• Thumbnail for Autoencoder
    An autoencoder is a type of artificial neural network used to learn efficient codings of unlabeled data (unsupervised learning). An autoencoder learns...
    51 KB (6,540 words) - 07:38, 7 July 2025
  • Thumbnail for Variational autoencoder
    In machine learning, a variational autoencoder (VAE) is an artificial neural network architecture introduced by Diederik P. Kingma and Max Welling. It...
    27 KB (3,967 words) - 21:16, 2 August 2025
  • Thumbnail for Vision transformer
    CNN. The masked autoencoder (2022) extended ViT to work with unsupervised training. The vision transformer and the masked autoencoder, in turn, stimulated...
    37 KB (4,127 words) - 21:01, 2 August 2025
  • Thumbnail for Generative adversarial network
    algorithm". An adversarial autoencoder (AAE) is more autoencoder than GAN. The idea is to start with a plain autoencoder, but train a discriminator to...
    95 KB (13,885 words) - 21:17, 2 August 2025
  • machine learning, particularly in variational inference, variational autoencoders, and stochastic optimization. It allows for the efficient computation...
    11 KB (1,706 words) - 13:19, 6 March 2025
  • conditional text-to-image generation. LDM consists of a variational autoencoder (VAE), a modified U-Net, and a text encoder. The VAE encoder compresses...
    19 KB (2,184 words) - 00:05, 21 July 2025
  • Thumbnail for Feature learning
    as gradient descent. Classical examples include word embeddings and autoencoders. Self-supervised learning has since been applied to many modalities through...
    45 KB (5,114 words) - 09:22, 4 July 2025
  • store and retrieve multidimensional aperiodic signals. An oscillatory autoencoder has also been demonstrated, which uses a combination of oscillators and...
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  • often achieved using autoencoders, which are a type of neural network architecture used for representation learning. Autoencoders consist of an encoder...
    18 KB (2,047 words) - 05:34, 4 August 2025
  • such as the wake-sleep algorithm. They are a precursor to variational autoencoders, which are instead trained using backpropagation. Helmholtz machines...
    3 KB (358 words) - 18:22, 26 June 2025
  • principal component analysis (PCA), Boltzmann machine learning, and autoencoders. After the rise of deep learning, most large-scale unsupervised learning...
    31 KB (2,770 words) - 17:17, 16 July 2025
  • system can be visualized as a neural network, similar in spirit to an autoencoder, of architecture linear-linear-softmax, as depicted in the diagram. The...
    33 KB (4,242 words) - 20:47, 2 August 2025
  • and to sparse coding models used in deep learning algorithms such as autoencoder. The simplest training algorithm for vector quantization is: Pick a sample...
    13 KB (1,649 words) - 11:10, 8 July 2025
  • Malla, D.B. & Sogabe, T. 2019, Convolution filter embedded quantum gate autoencoder, Cornell University Library, arXiv.org, Ithaca. Chiu, Ching-Kai; Teo...
    7 KB (754 words) - 06:56, 27 July 2025
  • Thumbnail for Nonlinear dimensionality reduction
    to high-dimensional space. Although the idea of autoencoders is quite old, training of deep autoencoders has only recently become possible through the use...
    48 KB (6,119 words) - 04:01, 2 June 2025
  • approach to nonlinear dimensionality reduction is through the use of autoencoders, a special kind of feedforward neural networks with a bottleneck hidden...
    21 KB (2,248 words) - 07:14, 18 April 2025
  • (instead of emitting a target value). Therefore, autoencoders are unsupervised learning models. An autoencoder is used for unsupervised learning of efficient...
    90 KB (10,769 words) - 14:27, 19 July 2025
  • detection RANSAC k-NN Local outlier factor Isolation forest Neural networks Autoencoder Deep learning Feedforward neural network Recurrent neural network LSTM...
    62 KB (8,617 words) - 14:51, 3 August 2025
  • recognition algorithms and artificial neural networks such as variational autoencoders (VAEs) and generative adversarial networks (GANs). In turn, the field...
    209 KB (19,883 words) - 21:36, 27 July 2025
  • Thumbnail for Generative pre-trained transformer
    detection RANSAC k-NN Local outlier factor Isolation forest Neural networks Autoencoder Deep learning Feedforward neural network Recurrent neural network LSTM...
    54 KB (4,304 words) - 18:45, 3 August 2025
  • we could branch off towards the development of an importance-weighted autoencoder, but we will instead continue with the simplest case with N = 1 {\displaystyle...
    18 KB (3,926 words) - 13:42, 12 May 2025
  • NSynth (a portmanteau of "Neural Synthesis") is a WaveNet-based autoencoder for synthesizing audio, outlined in a paper in April 2017. The model generates...
    10 KB (814 words) - 01:56, 20 July 2025
  • representation of an image, which is then converted by a variational autoencoder to an image. Parti is an encoder-decoder Transformer, where the encoder...
    9 KB (2,212 words) - 22:40, 1 June 2025
  • contrast, many alternative generative modeling methods such as variational autoencoder (VAE) and generative adversarial network do not explicitly represent...
    56 KB (9,669 words) - 02:34, 5 August 2025
  • procedure of granting degrees based on work experience in France Variational autoencoder, an artificial neural network architecture All pages with titles beginning...
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  • Thumbnail for Generative artificial intelligence
    of generative modeling. In 2014, advancements such as the variational autoencoder and generative adversarial network produced the first practical deep...
    155 KB (13,956 words) - 04:40, 6 August 2025
  • Thumbnail for Internet
    detection using transferred generative adversarial networks based on deep autoencoders" (PDF). Information Sciences. 460–461: 83–102. doi:10.1016/j.ins.2018...
    160 KB (16,961 words) - 20:51, 24 July 2025
  • detection RANSAC k-NN Local outlier factor Isolation forest Neural networks Autoencoder Deep learning Feedforward neural network Recurrent neural network LSTM...
    63 KB (6,044 words) - 12:11, 3 August 2025
  • detection RANSAC k-NN Local outlier factor Isolation forest Neural networks Autoencoder Deep learning Feedforward neural network Recurrent neural network LSTM...
    44 KB (5,634 words) - 08:30, 12 July 2025
  • detection RANSAC k-NN Local outlier factor Isolation forest Neural networks Autoencoder Deep learning Feedforward neural network Recurrent neural network LSTM...
    9 KB (759 words) - 23:41, 31 July 2025