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Sparse Probabilistic Relational Projection

机译:稀疏的概率关系投影

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摘要

Probabilistic relational PCA (PRPCA) can learn a projection matrix to perform dimensionality reduction for relational data. However, the results learned by PRPCA lack interpretability because each principal component is a linear combination of all the original variables. In this paper, we propose a novel model, called sparse probabilistic relational projection (SPRP), to learn a sparse projection matrix~for relational dimensionality reduction. The sparsity in SPRP is achieved by imposing on the projection matrix a sparsity-inducing prior such as the Laplace prior or Jeffreys prior. We propose an expectation-maximization (EM) algorithm to learn the parameters of SPRP. Compared with PRPCA, the sparsity in SPRP not only makes the results more inter-pretable but also makes the projection operation much more efficient without compromising its accuracy. All these are verified by experiments conducted on several real applications.
机译:概率关系PCA(PRPCA)可以学习投影矩阵以对关系数据执行维度降低。但是,PRPCA学习的结果缺乏解释性,因为每个主组件是所有原始变量的线性组合。在本文中,我们提出了一种新颖的模型,称为稀疏概率关系投影(SPRP),以学习稀疏投影矩阵〜以实现关系维度降低。通过施加投影矩阵的稀疏性诱导如Laplate先前或Jeffreys之前的投影矩阵来实现SPRP中的稀疏性。我们提出了期望 - 最大化(EM)算法来学习SPRP的参数。与PRPCA相比,SPRP中的稀疏性不仅使得结果更加便宜,而且还使投影操作更有效,而不会影响其精度。所有这些都是通过在几种真实应用上进行的实验进行验证的。

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