Learning disentangled representations of real-world data is a challenging open problem. Most previous methods have focused on either supervised approaches which use attribute labels or unsupervised approaches that manipulate the factorization in the latent space of models such as the variational autoencoder (VAE) by training with task-specific losses. In this work, we propose polarized-VAE, an approach that disentangles select attributes in the latent space based on proximity measures reflecting the similarity between data points with respect to these attributes. We apply our method to disentangle the semantics and syntax of sentences and carry out transfer experiments. Polarized-VAE outperforms the VAE baseline and is competitive with state-of-the-art approaches, while being more a general framework that is applicable to other attribute disentanglement tasks.
翻译:在这项工作中,我们提议了一种基于近距离测量方法分离潜在空间中某些属性的方法,该方法反映了这些属性的数据点之间的相似性。我们采用的方法是分解语义和语义并进行转移实验。极地VAE超越了VAE基线,并且与最先进的方法具有竞争力,同时是一个适用于其他属性分解任务的一般性框架。