Sourcebook of Mathematical Economics Sourcebook of Mathematical Economics

Sourcebook of Mathematical Economics

    • $299.99
    • $299.99

Publisher Description

It is argued that mathematics allows economists to form meaningful, testable propositions about wide-ranging and complex subjects which could less easily be expressed informally. Further, the language of mathematics allows economists to make specific, positive claims about controversial or contentious subjects that would be impossible without mathematics. Much of economic theory is currently presented in terms of mathematical economic models, a set of stylized and simplified mathematical relationships asserted to clarify assumptions and implications. The book is a detailed study of each and every important aspect of subject. Each aspect is discussed in a systematic and rational manner. The important objectives of writing this book is to equip the reader with enough fundamental issues relating to different aspect of the subject. Contents: Mathematical Optimization • Theory of Equations • Differential Equations • Functional Analysis • Marginalism • Matrix and Determinant • Probability Distribution • Limits and Continuity of Functions • Sets, Relations and Functions • Radius of Curvature • Integrals.

GENRE
Business & Personal Finance
RELEASED
2003
June 30
LANGUAGE
EN
English
LENGTH
278
Pages
PUBLISHER
Arts & Science Academic Publishing
SELLER
National Book Network
SIZE
13.2
MB
Foundations of Mathematical and Computational Economics Foundations of Mathematical and Computational Economics
2011
Multidimensional Screening Multidimensional Screening
2006
Introduction to Quantitative Macroeconomics Using Julia Introduction to Quantitative Macroeconomics Using Julia
2018
Mathematical Formulas for Economists Mathematical Formulas for Economists
2006
The Brownian Motion The Brownian Motion
2019
Mathematics and Methodology for Economics Mathematics and Methodology for Economics
2016
Modeling and Optimization of Signals Using Machine Learning Techniques Modeling and Optimization of Signals Using Machine Learning Techniques
2024
AIoT and Big Data Analytics for Smart Healthcare Applications AIoT and Big Data Analytics for Smart Healthcare Applications
2023
Modeling and Optimization of Optical Communication Networks Modeling and Optimization of Optical Communication Networks
2023
Self-Powered Cyber Physical Systems Self-Powered Cyber Physical Systems
2023