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PATTERN CHANGE DISCOVERY BETWEEN HIGH DIMENSIONAL DATA SETS

机译:高维数据集之间的模式更改发现

摘要

The general problem of pattern change discovery between high-dimensional data sets is addressed by considering the notion of the principal angles between the subspaces is introduced to measure the subspace difference between two high-dimensional data sets. Current methods either mainly focus on magnitude change detection of low-dimensional data sets or are under supervised frameworks. Principal angles bear a property to isolate subspace change from the magnitude change. To address the challenge of directly computing the principal angles, matrix factorization is used to serve as a statistical framework and develop the principle of the dominant subspace mapping to transfer the principal angle based detection to a matrix factorization problem. Matrix factorization can be naturally embedded into the likelihood ratio test based on the linear models. The method may be unsupervised and addresses the statistical significance of the pattern changes between high-dimensional data sets.
机译:通过考虑引入子空间之间的主角的概念来寻址高维数据集之间的一般问题,以便测量两个高维数据集之间的子空间差异。目前的方法主要关注低维数据集的幅度变化检测或在监督框架下。主角有一个属性来隔离幅度变化的子空间变化。为了解决直接计算主角的挑战,矩阵分解用于用作统计框架,并开发主导子空间映射的原理,以将基于主角的检测转移到矩阵分子问题。基于线性模型,矩阵分解可以自然地嵌入到似然比测试中。该方法可以是无监督的并且解决了高维数据集之间的模式变化的统计学意义。

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