Bio-Inspired Credit Risk Analysis

Computational Intelligence with Support Vector Machines

Bio-Inspired Credit Risk Analysis

Computational Intelligence with Support Vector Machines

106,99 €*

in Vorbereitung

Credit risk analysis is one of the most important topics in the field of financial risk management. Due to recent financial crises and regulatory concern of Basel II, credit risk analysis has been the major focus of financial and banking industry. Especially for some credit-granting institutions such as commercial banks and credit companies, the ability to discriminate good customers from bad ones is crucial. The need for reliable quantitative models that predict defaults accurately is imperative so that the interested parties can take either preventive or corrective action. Hence credit risk analysis becomes very important for sustainability and profit of enterprises. In such backgrounds, this book tries to integrate recent emerging support vector machines and other computational intelligence techniques that replicate the principles of bio-inspired information processing to create some innovative methodologies for credit risk analysis and to provide decision support information for interested parties.



Credit Risk Analysis with Computational Intelligence: An Analytical Survey
Credit Risk Analysis with Computational Intelligence: A Review
Unitary SVM Models with Optimal Parameter Selection for Credit Risk Evaluation
Credit Risk Assessment Using a Nearest-Point-Algorithm-based SVM with Design of Experiment for Parameter Selection
Credit Risk Evaluation Using SVM with Direct Search for Parameter Selection
Hybridizing SVM and Other Computational Intelligent Techniques for Credit Risk Analysis
Hybridizing Rough Sets and SVM for Credit Risk Evaluation
A Least Squares Fuzzy SVM Approach to Credit Risk Assessment
Evaluating Credit Risk with a Bilateral-Weighted Fuzzy SVM Model
Evolving Least Squares SVM for Credit Risk Analysis
SVM Ensemble Learning for Credit Risk Analysis
Credit Risk Evaluation Using a Multistage SVM Ensemble Learning Approach
Credit Risk Analysis with a SVM-based Metamodeling Ensemble Approach
An Evolutionary-Programming-Based Knowledge Ensemble Model for Business Credit Risk Analysis
An Intelligent-Agent-Based Multicriteria Fuzzy Group Decision Making Model for Credit Risk Analysis.
ISBN 978-3-642-09655-6
Artikelnummer 9783642096556
Medientyp Buch
Auflage Softcover reprint of hardcover 1st ed. 2008
Copyrightjahr 2010
Verlag Springer, Berlin
Umfang XVI, 244 Seiten
Abbildungen XVI, 244 p.
Sprache Englisch