Probabilistic Numerics : Computation as Machine Learning /
Hennig, Philipp
Probabilistic Numerics : Computation as Machine Learning / Philipp Hennig, Michael A. Osborne and Hans P. Kersting - Cambridge: Cambridge University Press; ©2022 - xii, 410p.
Probabilistic numerical computation formalises the connection between machine learning and applied mathematics. Numerical algorithms approximate intractable quantities from computable ones. They estimate integrals from evaluations of the integrand, or the path of a dynamical system described by differential equations from evaluations of the vector field. In other words, they infer a latent quantity from data. This book shows that it is thus formally possible to think of computational routines as learning machines, and to use the notion of Bayesian inference to build more flexible, efficient, or customised algorithms for computation. The text caters for Masters' and PhD students, as well as postgraduate researchers in artificial intelligence, computer science, statistics, and applied mathematics. Extensive background material is provided along with a wealth of figures, worked examples, and exercises (with solutions) to develop intuition.
9781107163447
Computer science, information & general works
Computer science, knowledge & systems
Special computer methods
Artificial Intelligence
Machine Learning
006.31 / HenP
Probabilistic Numerics : Computation as Machine Learning / Philipp Hennig, Michael A. Osborne and Hans P. Kersting - Cambridge: Cambridge University Press; ©2022 - xii, 410p.
Probabilistic numerical computation formalises the connection between machine learning and applied mathematics. Numerical algorithms approximate intractable quantities from computable ones. They estimate integrals from evaluations of the integrand, or the path of a dynamical system described by differential equations from evaluations of the vector field. In other words, they infer a latent quantity from data. This book shows that it is thus formally possible to think of computational routines as learning machines, and to use the notion of Bayesian inference to build more flexible, efficient, or customised algorithms for computation. The text caters for Masters' and PhD students, as well as postgraduate researchers in artificial intelligence, computer science, statistics, and applied mathematics. Extensive background material is provided along with a wealth of figures, worked examples, and exercises (with solutions) to develop intuition.
9781107163447
Computer science, information & general works
Computer science, knowledge & systems
Special computer methods
Artificial Intelligence
Machine Learning
006.31 / HenP