Optimization techniques are at the core of data science, including
data analysis and machine learning. An understanding of basic
optimization techniques and their fundamental properties provides
important grounding for students, researchers, and practitioners in
these areas. This text covers the fundamentals of optimization
algorithms in a compact, self-contained way, focusing on the
techniques most relevant to data science. An introductory chapter
demonstrates that many standard problems in data science can be
formulated as optimization problems. Next, many fundamental methods in
optimization are described and analyzed, including: gradient and
accelerated gradient methods for unconstrained optimization of smooth
(especially convex) functions; the stochastic gradient method, a
workhorse algorithm in machine learning; the coordinate descent
approach; several key algorithms for constrained optimization
problems; algorithms for minimizing nonsmooth functions arising in
data science; foundations of the analysis of nonsmooth functions and
optimization duality; and the back-propagation approach, relevant to
neural networks.
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Produktdetaljer
ISBN
9781009019125
Publisert
2025
Utgiver
Cambridge University Press
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter