The Optimization of Multi-classifier Ensemble Method Based on Dynamic Weighted Voting
Ping Yang,Jian Fang,Junting Xu,Guanghao Jin,QingZeng Song +4 more
TL;DR: This paper proposed a dynamic weighted voting method that dynamically selects models on different data sets, and integrates them according to their weights, thereby improving the classification accuracy.
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Abstract: Generally, on the same data set, different deep learning classification models will achieve different performances. The existing weighted voting method can combine the results of models, which can improve the performance of classification. On the other side, its classification accuracy is affected by the accuracy of all models. In this paper, we proposed a dynamic weighted voting method. Our method dynamically selects models on different data sets, and integrates them according to their weights, thereby improving the classification accuracy. We evaluated the methods on three data sets of CIFAR10, CIFAR100 and Existing, which increased the accuracy about 0.65%, 0.91%, and 0.78% respectively compared with the existing weighted voting method.
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