bookFoundations and Trends® in OptimizationJan 1, 2014Closed access

Proximal Algorithms

Stanford University

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Abstract

Proximal Algorithms discusses proximal operators and proximal algorithms, and illustrates their applicability to standard and distributed convex optimization in general and many applications of recent interest in particular. Much like Newton's method is a standard tool for solving unconstrained smooth optimization problems of modest size, proximal algorithms can be viewed as an analogous tool for nonsmooth, constrained, large-scale, or distributed versions of these problems. They are very generally applicable, but are especially well-suited to problems of substantial recent interest involving large or high-dimensional datasets. Proximal methods sit at a higher level of abstraction than classical algorithms…

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2,166
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FWCI
246.56
Percentile
100%
References
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Citations per year

Authors

2

Topics & keywords

Keywords
  • Proximal Gradient Methods
  • Operator (biology)
  • Algorithm
  • Computer science
  • Class (philosophy)
  • Simple (philosophy)
  • Convex function
  • Mathematical optimization
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