Geometric Autoencoders - What You See is What You Decode

Philipp Nazari, Sebastian Damrich, F. Hamprecht
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引用次数: 1

Abstract

Visualization is a crucial step in exploratory data analysis. One possible approach is to train an autoencoder with low-dimensional latent space. Large network depth and width can help unfolding the data. However, such expressive networks can achieve low reconstruction error even when the latent representation is distorted. To avoid such misleading visualizations, we propose first a differential geometric perspective on the decoder, leading to insightful diagnostics for an embedding's distortion, and second a new regularizer mitigating such distortion. Our ``Geometric Autoencoder'' avoids stretching the embedding spuriously, so that the visualization captures the data structure more faithfully. It also flags areas where little distortion could not be achieved, thus guarding against misinterpretation.
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几何自动编码器-你看到的就是你解码的
可视化是探索性数据分析的关键步骤。一种可能的方法是训练具有低维潜在空间的自编码器。大的网络深度和宽度可以帮助展开数据。然而,这种表达网络即使在潜在表征失真的情况下也能实现较低的重构误差。为了避免这种误导性的可视化,我们首先提出了解码器的微分几何视角,从而对嵌入的失真进行有见地的诊断,然后提出了一个新的正则化器来减轻这种失真。我们的“几何自动编码器”避免了虚假地拉伸嵌入,使可视化更忠实地捕获数据结构。它还标记了不可能实现少量扭曲的领域,从而防止误解。
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