附註:Title from publisher's bibliographic system (viewed on 09 Mar 2023).
Simple examples -- Embedded geometry : first order -- First-order optimization algorithms -- Embedded geometry : second order -- Second-order optimization algorithms -- Embedded submanifolds : examples -- General manifolds -- Quotient manifolds -- Additional tools -- Geodesic convexity.
摘要:Optimization on Riemannian manifolds-the result of smooth geometry and optimization merging into one elegant modern framework-spans many areas of science and engineering, including machine learning, computer vision, signal processing, dynamical systems and scientific computing. This text introduces the differential geometry and Riemannian geometry concepts that will help students and researchers in applied mathematics, computer science and engineering gain a firm mathematical grounding to use these tools confidently in their research. Its charts-last approach will prove more intuitive from an optimizer's viewpoint, and all definitions and theorems are motivated to build time-tested optimization algorithms. Starting from first principles, the text goes on to cover current research on topics including worst-case complexity and geodesic convexity. Readers will appreciate the tricks of the trade for conducting research and for numerical implementations sprinkled throughout the book.