Superior neuro-fuzzy classification systems

被引:16
|
作者
Azar, Ahmad Taher [1 ]
El-Said, Shaimaa Ahmed [2 ]
机构
[1] MUST, Fac Engn, Giza, Egypt
[2] Zagazig Univ, Fac Engn, Elect & Commun Dept, Zagazig, Sharkia, Egypt
来源
关键词
Takagi-Sugeno-Kang (TSK) fuzzy inference system; Adaptive neuro-fuzzy inference system (ANFIS); Subtractive clustering; Scaled conjugate gradient; Linguistic hedge (LH); Feature selection (FS); BREAST-CANCER DIAGNOSIS; LYMPH-NODE STATUS; FEATURE-SELECTION; LINGUISTIC HEDGES; INFERENCE SYSTEMS; NETWORKS APPROACH; SURVIVAL ANALYSIS; PREDICTION; REGRESSION; FEATURES;
D O I
10.1007/s00521-012-1231-8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Although adaptive neuro-fuzzy inference system (ANFIS) has very fast convergence time, it is not suitable for classification problems because its outputs are not integer. In order to overcome this problem, this paper provides four adaptive neuro-fuzzy classifiers; adaptive neuro-fuzzy classifier with linguistic hedges (ANFCLH), linguistic hedges neuro-fuzzy classifier with selected features (LHNFCSF), conjugate gradient neuro-fuzzy classifier (SCGNFC) and speeding up scaled conjugate gradient neuro-fuzzy classifier (SSCGNFC). These classifiers are used to achieve very fast, simple and efficient breast cancer diagnosis. Both SCGNFC and SSCGNFC systems are optimized by scaled conjugate gradient algorithms. In these two systems, k-means algorithm is used to initialize the fuzzy rules. Also, Gaussian membership function is only used for fuzzy set descriptions, because of its simple derivative expressions. The other two systems are based on linguistic hedges (LH) tuned by scaled conjugate gradient. The classifiers performances are analyzed and compared by applying them to breast cancer diagnosis. The results indicated that SCGNFC, SSCGNFC and ANFCLH achieved the same accuracy of 97.6608 % in the training phase while LHNFCSF performed better than other methods in the training phase by achieving an accuracy of 100 %. In the testing phase, the overall accuracies of LHNFCSF achieved 97.8038 %, which is superior also to other methods. Applying LHNFCSF not only reduces the dimensions of the problem, but also improves classification performance by discarding redundant, noise-corrupted or unimportant features. Also, the k-means clustering algorithm was used to determine the membership functions of each feature. LHNFCSF achieved mean RMSE values of 0.0439 in the training phase after feature selection and gives the best testing recognition rates of 98.8304 and 98.0469 during training and testing phases, respectively using two clusters for each class. The results strongly suggest that ANFCLH can aid in the diagnosis of breast cancer and can be very helpful to the physicians for their final decision on their patients.
引用
收藏
页码:S55 / S72
页数:18
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