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Gaussian Processes for Underdetermined Source Separation

机译:不确定源分离的高斯过程

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摘要

Gaussian process (GP) models are very popular for machine learning and regression and they are widely used to account for spatial or temporal relationships between multivariate random variables. In this paper, we propose a general formulation of underdetermined source separation as a problem involving GP regression. The advantage of the proposed unified view is first to describe the different underdetermined source separation problems as particular cases of a more general framework. Second, it provides a flexible means to include a variety of prior information concerning the sources such as smoothness, local stationarity or periodicity through the use of adequate covariance functions. Third, given the model, it provides an optimal solution in the minimum mean squared error (MMSE) sense to the source separation problem. In order to make the GP models tractable for very large signals, we introduce framing as a GP approximation and we show that computations for regularly sampled and locally stationary GPs can be done very efficiently in the frequency domain. These findings establish a deep connection between GP and nonnegative tensor factorizations (NTF) with the Itakura-Saito distance and lead to effective methods to learn GP hyperparameters for very large and regularly sampled signals.
机译:高斯过程(GP)模型在机器学习和回归中非常流行,并且广泛用于说明多元随机变量之间的空间或时间关系。在本文中,我们提出了不确定源分离的一般形式,将其作为涉及GP回归的问题。提出的统一视图的优点是,首先将各种不确定的源分离问题描述为更通用的框架的特殊情况。其次,它提供了一种灵活的方法,可以通过使用适当的协方差函数来包含各种有关源的先验信息,例如平滑度,局部平稳性或周期性。第三,给定模型,它为源分离问题提供了最小均方误差(MMSE)的最佳解决方案。为了使GP模型适用于非常大的信号,我们引入了成帧作为GP近似的方法,并表明可以在频域中非常高效地完成对定期采样的GP和本地固定GP的计算。这些发现建立了GP和具有Itakura-Saito距离的非负张量因子分解(NTF)之间的深层联系,并导致了一种有效的方法来学习非常大且定期采样的信号的GP超参数。

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