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Nonlinear ICA Using Auxiliary Variables and Generalized Contrastive Learning

机译:使用辅助变量和广义对比学习的非线性ICA

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Nonlinear ICA is a fundamental problem for unsupervised representation learning, emphasizing the capacity to recover the underlying latent variables generating the data (i.e., identifiability). Recently, the very first identifiability proofs for nonlinear ICA have been proposed, leveraging the temporal structure of the independent components. Here, we propose a general framework for nonlinear ICA, which, as a special case, can make use of temporal structure. It is based on augmenting the data by an auxiliary variable, such as the time index, the history of the time series, or any other available information. We propose to learn nonlinear ICA by discriminating between true augmented data, or data in which the auxiliary variable has been randomized. This enables the framework to be implemented algorithmically through logistic regression, possibly in a neural network. We provide a comprehensive proof of the identifiability of the model as well as the consistency of our estimation method. The approach not only provides a general theoretical framework combining and generalizing previously proposed nonlinear ICA models and algorithms, but also brings practical advantages.
机译:非线性ICA是无监督表示学习的一个基本问题,它强调了恢复生成数据的潜在潜变量的能力(即可识别性)。最近,利用独立分量的时间结构,提出了非线性ICA的第一个可识别性证明。在这里,我们提出了一个非线性ICA的通用框架,在特殊情况下,它可以利用时间结构。它基于通过辅助变量(例如时间索引,时间序列的历史记录或任何其他可用信息)扩充数据的基础。我们建议通过区分真实的增强数据或辅助变量已被随机化的数据来学习非线性ICA。这使框架可以通过逻辑回归(可能在神经网络中)通过算法实现。我们提供了模型可识别性以及估算方法的一致性的全面证明。该方法不仅提供了一个综合的理论框架,对先前提出的非线性ICA模型和算法进行了综合和推广,而且带来了实际的优势。

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