<?xml version="1.0" encoding="UTF-8"?><rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:dcq="http://purl.org/dc/terms/"><records count="1" morepages="false" start="1" end="1"><record rownumber="1"><dc:product_type>Conference Paper</dc:product_type><dc:title>Advances in neural information processing systems</dc:title><dc:creator>Lyu, H; Sha, N.; Qin, S.; Yan, M.; Xie, Y.; Wang, R.</dc:creator><dc:corporate_author/><dc:editor/><dc:description>This paper extends robust principal component analysis (RPCA) to nonlinear manifolds. Suppose that the observed data matrix is the sum of a sparse component and
a component drawn from some low dimensional manifold. Is it possible to separate
them by using similar ideas as RPCA? Is there any benefit in treating the manifold
as a whole as opposed to treating each local region independently? We answer
these two questions affirmatively by proposing and analyzing an optimization
framework that separates the sparse component from the manifold under noisy data.
Theoretical error bounds are provided when the tangent spaces of the manifold
satisfy certain incoherence conditions. We also provide a near optimal choice of
the tuning parameters for the proposed optimization formulation with the help of a
new curvature estimation method. The efficacy of our method is demonstrated on
both synthetic and real datasets.</dc:description><dc:publisher/><dc:date>2019-12-01</dc:date><dc:nsf_par_id>10195511</dc:nsf_par_id><dc:journal_name>Advances in neural information processing systems</dc:journal_name><dc:journal_volume>32</dc:journal_volume><dc:journal_issue/><dc:page_range_or_elocation/><dc:issn>1049-5258</dc:issn><dc:isbn/><dc:doi>https://doi.org/</dc:doi><dcq:identifierAwardId>1909523</dcq:identifierAwardId><dc:subject/><dc:version_number/><dc:location/><dc:rights/><dc:institution/><dc:sponsoring_org>National Science Foundation</dc:sponsoring_org></record></records></rdf:RDF>