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Incremental nonnegative matrix factorization based on correlation and graph regularization for matrix completion

机译:基于相关性和矩阵正规的增量非负矩阵分解

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摘要

Matrix factorization is widely used in recommendation systems, text mining, face recognition and computer vision. As one of the most popular methods, nonnegative matrix factorization and its incremental variants have attracted much attention. The existing incremental algorithms are established based on the assumption of samples are independent and only update the new latent variable of weighting coefficient matrix when the new sample comes, which may lead to inferior solutions. To address this issue, we investigate a novel incremental nonnegative matrix factorization algorithm based on correlation and graph regularizer (ICGNMF). The correlation is mainly used for finding out those correlated rows to be updated, that is, we assume that samples are dependent on each other. We derive the updating rules for ICGNMF by considering the correlation. We also present tests on widely used image datasets, and show ICGNMF reduces the error by comparing other methods.
机译:矩阵分解广泛用于推荐系统,文本挖掘,面部识别和计算机视觉。作为最流行的方法之一,非负矩阵分解及其增量变体引起了很多关注。现有的增量算法基于样本的假设是独立的,并且当新样本来到时,仅更新加权系数矩阵的新潜变量,这可能导致较差的解决方案。为了解决这个问题,我们研究了基于相关性和图形规范器(ICGNMF)的新型增量非环境矩阵分解算法。相关性主要用于找出要更新的相关行,即我们假设样本彼此依赖。考虑相关性,我们通过考虑相关性来派生ICGNMF的更新规则。我们还对广泛使用的图像数据集进行了测试,并显示ICGNMF通过比较其他方法来减少误差。

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