Fr. 77.00

Financial Risk Forecasting Using Neuro-Fuzzy Approach - Forecasting under conditions of uncertainty

English, German · Paperback / Softback

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Description

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The dissertation is devoted to the decision of the problems directed to the development of methods, models and algorithms for solving forecasting problems of financial risks under conditions of uncertainty, and for a complex of the problems related with it. These are fuzzy mathematics operations, the solving of linear algebraic equations system with fuzzy numbers (variables) in the neural network logic basis. This allows essentially raising the level of support of decision-making in the conditions of uncertainty and, as consequence from this, control efficiency. As a result of this, the mechanism of fuzzy conclusion in neural network logic basis is studied, namely it was suggested to use a connectional neural network, realizing the technique of fuzzy conclusion particularly, and fuzzy modeling in general. The problem of optimal borrower selection is realized in the program shell of the MATLAB/Fuzzy Sets Toolbox on current data.

About the author










Aygun Nusrat Alasgarova is a computer engineer who trained at the Khazar University (Azerbaijan). Her research interests lie in the areas of fuzzy logic, neural networks, forecasting and decision making process of the bank¿s investment policy.

Product details

Authors Aygun Nusrat Alasgarova
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 26.10.2011
 
EAN 9783845419411
ISBN 978-3-8454-1941-1
No. of pages 124
Subject Guides > Law, job, finance > Money, bank, stock market

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