# Questions tagged [autoencoder]

An autoencoder, autoassociator or Diabolo network is an artificial neural network used for learning efficient codings. As such, it is part of the dimensionality reduction algorithms.

autoencoder

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### How to make autoencoders self-normaize inputs?

I wanted to make an autoencoder with N inputs, let's say for building parameters like sq ft, height, etc which are not normalized. I intuitively know that I can take the ratio of some of these ...

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### Issue with PyTorch's transformer Model repeating last token during inference

I’ve been trying to implement PyTorch’s nn.TransformerEncoder and nn.TransformerDecoder solutions into a simple model, but I’m running into an issue that I’m unable to resolve where during inference ...

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### VAE: Latent distribution. Posterior collapse, Multiple latents [closed]

I have two questions after exploring VAE for a while. In the standard VAE setup, we assume 1 latent variable of shape (BHWD): mu and var, and the prior N(0, I).
Latent distribution: I read a bit on ...

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### CVAE Synthetic Data Distributed Too Narrowly

I have a dataset containing three features, two float features and one categorical feature with 33 categories. (Called Float_A, Float_B and Cat_A here).
I am trying to train a CVAE to generate ...

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### How to apply augmentations to batch on each step of epoch in Keras?

I'm trying to solve an anomaly detection task using an autoencoder model, but I'm getting poor results after training. My teacher suggested I use data augmentation to batch on each step during epoch. ...

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### Recreating Text Embeddings From An Example Dataset

I have a list of sentences, and a list of their ideal embeddings on a 25-dimensional vector. I am trying to use a neural network to generate new encodings, but I am struggling. While the model runs ...

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### Multi-task learning- Loss function

I am training a convolutional autoencoder with two velocity fields as inputs and outputs. These fields represent wind velocities in both the x and y directions within a square domain. My loss function ...

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### How to solve exploding gradient problem in VAE training?

I was trying to implement VAE on the CelebA dataset inspired by the Tensorflow implementation of MNIST. I have tried varying batch size but there seems to be no effect from that. The image formed is ...

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### Contrastive Autoencoder loss in pytorch

I am working on an autoencoder project and would like to understand how to implement a contrastive loss for it.
As far as I understand, a contrastive loss uses pairs of latent space representations ...

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### Workaround for removal of add_loss()

I'm working through a Keras/Tensorflow course that uses Keras 2 to build a variational autoencoder and I'm trying to get it working in Keras 3. I've managed to overcome a lot of issues but I'm stuck ...

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### Why does AutoModel assign the XLMRobertaModel class to the model when I load E5?

Why does AutoModel assign the XLMRobertaModel class to the model when I load E5? Is E5 a separately trained XLMRobertaModel encoder? Will I lose knowledge of e5 when I initialize it like this?
from ...

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### Convolutional Variational Autoencoder

I'm creating a Convolutional Variational Autoencoder with Tensorflow in Python code, with some images I created myself (64x64 pixels).
My problem is, that if I use anything else than Binary ...

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### How to Implement Autoencoders for Prediction and Inverse Design Problems?

I'm exploring the use of autoencoders to address two types of problems: prediction and inverse design. Specifically, I want to:
a.Set input variables and use the trained decoder of an autoencoder to ...

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### PyG graph autoencoder loss is frozen, possible Data object assembly issue

I'm trying to use Graph Autoencoder on a custom PyG Data object, but when I attempt to train it, the loss, AUC and AP do not change. The exact same autoencoder works when using PyTorch Geometric's ...

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### Output of autoencoder is independent of input to autoencoder

I am writing a convolutional autoencoder for a 3D input with 4 channels.
The encoder part is composed of a number of blocks, where each block contains a 3D convolution layer, a ReLU activation layer, ...

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### Input mismatch in dense layer

I am using this autoencoder model to detect anomaly.
class AnomalyDetector(Model):
def __init__(self):
super(AnomalyDetector, self).__init__()
self.encoder = tf.keras.Sequential([
...

