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Feature Extraction Using Linear and Non-linear Subspace Techniques

机译:使用线性和非线性子空间技术的特征提取

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This paper provides a new insight into unsupervised feature extraction techniques based on subspace models. In this work the subspace models are described exploiting the dual form of the basis vectors. In what concerns the kernel based model, a computationally less demanding model based on incomplete Cholesky decomposition is also introduced. An online benchmark data set allows the evaluation of the feature extraction methods comparing the performance of two classifiers having as input the raw data and the new representations.
机译:本文为基于子空间模型的无监督特征提取技术提供了新的见解。在这项工作中,利用基向量的对偶形式描述了子空间模型。关于基于内核的模型,还介绍了基于不完全Cholesky分解的计算量较少的模型。在线基准数据集允许评估特征提取方法,以比较两个分类器的性能,这些分类器将原始数据和新表示作为输入。

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