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Discrete Stochastic Processes: Tools for Machine Learning and Data Science: Springer Undergraduate Mathematics Series

Autor Nicolas Privault
en Limba Engleză Paperback – 10 oct 2024
This text presents selected applications of discrete-time stochastic processes that involve random interactions and algorithms, and revolve around the Markov property. It covers recurrence properties of (excited) random walks, convergence and mixing of Markov chains, distribution modeling using phase-type distributions, applications to search engines and probabilistic automata, and an introduction to the Ising model used in statistical physics. Applications to data science are also considered via hidden Markov models and Markov decision processes. A total of 32 exercises and 17 longer problems are provided with detailed solutions and cover various topics of interest, including statistical learning.
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Specificații

ISBN-13: 9783031658198
ISBN-10: 3031658191
Pagini: 288
Ilustrații: X, 260 p. 119 illus., 108 illus. in color.
Dimensiuni: 155 x 235 x 21 mm
Greutate: 0.47 kg
Ediția:2024
Editura: Springer Nature Switzerland
Colecția Springer
Seria Springer Undergraduate Mathematics Series

Locul publicării:Cham, Switzerland

Cuprins

- 1. A Summary of Markov Chains.- 2. Phase-Type Distributions.- 3. Synchronizing Automata.- 4. Random Walks and Recurrence.- 5. Cookie-Excited Random Walks.- 6. Convergence to Equilibrium.- 7. The Ising Model.- 8. Search Engines.- 9. Hidden Markov Model.- 10. Markov Decision Processes.

Notă biografică

Nicolas Privault received a PhD degree from the University of Paris VI, France. He was with the University of Evry, France, the University of La Rochelle, France, and the University of Poitiers, France. He is currently a Professor with the School of Physical and Mathematical Sciences, Nanyang Technological University, Singapore. His research interests are in the areas of stochastic analysis and its applications.

Textul de pe ultima copertă

This text presents selected applications of discrete-time stochastic processes that involve random interactions and algorithms, and revolve around the Markov property. It covers recurrence properties of (excited) random walks, convergence and mixing of Markov chains, distribution modeling using phase-type distributions, applications to search engines and probabilistic automata, and an introduction to the Ising model used in statistical physics. Applications to data science are also considered via hidden Markov models and Markov decision processes. A total of 32 exercises and 17 longer problems are provided with detailed solutions and cover various topics of interest, including statistical learning.

Caracteristici

Provides a unified outlook on some applications of discrete-time Markov processes to data science Delves into the foundations of random processes, helping readers excel in machine learning and applied sciences Includes algorithms and codes for practice and illustration purposes