An ensemble learning method based on deep neural network and group decision making

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摘要

Ensemble learning (EL) method which has high potential to improve the performance of single image classification model can be constructed in two steps: one is the generation of weak learners; the other is the combination of these learners. In this paper, an ensemble learning method based on deep neural network and group decision making (DNN-GDM-EL) is proposed, which uses deep neural networks (DNNs) to generate individual learners and exploits group decision making (GDM) to combine these learners. DNNs have demonstrated remarkable ability for image classification due to the powerful feature extraction ability. To ensure the diversity and accuracy, many different DNNs are used to generate individual learners. Furthermore, the individual learners are regarded as decision-makers (DMs), the categories are seen as alternatives, and the GDM aims to find an optimal alternative considering various suggestions of DMs. Specifically, a GDM model is established based on Bayesian theory which can reflect the complex relationship among the class of image, prior knowledge and output of DNN, and a GDM method based on TOPSIS is applied to solve this problem. Next, the index matrix consisted of DM's attributes is proposed, and an aggregation method based on 2-additive generalized Shapley AIVIFCA (2AGSAIVIFCA) operator is used to calculate the weights of DMs by fusing these matrixes. Further, state transition algorithm (STA) is applied to obtain the optimal weights of alternative's attributes. The effectiveness and superiority are verified in three public data sets and a real industrial problem by comparing DNN-GDM-EL method with other typical EL methods.

论文关键词:Ensemble learning,Deep neural network,Group decision making,Information fusion,Image classification

论文评审过程:Received 15 July 2021, Revised 16 November 2021, Accepted 20 November 2021, Available online 16 December 2021, Version of Record 4 January 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107801