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### LSTM autoencoder for time series forecasting

I am trying to develop an LSTM autoencoder for time series forecasting using three different datasets (A: heatup, B: coldtrap, C: filling). I will train the model on data from dataset A and also on ...

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### Replacing 28x28 images in MNIST dataset

I'm working on something where I'm experimenting with the fashion_mnist dataset (I'm following the Autoencoder tutorial on TensorFlow). I would like to replace the 28x28 images with something of my ...

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### Autoencoders and Polar Coordinates

Can an autoencoder learn the transformation into polar coordinates? If a set of 2D data lies approximately on a circle, there is a lower-dimensional manifold, parameterized by the angle, that ...

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### Struggling with input and output differences in shapes for Convolutional Autoencoders

When fitting my model i get the following error:
ValueError: Input 0 of layer "sequential_15" is incompatible with the layer: expected shape=(None, 27088, 64, 1), found shape=(None, 27086, ...

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### Best normalization method for auto-encoder

I am building an intrusion detection system to detect malicious traffic in my network using an AutoEncoder. I've been training my model to learn from benign traffic and minimize the Mean Squared Error ...

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### reconstruction issues with an variational autoencoder due to outliers

I'm trying to train a VAE and have the problem, that I'm getting a lot of outliers in my reconstruction. I'm trying to do a dimensional reduction of weather data using an VAE.
In the following you can ...

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### Correct shape and structure of Input Data for Autoencoder

i am trying to build my first Autoencoder for anomaly detection and i dont really know, how the Input Data has to be shaped in order to train the Model. I`ll give you Information about the Data and i ...

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### TensorFlow: actual size of training data in custom Model.train_step

I want to create an Adversarial Autoencoder using Tensorflow. Right now, the Autoencoder part of my code works as it should. Now I want to add a layer, which encourages my model to map the latent code ...

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### Convolutional autoencoder from Mel spectogram . Does not work

enter image description here
# Convert list to a numpy array
data_array = np.array(data_list, dtype='float32')
data_array = np.array(data_array, dtype='float32') / 255.0 # so my data is from 0 to 1
...

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### Linear loss value plot in stacked denoising autoencoder

I want to train a stacked denoising autoencoder to decode the feature matrix from 18930 dimentions to 60 dimentions. The initial feature matrix is sparse. My problem is why the train loss and ...

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### RuntimeError: shape '[1, 13, 13]' is invalid for input of size 13

I use LSTM-Autoencoder, took the model by this guy https://colab.research.google.com/drive/1_J2MrBSvsJfOcVmYAN2-WSp36BtsFZCa#scrollTo=vgUChGd_A-Bv,
for anomaly detection in time series
and got problem ...

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### Why does the encoder output latent variable shape of AutoencoderKL differ from the decoder input latent variable shape?

from diffusers import AutoencoderKL
import torch
from PIL import Image
from torchvision import transforms
vae = AutoencoderKL.from_pretrained("../model")
image = Image.open("../...

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### How to match the input and output shapes of my data in the encoder model?

I have entered it into the following code:
from tensorflow.keras.models import Sequential
from tensorflow.keras.layers import Conv1D, MaxPooling1D, UpSampling1D, Flatten, Dense
# Define the input ...

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### Layer count mismatch while loading svae deocder part in an Autoencoder model for image

I develop a simple autoencoder model for image.
Once trained, I saved encoder and decoder part in h5 file.
Model training code :
import tensorflow as tf
from tensorflow.keras.layers import Input, ...

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### how to build a vae without reshape error?

I build a VAE following https://blog.tensorflow.org/2019/03/variational-autoencoders-with.html
PROBLEM: I thick the problem is in the decoder when I want to reshape the latent Distribution i face this ...

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### Incompatible shape Keras Autoencoder

I'm relatively new and am trying to build an autoencoder for anomaly detection on an unlabelled dataset that only contains categorical columns.
The error I get is:
Incompatible shapes: [64,1,5346] vs. ...

