Covariate-informed Representation Learning to Prevent Posterior Collapse of iVAE.

Young-Geun Kim, Ying Liu, Xue-Xin Wei
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Abstract

The recently proposed identifiable variational autoencoder (iVAE) framework provides a promising approach for learning latent independent components (ICs). iVAEs use auxiliary covariates to build an identifiable generation structure from covariates to ICs to observations, and the posterior network approximates ICs given observations and covariates. Though the identifiability is appealing, we show that iVAEs could have local minimum solution where observations and the approximated ICs are independent given covariates.-a phenomenon we referred to as the posterior collapse problem of iVAEs. To overcome this problem, we develop a new approach, covariate-informed iVAE (CI-iVAE) by considering a mixture of encoder and posterior distributions in the objective function. In doing so, the objective function prevents the posterior collapse, resulting latent representations that contain more information of the observations. Furthermore, CI-iVAE extends the original iVAE objective function to a larger class and finds the optimal one among them, thus having tighter evidence lower bounds than the original iVAE. Experiments on simulation datasets, EMNIST, Fashion-MNIST, and a large-scale brain imaging dataset demonstrate the effectiveness of our new method.

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协变量知情表示学习预防iVAE后塌陷。
最近提出的可识别变分自编码器(iVAE)框架为学习潜在独立分量(ic)提供了一种很有前途的方法。ivae使用辅助协变量构建从协变量到ic到观测值的可识别生成结构,后验网络近似给定观测值和协变量的ic。虽然可辨识性很吸引人,但我们表明ivae可以具有局部最小解,其中观测值和近似的ic是独立的给定协变量。我们将这种现象称为ivae后塌陷问题。为了克服这个问题,我们开发了一种新的方法,协变量通知iVAE (CI-iVAE),通过考虑目标函数中编码器和后验分布的混合。这样做,目标函数可以防止后验崩溃,从而产生包含更多观察信息的潜在表征。此外,CI-iVAE将原有的iVAE目标函数扩展到更大的类中,并从中找到最优的一类,从而比原有的iVAE具有更严格的证据下界。在仿真数据集、EMNIST、Fashion-MNIST和大规模脑成像数据集上的实验证明了该方法的有效性。
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