Search Books
Statistics and Informatics … The Many Facets of Geometry…

The Oxford Handbook of Nonlinear Filtering (Oxford Handbooks)

Author Dan Crisan, Boris Rozovskii
Publisher Oxford University Press
Category Mathematics
📄 Viewing lite version Full site ›
🌎 Shop on Amazon — choose country
134.99 210.00 USD
🛒 Buy New on Amazon 🇺🇸 🏷 Buy Used — $89.45

✓ Usually ships in 1-2 business days

Share:
Book Details
ISBN / ASIN0199532907
ISBN-139780199532902
AvailabilityUsually ships in 1-2 business days
Sales Rank3,451,167
CategoryMathematics
MarketplaceUnited States 🇺🇸

Description

In many areas of human endeavor, the systems involved are not available for direct measurement. Instead, by combining mathematical models for a system's evolution with partial observations of its evolving state, we can make reasonable inferences about it. The increasing complexity of the modern world makes this analysis and synthesis of high-volume data an essential feature in many real-world problems.

The celebrated Kalman-Bucy filter, designed for linear dynamical systems with linearly structured measurements, is the most famous Bayesian filter. Its generalizations to nonlinear systems and/or observations are collectively referred to as nonlinear filtering (NLF), an extension of the Bayesian framework to the estimation, prediction, and interpolation of nonlinear stochastic dynamics. NLF uses a stochastic model to make inferences about an evolving system and is a theoretically optimal algorithm.

The breadth of its applications, firmly established and still emerging, is simply astounding. Early uses such as cryptography, tracking, and guidance were mostly of a military nature. Since then, the scope has exploded. It includes the study of global climate, estimating the state of the economy, identifying tumors using non-invasive methods, and much more.

The Oxford Handbook of Nonlinear Filtering is the first comprehensive written resource for the subject. It contains classical and recent results and applications, with contributions from 58 authors. Collated into 10 parts, it covers the foundations of nonlinear filtering, connections to stochastic partial differential equations, stability and asymptotic analysis, estimation and control, approximation theory and numerical methods for solving the nonlinear filtering problem (including particle methods). It also contains a part dedicated to the application of nonlinear filtering to several problems in mathematical finance.
A Modern Introduction to Probability and Statistics: U…
View
Introduction to Graph Theory
View
Galois Theory (Pure and Applied Mathematics: A Wiley S…
View
Minitab Manual for Statistics for Business: Decision M…
View
Introductory Statistics
View
Taxicab Geometry: An Adventure in Non-Euclidean Geomet…
View
Thomas' Calculus Early Transcendentals
View
The Nonlinear Schrödinger Equation: Singular Solutions…
View