用非凸惩罚改进图趋势过滤

R. Varma, Harlin Lee, Yuejie Chi, J. Kovacevic
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引用次数: 2

摘要

在本文中,我们研究了在图上表现出非齐次平滑水平的分段光滑图信号的去噪问题。我们将图趋势过滤框架扩展到一组非凸正则器,这些非凸正则器比现有的凸正则器表现出更好的恢复性能。我们以渐近错误率的形式给出了一般图模型和专门图模型的理论结果。我们进一步提出了一种基于admm的算法来解决所提出的优化问题,并分析了其收敛性。采用非凸正则化器对合成数据和真实数据进行了去噪、支持恢复和半监督分类。
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Improving Graph Trend Filtering with Non-convex Penalties
In this paper, we study the denoising of piecewise smooth graph signals that exhibit inhomogeneous levels of smoothness over a graph. We extend the graph trend filtering framework to a family of nonconvex regularizers that exhibit superior recovery performance over existing convex ones. We present theoretical results in the form of asymptotic error rates for both generic and specialized graph models. We further present an ADMM-based algorithm to solve the proposed optimization problem and analyze its convergence. Numerical performance of the proposed framework with non-convex regularizers on both synthetic and real-world data are presented for denoising, support recovery, and semi-supervised classification.
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