V2EX variational autoencoder

Variational Autoencoder

Definition / 定义

变分自编码器(VAE)是一类生成模型:用“编码器(encoder)”把输入数据映射到一个潜在空间的概率分布(常见为高斯分布的均值与方差),再用“解码器(decoder)”从该分布中采样并重建数据。它通过变分推断优化一个训练目标(常称为 ELBO),在重建质量与潜在分布的规则性(如与先验分布接近)之间取得平衡。除“生成”外,VAE也常用于表示学习与数据压缩。(该术语也可在不同变体中扩展到条件VAE等。)

Pronunciation / 发音

/vrienl tonkodr/

Examples / 例句

A variational autoencoder can generate new images after training.
训练好之后,变分自编码器可以生成新的图像。

Unlike a standard autoencoder, a variational autoencoder learns a distribution in latent space, which makes sampling and interpolation smoother and more meaningful.
与普通自编码器不同,变分自编码器在潜在空间中学习的是一个分布,因此采样与插值通常更平滑、也更有意义。

Etymology / 词源

“Variational”来自“variation(变化)”+ 形容词后缀“-al”,在机器学习里常指变分方法/变分推断(用可计算的近似分布来逼近复杂的后验分布)。“Autoencoder”由“auto-(自我)+ encoder(编码器)”构成,指自监督地把输入压缩再重建的网络结构。“Variational autoencoder”这一组合术语在深度生成模型兴起期(约2013年前后)随经典论文而广泛流行。

Related Words / 相关词

Literary Works / 文学作品

  • Auto-Encoding Variational Bayes(Diederik P. Kingma & Max Welling):提出并系统化VAE训练目标与重参数化技巧的奠基论文。
  • An Introduction to Variational Autoencoders(Carl Doersch):面向学习者的综述型文章,讲解VAE直觉与推导。
  • Deep Learning(Ian Goodfellow, Yoshua Bengio, Aaron Courville):深度学习经典教材中讨论生成模型与相关思想,常与VAE并读。
  • Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow(Aurélien Géron):实作导向书籍,常以VAE作为生成建模案例之一。
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