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Rate-Distortion Optimization Guided Autoencoder for Isometric Embedding in Euclidean Latent Space

机译:欧几里德潜空间中的等距嵌入的速率失真优化引导自动化器

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To analyze high-dimensional and complex data in the real world, deep generative models, such as variational autoencoder (VAE) embed data in a low-dimensional space (latent space) and learn a probabilistic model in the latent space. However, they struggle to accurately reproduce the probability distribution function (PDF) in the input space from that in the latent space. If the embedding were isometric, this issue can be solved, because the relation of PDFs can become tractable. To achieve isometric property, we propose Rate-Distortion Optimization guided autoencoder inspired by orthonormal transform coding. We show our method has the following properties: (i) the Jacobian matrix between the input space and a Euclidean latent space forms a constantly-scaled orthonormal system and enables isometric data embedding; (ii) the relation of PDFs in both spaces can become tractable one such as proportional relation. Furthermore, our method outperforms state-of-the-art methods in unsupervised anomaly detection with four public datasets.
机译:分析现实世界中的高维和复杂数据,深度生成模型,如变形AutoEncoder(VAE)嵌入数据在低维空间(潜在空间)中,并在潜在空间中学习概率模型。然而,他们努力在潜在空间中准确地再现输入空间中的概率分布函数(PDF)。如果嵌入等距,则可以解决这个问题,因为PDF的关系可以变得易于易行。为了实现等距的属性,我们提出了由正交变换编码的启发的率失真优化引导自动化器。我们显示我们的方法具有以下属性:(i)输入空间与欧几里德潜空间之间的雅各族矩阵形成不断缩放的正交系统,并启用等距数据嵌入; (ii)两个空间中PDF的关系可以成为易行的,例如比例关系。此外,我们的方法优于无监督异常检测的最先进的方法,其中包含四个公共数据集。

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