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Gaussian Process Latent Variable Models for Visualisation of High Dimensional Data

机译:高斯过程潜在变量模型,用于可视化高维数据

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In this paper we introduce a new underlying probabilistic model for principal component analysis (PCA). Our formulation interprets PCA as a particular Gaussian process prior on a mapping from a latent space to the observed data-space. We show that if the prior's covariance function constrains the mappings to be linear the model is equivalent to PCA, we then extend the model by considering less restrictive covariance functions which allow non-linear mappings. This more general Gaussian process latent variable model (GPLVM) is then evaluated as an approach to the visualisation of high dimensional data for three different data-sets. Additionally our non-linear algorithm can be further kernelised leading to 'twin kernel PCA' in which a mapping between feature spaces occurs.
机译:在本文中,我们向主成分分析(PCA)介绍了一种新的潜在概率模型。我们的配方将PCA解释为在从潜在空间到观察到的数据空间的潜在空间映射之前的特定高斯过程。我们展示如果先前的协方差函数约束映射为线性,则模型相当于PCA,然后通过考虑允许非线性映射的限制性协方差函数来扩展模型。然后,该更通用的高斯进程潜变量模型(GPLVM)被评估为用于三种不同数据集的高维数据的可视化的方法。另外,我们的非线性算法可以进一步封闭,导致'双内核PCA',其中发生特征空间之间的映射。

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