Fig. 1. Basic structure of tree structured fuzzy neural networks. 그림 1. 트리 구조의 퍼지 뉴럴 네트워크 기본 구조
Table 1. Average performance index(RMSE) and number of rule for training data. 표 1. 트레이닝 데이터에 대한 평균 오차 및 규칙의 수
Table 2. Average performance index(RMSE) and number of rule for testing data. 표 2. 테스팅 데이터에 대한 평균 오차 및 규칙의 수
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