A dynamic ensemble learning algorithm for neural networks

被引:0
|
作者
Kazi Md. Rokibul Alam
Nazmul Siddique
Hojjat Adeli
机构
[1] Khulna University of Engineering and Technology,Department of Computer Science and Engineering
[2] Ulster University,School of Computing, Engineering and Intelligent Systems
[3] The Ohio State University,Departments of Neuroscience, Neurology, and Biomedical Informatics
来源
关键词
Neural network ensemble; Backpropagation algorithm; Negative correlation learning; Constructive algorithms; Pruning algorithms;
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学科分类号
摘要
This paper presents a novel dynamic ensemble learning (DEL) algorithm for designing ensemble of neural networks (NNs). DEL algorithm determines the size of ensemble, the number of individual NNs employing a constructive strategy, the number of hidden nodes of individual NNs employing a constructive–pruning strategy, and different training samples for individual NN’s learning. For diversity, negative correlation learning has been introduced and also variation of training samples has been made for individual NNs that provide better learning from the whole training samples. The major benefits of the proposed DEL compared to existing ensemble algorithms are (1) automatic design of ensemble; (2) maintaining accuracy and diversity of NNs at the same time; and (3) minimum number of parameters to be defined by user. DEL algorithm is applied to a set of real-world classification problems such as the cancer, diabetes, heart disease, thyroid, credit card, glass, gene, horse, letter recognition, mushroom, and soybean datasets. It has been confirmed by experimental results that DEL produces dynamic NN ensembles of appropriate architecture and diversity that demonstrate good generalization ability.
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页码:8675 / 8690
页数:15
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