Theory and Applications of the Generating Functions: Pure Mathematics and Applied Science
Author: Stefano Spezia (Editor)
Publisher finelybook 出版社: Arcler Press
Publication Date 出版日期: 2024-01-10
Language 语言: English
Print Length 页数: 461 pages
ISBN-10: 1774698749
ISBN-13: 9781774698747
Book Description
The generating functions have various applications in many branches of mathematics and sciences, representing a widely used and powerful tool for solving problems. In combinatorics, they allow for obtaining a compact representation of discrete structures and the investigation of several properties of the sequences they generate, i.e. their asymptotic growth. Theory and Applications of the Generating Functions: Pure Mathematics and Applied Science book provides the mathematical basis and application examples: generating functions, infinite series, and asymptotic methods.
About the Author
Stefano Spezia was born in Erice (Italy) in 1981. He obtained a master’s degree in Electronic Engineering (Telecommunications) at the University of Palermo in 2006, and in 2012, at the same university, he got a PhD degree in Applied Physics. From 2007 to 2014, he carried out research in the Physics of Complex Ecological Systems, Semiconductor Spintronics, Nonlinear Optics and Quantum Optics, publishing several works in international journals and books. Since 2014, high school teacher of Mathematics and Physics. He is also an amateur mathematician interested in integer sequences.
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