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The Incomplete Rosetta Stone Problem: Identifiability Results for Multi-View Nonlinear ICA

机译:不完整的Rosetta Stone问题:多视图非线性ICA的可识别性结果

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We consider the problem of recovering a common latent source with independent components from multiple views. This applies to settings in which a variable is measured with multiple experimental modalities, and where the goal is to synthesize the disparate measurements into a single unified representation. We consider the case that the observed views are a nonlinear mixing of component-wise corruptions of the sources. When the views are considered separately, this reduces to nonlinear Independent Component Analysis (ICA) for which it is provably impossible to undo the mixing. We present novel identifiability proofs that this is possible when the multiple views are considered jointly, showing that the mixing can theoretically be undone using function approximators such as deep neural networks. In contrast to known identifiability results for nonlinear ICA, we prove that independent latent sources with arbitrary mixing can be recovered as long as multiple, sufficiently different noisy views are available.
机译:我们考虑从多个视图中使用独立组件恢复共同潜在源的问题。这适用于使用多个实验方式测量变量的设置,并且目标是将不同的测量综合为单个统一表示。我们考虑观察到的观点是源的组分腐败的非线性混合。当观点分开考虑时,这减少到非线性独立分量分析(ICA),其可证明它不可能撤消混合。我们提出了新的可识别性证据,即在共同考虑多视图时,这可能是理论上可以使用诸如深神经网络的功能近似器来撤消混合。与非线性ICA的已知可识别性结果相反,我们证明可以恢复具有任意混合的独立潜在来源,只要多个,足够的噪声视图可以获得。

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