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Adding and subtracting eigenspaces with eigenvalue decomposition and singular value decomposition

机译:通过特征值分解和奇异值分解来添加和减去特征空间

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This paper provides algorithms for adding and subtracting eigenspaces, thus allowing for incremental updating and downdating of data models. Importantly, and unlike previous work, we keep an accurate track of the mean of the data, which allows bur methods to be used in classification applications. The result of adding eigenspaces, each made from a set of data, is an approximation to that which would obtain were the sets of data taken together. Subtracting eigenspaces yields a result approximating that which would obtain were a subset of data used. Using our algorithms, it is possible to perform 'arithmetic' on eigenspaces without reference to the original data. Eigenspaces can be constructed using either eigenvalue decomposition (EVD) or singular value decomposition (SVD). We provide addition operators for both methods, but subtraction for EVD only, arguing there is no closed-form solution for SVD. The methods and discussion surrounding SVD provide the principle novelty in this paper. We illustrate the use of our algorithms in three generic applications, including the dynamic construction of Gaussian mixture models.
机译:本文提供了用于增加和减少特征空间的算法,从而允许增量更新和降级数据模型。重要的是,与以前的工作不同,我们保持对数据均值的准确跟踪,这使bur方法可用于分类应用程序中。添加每个由一组数据构成的本征空间的结果近似于将一组数据组合在一起所获得的本征空间。减去本征空间可得出近似于所使用数据子集的结果。使用我们的算法,可以在不参考原始数据的情况下对特征空间执行“算术”。可以使用特征值分解(EVD)或奇异值分解(SVD)构造特征空间。我们为这两种方法都提供了加法运算符,但仅对EVD进行了减法运算,因为没有针对SVD的闭式解决方案。围绕SVD的方法和讨论提供了本文的原理新颖性。我们说明了我们的算法在三个通用应用程序中的用法,其中包括动态构造高斯混合模型。

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