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answers

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### Why not use the anomaly datasets to train an autoencoder?

When using autoencoders for detecting network anomalies, why not train them using anomaly datasets? Reconstruction errors smaller than a threshold could signify anomalies, while those larger than the ...

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### Autograd returning None

I am trying to create a Contractive Autoencoder, and I read in a couple of papers that the main idea is to use the norm of the Jacobian of the encoder's output with respect to its inputs.
In other ...

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1
answer

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### Reproducible Training of an autoencoder in Tensorflow

I tried to implement an autoencoder-based anomaly detector finding anomalies in the dataset KDDTrain+. This is actually a pretty straight forward implementation. Unfortunately I failed in implementing ...

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### 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 ...

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### Encoder-Decoder with Huggingface Models

I want to create an Encoder-Decoder Model using the following structure:
Bert-base-uncased for encoding the input (https://huggingface.co/google-bert/bert-base-uncased)
Linear layer for connecting ...

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### Optimal autoencoder model for picture anomaly detection

I'm training an autoencoder to detect anomalies among pictures based on the decoder error value. I tried out different ways of image preprocessing, NN architectures, losses, activation functions, ...

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1
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### Autoencoder shaping issue

I am having an issue with my autoencoder as I am shaping the ouput incorrectly. Currently the autoencoder is coded lke this.
I Got This Error :
ValueError: Dimensions must be equal, but are 2000 and ...

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1
answer

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### autoencoder.fit doesnt work becaue of a ValueError

I don't understand what my problem is. It should work, if only because its the standard autoenoder from the tensorflow documentation.
this is the error
line 64, in call
decoded = self.decoder(...

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### Custom Loss Function with Principal Component Angle Calculation in PyTorch Not Differentiable?

Approach: I wrote a custom loss function in PyTorch that compares the angular difference between the original (input) and reconstructed images based on their first principal component axes. This ...

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### Pytorch input mismatch could be processed during the forward pass

I don't understand why the mismatch of the input size and the pytorch linear layer still could be processed during the forward pass
I tried my AE model with pytorch, the following is the model. I don'...

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### I cannot put PyTorch model to device (.to(device))

So I was writing my first ever autoencoder, here is the code (it can be a little bit goofy, but I believe I written all of it right):
class Autoencoder(nn.Module):
def __init__(self):
...

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### Weigh the losses for Supervised VAE Classifier

I am working in the field of audio classification.
Recently I have been trying to use Supervised VAE Classifier.
Here is the architecture I am using:
class VAE(nn.Module):
def __init__(self, ...

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### Calculating loss in VAE model with Multiple Input Single Output scenario

I’ve been working on training my VAE model using two input images: the indoor environment permittivity image and the indoor environment access point location image. I’ve successfully formulated the ...

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### How to train auto encoder with noise

I have an auto encoder with 2 encoder blocks and one concatenation block and 1 decoder block. the reconstruction works fine for my simulated data with 0 added noise. Even if the Gaussian noise with a ...

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1
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### PyTorch correct implementation of classification on an autoencoder [closed]

EDIT: embarrassingly my error was shuffling the data only and not the labels.
I was given an assignment to create an lstm autoEncoder in pytorch to reconstruct mnist images.
next the assignment asked ...

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1
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### Feature Importance of a Pytorch AutoEncoder [closed]

I need to get from my Pytorch AutoEncoder the importance it gives to each input variable. I am working with a tabular data set, no images.
My AutoEncoder is as follows:
class AE(torch.nn.Module):
...

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### train row encoder and column encoder in Tensorflow

I am trying to create a custom neural network that has 2 encoders and one decoder. The row encoder takes in the input of size eg: 30x40 and the column encoder is supposed to take the same data in ...

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### Autoencoder with nn.Sequential

i wrote this code, in order to implement an autoencoder with nn.sequential module, but i have an error:
latent_dims=4
class Encoder(nn.Module):
def __init__(self):
super().__init__()
...