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Applying Principal Component Analysis, Genetic Algorithm and Support Vector Machine for Risk Forecasting of General Contracting
Journal Title Journal of Computers
Journal Abbreviation jcp
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
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Title Applying Principal Component Analysis, Genetic Algorithm and Support Vector Machine for Risk Forecasting of General Contracting
Authors Shi, Huawang
Abstract In order to evaluate and forecast the general contracting risk, a multi-resolution approach for the price determination of real estate was present in this paper. Real samples have been classified using the novel multi-classifier, namely, support vector machine among which genetic algorithm (GA) is used to determine free parameters of support vector machine. Effects of different sampling approach, kernel functions, and parameter settings used for SVM classification are thoroughly evaluated and discussed. The experimental results indicate that the SVMG method can achieve greater accuracy than grey model, artificial neural network under the circumstance of small training data. It was also found that the predictive ability of the SVM outperformed those of some traditional pattern recognition methods for the data set used here.
Publisher ACADEMY PUBLISHER
Date 2012-01-01
Source Journal of Computers Vol 7, No 1 (2012): Special Issue: Parallel Algorithms, Scheduling and Architectures
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