Overview

The vast volume of financial data that exists and the globalisation of financial markets create new challenges for researchers and practitioners in economics and finance. Computational data analysis techniques can contribute significantly within this context, by providing a rigorous analytic framework for decision-making and support, in areas such as financial times series analysis and forecasting, risk assessment, trading, asset management, and pricing. The aim of this edited volume is to present, in a unified context, some recent advances in the field, covering the theory, the methodologies, and the applications of computational data analysis methods in economics and finance. The volume consists of papers published in the fifth volume of the Journal of "Computational Optimization in Economics & Finance" (published by Nova Science Publishers). The contents of this volume cover a wide range of topics, including among others stock market applications, corporate finance, corporate performance, as well as macroeconomic issues.

ISBN-13

9781634639576

ISBN-10

163463957X

Weight

1.41 Pounds

Dimensions

7.25 x 0.75 x 10.50 In

List Price

$170.00

Format

Hardcover

Language

English

Pages

240 pages

Publisher

Nova Science Pub Inc

Published On

2015-01-01



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