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Software Defect Prediction Using Fuzzy Integral Fusion Based on GA-FM 被引量:4

Software Defect Prediction Using Fuzzy Integral Fusion Based on GA-FM
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摘要 The fuzzy measure and fuzzy integral are applied to the classification of software defects in this paper. The fuzzy measure of software attributes and attributes' sets are treated by genetic algorithm, and then software attributes are fused by the Choquet fuzzy integral algorithm. Finally, the class labels of soft- ware modules can be output. Experimental results have shown that there are interactions between characteristic attributes of software modules, and also proved that the fuzzy integral fusing method using Fuzzy Measure based on Genetic Algorithm (GA-FM) can significantly improve the accuracy for software defect prediction. The fuzzy measure and fuzzy integral are applied to the classification of software defects in this paper. The fuzzy measure of software attributes and attributes' sets are treated by genetic algorithm, and then software attributes are fused by the Choquet fuzzy integral algorithm. Finally, the class labels of soft- ware modules can be output. Experimental results have shown that there are interactions between characteristic attributes of software modules, and also proved that the fuzzy integral fusing method using Fuzzy Measure based on Genetic Algorithm (GA-FM) can significantly improve the accuracy for software defect prediction.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2014年第5期405-408,共4页 武汉大学学报(自然科学英文版)
基金 Supported by the Natural Science Foundation of Shandong Province(ZR2013FL034)
关键词 defect prediction genetic algorithm fuzzy measure fuzzy integral defect prediction genetic algorithm fuzzy measure fuzzy integral
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