ASIA unversity:Item 310904400/10666
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    題名: The Theorems and Applications of Combining the Multiple Classification Systems Based on Choquet Integral with Respect to L-Measure
    作者: Lin Wen-Chih
    貢獻者: Department of Computer Science and Information Engineering
    關鍵詞: support vector machine;multiple classification system;Choquet fuzzy integral;L-measure
    日期: 2010
    上傳時間: 2010-11-04 08:16:25 (UTC+0)
    出版者: Asia University
    摘要: In classification issues, support vector machine (SVM) has an excellent ability to solve the problems. However, the single classifier often gets in the local solution, when the classifier can’t build by a suitable training set or has the poor statistical estimation in training process. Multiple classification system is proposed to overcome these problems from the single classifier. The advantage of multiple classification system is it can gain the more effective classification information from each single classifier, and improve the classification performance via this information. The final step of multiple classification system is the combination or fusion of multiple classifiers, and chooses a proper method to combine or fuse the multiple classification system to make the final decision is the most important task. In this thesis, we try to build a multiple classification system via SVM classifiers, and assume that there are correlations between these classifiers, and applying the Choquet fuzzy integral fusion algorithm with respect to L-measure with a more sensitive fuzzy density we proposed to decrease the influences of the interaction between the classifiers. Experiment results show the Choquet fuzzy integral algorithm with respect to L-measure with the fuzzy density we proposed obtains the advancement in terms of the performance of classification.
    顯示於類別:[資訊工程學系] 博碩士論文

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