比利时vs摩洛哥足彩
,
university of california san diego
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math 278b - mathematics of information, data and signals seminar
sohail bahmani
georgia institute of technology
nonlinear regression via convex programming
abstract:
we consider a class of parametric regression problems where the signal is observed through random nonlinear functions with a difference of convex (dc) form. this model describes a broad subset of nonlinear regression problems that includes familiar special cases such as phase retrieval/quadratic regression and blind deconvolution/bilinear regression. given the dc decomposition of the observation functions as well as an approximate solution, we formulate a convex program as an estimator that operates in the natural space of the signal. our approach is computationally superior to the methods based on semidefinite/sum-of-squares relaxation---tailored for polynomial observation functions---and can compete with the non-convex methods studied in special regression problems. furthermore, under mild moment assumptions, we derive the sample complexity of the proposed convex estimator using a pac-bayesian argument. we instantiate our results with bilinear regression with gaussian factors and provide a method for constructing the required initial approximate solution.
host: rayan saab
october 2, 2019
1:00 pm
ap&m 6402
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