers
20 views

Layer has 2 states but was passed 1 initial states error occurs while using Keras 2.9.0 for implementing multiplicative LSTM

I am trying to adapt the code for multiplicative LSTM code on github to use the latest version of Keras 2.9.0.The code is : from __future__ import absolute_import import numpy as np __all__ = ['...
user avatar
0 votes
0 answers
20 views

Multiple predicted values with tensorflow Bidirectional LSTM

I want to predict 4 values (4 columns) using tensorflow Bidirectional LSTM. The input shape is (30, 525). Howerver, I obtained a prediction result containing one column (1 value). Can you help me ...
user avatar
  • 111
0 votes
0 answers
36 views

How to make model prediction without test data using Keras?

I would like to make prediction of future price based on historical data from Yahoo Finance. I created and trained the model but I do not know how to make prediction without test data because ...
user avatar
-1 votes
0 answers
15 views

Xcode createML activity classifier has one extra input parameter

I use apple's createML to train an activity classifier. But the trained model has an extra input called LSTM state input, what is it for? How to generate its value?enter image description here
user avatar
0 votes
0 answers
18 views

Multiple Stock Value Prediction - Array or DataFrame?

Purpose is to predict multiple stock values with LSTM in Python. The company shortcodes (for the yahoo finance download) are stored in a list. The code reads out the list and download sequently the ...
user avatar
  • 1
0 votes
0 answers
32 views

LSTM accuracy decrease/drop problem while training

I followed this and this is the code of the model. model = Sequential() # Recurrent layer model.add(LSTM(44, return_sequences=True, dropout=0.1, recurrent_dropout=0.1)) # Fully connected layer ...
user avatar
-1 votes
0 answers
24 views

Strange accuracy graph for LSTM model

I followed this and this is the code of the model. model = Sequential() # Recurrent layer model.add(LSTM(44, return_sequences=True, dropout=0.1, recurrent_dropout=0.1)) # Fully connected layer ...
user avatar
1 vote
1 answer
41 views

Why use (regressor.layers[0].input, regressor.layers[-1].output) instead of just regressor in DeepExplainer?

Hi everyone i came across an example of how to use shap on lstm Time-step wise feature importance in deep learning using SHAP. I'm curious why the author chose to use e = shap.DeepExplainer((...
user avatar
0 votes
0 answers
26 views

How to make Validation Loss and Training Loss are not much different

I have problem my program. I just input code like this # Lets First Take all the Close Price closedf = maindf[['Date','Close']] print("Shape of close dataframe:", closedf.shape) This is ...
user avatar
-1 votes
1 answer
51 views

What is the training accuracy of this model?

Training accuracy plot I’m trying to classifiy ECG signals using LSTM and MATLAB, the above plot shows that the training accuracy of the system is 100% but when I apply this code to calculate and get ...
user avatar
0 votes
0 answers
35 views

Predict peaks on a chart in real time, using data from another

I receive two data from two sensors data in real-time (that measure vibrations in a tube at different points). And I need to know, can I use only one sensor? I must measure vibrations at both points, ...
user avatar
  • 9
0 votes
0 answers
52 views

Time Distributed LSTM model accuracy and loss static

I am attempting to create a time-distributed LSTM model, however, it seems that the accuracy and loss are static. The model is for binary classification. Model document_input = Input(shape=(...
user avatar
0 votes
0 answers
29 views

TypeError: 'list' object is not callable for VAE_LSTM

I am trying to run the following code But I am getting the following error message: TypeError: 'list' object is not callable]1 x_Train_normalize,y_Train_OneHot = data_set(train_data_8to10,Input,Output,...
user avatar
-2 votes
0 answers
61 views

Why is my LSTM network is achieving only 50% accuracy on equipment failure? [closed]

I am trying to understand the lstm parameters and layers for optimium performance. Look at the model configuration and see if I have the correct model. I managed to get 70%. Now I am trying to get ...
user avatar
  • 3,006
-2 votes
1 answer
24 views

How to create a LSTM model for image classification?

I have created a CNN model for image classification. The CNN model is obvious and effective. It is as simple as below: model = tf.keras.Sequential([ tf.keras.layers.Conv2D(32, (3, 3), strides=(2, ...
user avatar
0 votes
0 answers
30 views

PyTorch Custom LSTM architecture not learning

I am building a model to classify news (AG news dataset). The vocab size ~33k with custom embedding layer. I have run this for 20 epochs but the loss and accuracy (1.3 and 26% respec.) is almost ...
user avatar
-1 votes
0 answers
12 views

How to set my custom Maximum a Posteriori Probability (MAP) in LSTM model?

i am working Hyperspectral image, in which i change Probability, but don't know how fit Maximum a Posteriori Probability (MAP) in LSTM model
user avatar
0 votes
0 answers
26 views

LSTM, val_loss error causing model not to save, why?

https://www.youtube.com/watch?v=c0k-YLQGKjY LSTM, Keras jupyter notebook on ppc and colab same error. cp = ModelCheckpoint('model1/', save_best_only=True) model1.compile(loss=MeanSquaredError(), ...
user avatar
  • 1
1 vote
0 answers
10 views

CNN + LSTM implementation error for image classification

I am trying to implement a CNN network + LSTM to be able to predict 4 different classes based on the sequence of x-ray images, which were preprocessed to 150x150x3 shape. My X-train shape is (4067, ...
user avatar
0 votes
0 answers
38 views

TensorFlow: How to reshape image to fit LSTM layer?

Mate, I need your help. I aim to alter my CNN model into RNN model. First, I load my image tensor: labels = pickle.load(open("./labels.p", "rb")) print("1") print(labels) ...
user avatar
0 votes
0 answers
25 views

Tensor Flow Error: required broadcastable shapes when training Variable Auto Encoder for Text Posts

Good morning, I'm attempting apply and adapt a variational auto encoder that I found here to a dataset consisting of news headlines. The data will feed into the neural network, but the neural network ...
user avatar
  • 11
0 votes
1 answer
37 views

Correct keras LSTM input shape after text-embedding

I'm trying to understand the keras LSTM layer a bit better in regards to timesteps, but am still struggling a bit. I want to create a model that is able to compare 2 inputs (siamese network). So my ...
user avatar
  • 784
0 votes
1 answer
24 views

LSTM model is giving an ValueError while predicting based on X_test data

Hi need a help to solve value erorr wile running LSTM. It seems everything works fine on training data but prediction generates less then expected dimensions my x_train data shape is (846, 30, 3), my ...
user avatar
  • 3

1
2 3 4 5
121