Probability in Electrical Engineering and Computer Science An Application-Driven Course
Material type: TextLanguage: English Publication details: Springer Nature 2021Description: 1 electronic resource (380 p.)Content type:- text
- computer
- online resource
- 978-3-030-49995-2
- 9783030499952
- Communications engineering / telecommunications
- Maths for computer scientists
- Maths for engineers
- Probability & statistics
- Applied probability
- Communications engineering / telecommunications
- Communications Engineering, Networks
- Deep neural networks
- Detection theory
- Expectation maximization
- Hypothesis testing
- Linear and polynomial regression
- Machine learning
- Mathematical & statistical software
- Mathematical and Computational Engineering
- Mathematical and Computational Engineering Applications
- Maths for computer scientists
- Maths for engineers
- Matrix completion
- Open Access
- Probability & statistics
- Probability and Statistics in Computer Science
- Probability Theory
- Probability Theory and Stochastic Processes
- Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences
- Statistics in Engineering, Physics, Computer Science, Chemistry and Earth Sciences
- Stochastic dynamic programming
- Stochastic gradient descent
- Stochastics
Open Access Unrestricted online access star
This revised textbook motivates and illustrates the techniques of applied probability by applications in electrical engineering and computer science (EECS). The author presents information processing and communication systems that use algorithms based on probabilistic models and techniques, including web searches, digital links, speech recognition, GPS, route planning, recommendation systems, classification, and estimation. He then explains how these applications work and, along the way, provides the readers with the understanding of the key concepts and methods of applied probability. Python labs enable the readers to experiment and consolidate their understanding. The book includes homework, solutions, and Jupyter notebooks. This edition includes new topics such as Boosting, Multi-armed bandits, statistical tests, social networks, queuing networks, and neural networks. For ancillaries related to this book, including examples of Python demos and also Python labs used in Berkeley, please email Mary James at mary.james@springer.com. This is an open access book.
University of California, Berkeley Foundation
Creative Commons by/4.0/ cc
http://creativecommons.org/licenses/by/4.0/
English
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