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B0311
Title: Flexible regularized estimating equations: Some new perspectives Authors:  Yue Zhao - University of York (United Kingdom) [presenting]
Archer Yang - McGill University (Canada)
Yuwen Gu - University of Connecticut (United States)
Jun Fan - McGill University (Austria)
Abstract: Some observations about the equivalences between regularized estimating equations, fixed-point problems and variational inequalities are made: (a) A regularized estimating equation is equivalent to a fixed-point problem, specified via the proximal operator of the corresponding penalty; (b) A regularized estimating equation is equivalent to a (generalized) variational inequality. Both equivalences extend to any estimating equations with convex penalty functions. To solve large-scale regularized estimating equations, it is worth pursuing computation by exploiting these connections. While fast computational algorithms are less developed for regularized estimating equations, there are many efficient solvers for fixed-point problems and variational inequalities. In this regard, we apply some efficient and scalable solvers which deliver a hundred-fold speed improvement. These connections can lead to further research in both computational and theoretical aspects of the regularized estimating equations.