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Semi-supervised Dimensionality Reduction via Multimodal Matrix Factorization

机译:通过多峰矩阵分解实现半监督降维

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This paper presents a matrix factorization method for dimensionality reduction, semi-supervised two-way multimodal online matrix factorization (STWOMF). This method performs a semantic embedding by finding a linear mapping to a low dimensional semantic space modeled by the original high dimensional feature representation and the label space. An important characteristic of the proposed algorithm is that the new representation can be learned in a semi-supervised fashion. So, annotated instances are used to maximize the discrimination between classes, but also, non-annotated instances can be exploited to estimate the intrinsic manifold structure of the data. Another important advantage of this algorithm is its online formulation that allows to deal with large-scale collections by keeping low computational requirements. According with the experimental evaluation, the proposed STWOMF in comparison with several linear supervised, unsupervised and semi-supervised dimensionality reduction methods, presents a competitive performance in classification while having a lower computational cost.
机译:本文提出了一种用于降维的矩阵分解方法,半监督的双向多模态在线矩阵分解(STWOMF)。该方法通过找到到由原始高维特征表示和标签空间建模的低维语义空间的线性映射,来执行语义嵌入。所提出算法的一个重要特征是可以以半监督方式学习新的表示形式。因此,带注释的实例用于最大程度地区分类,但也可以利用非带注释的实例来估计数据的固有流形结构。该算法的另一个重要优点是其在线公式化,可以通过保持较低的计算要求来处理大规模集合。根据实验评估,与几种线性监督,无监督和半监督降维方法相比,所提出的STWOMF具有更好的分类性能,同时具有较低的计算成本。

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