Description
An engaging introduction to the critical tools needed to design and evaluate engineering systems operating in uncertain environments.
About the Author
Bruce Hajek has been an avid student, instructor, and user of probability theory for his entire career. He is the Mary Lou and Leonard C. Hoeft Chair of Engineering, Center for Advanced Study Professor of Electrical and Computer Engineering, and Professor in the Coordinated Science Laboratory at the University of Illinois. Among his many awards, he is a member of the US National Academy of Engineering and a recipient of the IEEE Koji Kobayashi Computers and Communications Award. He is co-author, with E. Wong, of the more advanced classic book, Stochastic Processes in Engineering Systems, 2nd edition (1985).
Reviews
'A comprehensive exposition of random processes ... Abstract concepts are nicely explained through many examples ... The book will be very helpful for beginning graduate students who want a firm foundational understanding of random processes. It will also serve as a nice reference for the advanced reader.' Anima Anandkumar, University of California, Irvine
'This is a fantastic book from one of the eminent experts in the field, and is the standard text for the graduate class I teach in [electrical and computer engineering] ... The material covered is perfect for a first-year graduate class in probability and stochastic processes.' Sanjay Shakkottai, University of Texas, Austin
'This is an excellent introductory book on random processes and basic estimation theory from the foremost expert and is suitable for advanced undergraduate students and/or first-year graduate students who are interested in stochastic analysis. It covers an extensive set of topics that are very much applicable to a wide range of engineering fields.' Richard La, University of Maryland
'I was fortunate to have a mature draft of [this] book when I introduced a stochastic processes course to my department ... [It] provides an entirely accessible introduction to the foundations of stochastic processes ... the students in my course enjoyed Hajek's introduction to measure theory, and ... could appreciate the value of the abstract concepts introduced at the start of the text. It includes applications of this general theory to many topics that are of tremendous interest to students and practitioners, such as nonlinear filtering, statistical methods such as the EM-algorithm, and stability theory for Markov processes. Because the book establishes strong foundations, in a course it is not difficult to substitute other applications, such as Monte-Carlo methods or reinforcement learning. Graduate students will be thrilled to learn these exciting techniques from an accessible source.' Sean Meyn, University of Florida
Book Information
ISBN 9781107100121
Author Bruce Hajek
Format Hardback
Page Count 432
Imprint Cambridge University Press
Publisher Cambridge University Press
Weight(grams) 980g
Dimensions(mm) 254mm * 178mm * 23mm