论文标题

测量分解:指标的综述

Measuring Disentanglement: A Review of Metrics

论文作者

Carbonneau, Marc-André, Zaidi, Julian, Boilard, Jonathan, Gagnon, Ghyslain

论文摘要

学会解开并代表数据变化的因素是AI的重要问题。尽管已经取得了许多进步来学习这些表示形式,但仍不清楚如何量化分离。尽管存在几个指标,但在其隐式假设,他们真正衡量的内容和局限性上鲜为人知。因此,在比较不同的表示时很难解释结果。在这项工作中,我们调查了监督分解指标并彻底分析它们。我们提出了一种新的分类法,其中所有指标都属于三个家庭之一:基于干预,基于预测的和基于信息的家庭。我们进行了广泛的实验,其中我们分离了分离的表示的特性,从而可以沿几个轴进行分层比较。从我们的实验结果和分析中,我们提供了有关分离表示属性之间关系的见解。最后,我们分享有关如何衡量分离的准则。

Learning to disentangle and represent factors of variation in data is an important problem in AI. While many advances have been made to learn these representations, it is still unclear how to quantify disentanglement. While several metrics exist, little is known on their implicit assumptions, what they truly measure, and their limits. In consequence, it is difficult to interpret results when comparing different representations. In this work, we survey supervised disentanglement metrics and thoroughly analyze them. We propose a new taxonomy in which all metrics fall into one of three families: intervention-based, predictor-based and information-based. We conduct extensive experiments in which we isolate properties of disentangled representations, allowing stratified comparison along several axes. From our experiment results and analysis, we provide insights on relations between disentangled representation properties. Finally, we share guidelines on how to measure disentanglement.

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