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A stochastic quasi-Newton method for large-scale optimization
R. H. Byrd
, S. L. Hansen
, Jorge Nocedal
, Y. Singer
Computer Science
Center for Statistics & Machine Learning
Research output
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Article
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peer-review
347
Scopus citations
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Keyphrases
Stochastic quasi-Newton Methods
100%
Curvature Information
100%
Deterministic Optimization
50%
BFGS Update Formula
50%
Limited Memory
50%
Hessian-vector Products
50%
Memory Forms
50%
Subsampled Hessian
50%
Mathematics
Quasi-Newton Method
100%
Limited Memory
33%
BFGS
33%
Vector Product
33%