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Robust Principal Component Analysis on Graphs

机译:图的稳健主成分分析

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Principal Component Analysis (PCA) is the most widely used tool for linear dimensionality reduction and clustering. Still it is highly sensitive to outliers and does not scale well with respect to the number of data samples. Robust PCA solves the first issue with a sparse penalty term. The second issue can be handled with the matrix factorization model, which is however non-convex. Besides, PCA based clustering can also be enhanced by using a graph of data similarity. In this article, we introduce a new model called 'Robust PCA on Graphs' which incorporates spectral graph regularization into the Robust PCA framework. Our proposed model benefits from 1) the robustness of principal components to occlusions and missing values, 2) enhanced low-rank recovery, 3) improved clustering property due to the graph smoothness assumption on the low-rank matrix, and 4) convexity of the resulting optimization problem. Extensive experiments on 8 benchmark, 3 video and 2 artificial datasets with corruptions clearly reveal that our model outperforms 10 other state-of-the-art models in its clustering and low-rank recovery tasks.
机译:主成分分析(PCA)是用于减少线性维数和聚类的最广泛使用的工具。它仍然对异常值高度敏感,并且相对于数据样本的数量而言,缩放效果不佳。健壮的PCA用稀疏的刑期解决了第一个问题。第二个问题可以用矩阵分解模型处理,但是它不是凸的。此外,还可以通过使用数据相似性图来增强基于PCA的聚类。在本文中,我们介绍了一种名为“ Robust PCA on Graphs”的新模型,该模型将频谱图正则化合并到了Robust PCA框架中。我们提出的模型受益于1)主成分对遮挡和缺失值的鲁棒性,2)增强的低秩恢复,3)由于低秩矩阵上的图平滑度假设而提高的聚类性能,以及4)凸度由此产生的优化问题。在8个基准,3个视频和2个带有损坏的人工数据集上进行的广泛实验清楚地表明,我们的模型在聚类和低级恢复任务方面优于其他10个最新模型。

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