首页> 外文会议>European Conference on Machine Learning(ECML 2007); 20070917-21; Warsaw(PL) >Efficient Computation of Recursive Principal Component Analysis for Structured Input
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Efficient Computation of Recursive Principal Component Analysis for Structured Input

机译:结构化输入的递归主成分分析的有效计算

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摘要

Recently, a successful extension of Principal Component Analysis for structured input, such as sequences, trees, and graphs, has been proposed. This allows the embedding of discrete structures into vectorial spaces, where all the classical pattern recognition and machine learning methods can be applied. The proposed approach is based on eigenanalysis of extended vectorial representations of the input structures and substructures. One problem with the approach is that eigenanalysis can be computationally quite demanding when considering large datasets of structured objects. In this paper we propose a general approach for reducing the computational burden. Experimental results show a significant speed-up of the computation.
机译:最近,已经提出了针对结构化输入(例如序列,树和图)的主成分分析的成功扩展。这允许将离散结构嵌入矢量空间,在其中可以应用所有经典模式识别和机器学习方法。所提出的方法基于输入结构和子结构的扩展矢量表示的特征分析。该方法的一个问题是,在考虑结构化对象的大型数据集时,特征分析可能在计算上要求很高。在本文中,我们提出了一种减少计算负担的通用方法。实验结果表明计算速度显着提高。

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