TY - JOUR
T1 - Cascade AdaBoost Neural Network Classifier
T2 - Analysis and Design
AU - Gao, Mingjie
AU - Huang, Wei
AU - Wan, Shaohua
AU - Oh, Sung Kwun
AU - Pedrycz, Witold
N1 - Publisher Copyright:
© 2024 World Scientific. All rights reserved.
PY - 2024/5/15
Y1 - 2024/5/15
N2 - In this paper, we propose a cascade AdaBoost neural network (CANN) based on concepts and construct of AdaBoost neurons and cascade structure. Compared with AdaBoost, CANN can represent complex relationships between features. In CANN, representation learning is performed through AdaBoost, and the method of random selection features is utilized to encourage the diversity of AdaBoost neurons. Through the cascade structure, CANN has the context structure for complex feature representation. At the same time, in order to avoid the problem of feature disappearance, shortcut connection is used to add the previous information to the later nodes. Furthermore, particle swarm optimization (PSO) algorithm is utilized to optimize the structure of CANN, it can obtain the number of iterations to achieve better performance. Two types of CANN are proposed based - binary-classification CANN (BCANN) or multi-classification CANN (MCANN). The performance of CANN is evaluated with two kinds of data sets: machine learning data sets and atrial fibrillation data set. A comparative analysis illustrates that the proposed CANN leads to better performance than the models reported in the literature.
AB - In this paper, we propose a cascade AdaBoost neural network (CANN) based on concepts and construct of AdaBoost neurons and cascade structure. Compared with AdaBoost, CANN can represent complex relationships between features. In CANN, representation learning is performed through AdaBoost, and the method of random selection features is utilized to encourage the diversity of AdaBoost neurons. Through the cascade structure, CANN has the context structure for complex feature representation. At the same time, in order to avoid the problem of feature disappearance, shortcut connection is used to add the previous information to the later nodes. Furthermore, particle swarm optimization (PSO) algorithm is utilized to optimize the structure of CANN, it can obtain the number of iterations to achieve better performance. Two types of CANN are proposed based - binary-classification CANN (BCANN) or multi-classification CANN (MCANN). The performance of CANN is evaluated with two kinds of data sets: machine learning data sets and atrial fibrillation data set. A comparative analysis illustrates that the proposed CANN leads to better performance than the models reported in the literature.
KW - Cascade AdaBoost neural network (CANN)
KW - binary-classification cascade AdaBoost neural network (BCANN)
KW - multi-classification cascade AdaBoost neural network (MCANN)
KW - particle swarm optimization (PSO)
UR - http://www.scopus.com/inward/record.url?scp=85177066252&partnerID=8YFLogxK
U2 - 10.1142/S021812662450124X
DO - 10.1142/S021812662450124X
M3 - Article
AN - SCOPUS:85177066252
SN - 0218-1266
VL - 33
JO - Journal of Circuits, Systems and Computers
JF - Journal of Circuits, Systems and Computers
IS - 7
ER -