CLCNet: Rethinking of Ensemble Modeling with Classification Confidence Network

19 May 2022  ·  Yao-Ching Yu, Shi-Jinn Horng ·

In this paper, we propose a Classification Confidence Network (CLCNet) that can determine whether the classification model classifies input samples correctly. It can take a classification result in the form of vector in any dimension, and return a confidence score as output, which represents the probability of an instance being classified correctly. We can utilize CLCNet in a simple cascade structure system consisting of several SOTA (state-of-the-art) classification models, and our experiments show that the system can achieve the following advantages: 1. The system can customize the average computation requirement (FLOPs) per image while inference. 2. Under the same computation requirement, the performance of the system can exceed any model that has identical structure with the model in the system, but different in size. In fact, this is a new type of ensemble modeling. Like general ensemble modeling, it can achieve higher performance than single classification model, yet our system requires much less computation than general ensemble modeling. We have uploaded our code to a github repository: https://github.com/yaoching0/CLCNet-Rethinking-of-Ensemble-Modeling.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Classification ImageNet CLCNet (S:ViT+D:VOLO-D3) (retrain) Top 1 Accuracy 86.46% # 141
GFLOPs 57.46 # 432
Image Classification ImageNet CLCNet (S:ConvNeXt-L+D:EffNet-B7) (retrain) Top 1 Accuracy 86.42% # 142
GFLOPs 45.43 # 416
Image Classification ImageNet CLCNet (S:ViT+D:EffNet-B7) (retrain) Top 1 Accuracy 86.61% # 131
GFLOPs 51.93 # 427
Image Classification ImageNet CLCNet (S:D1+D:D5) Top 1 Accuracy 85.28% # 236
GFLOPs 47.43 # 420
Image Classification ImageNet CLCNet (S:B4+D:B7) Top 1 Accuracy 83.88% # 357
GFLOPs 18.58 # 360

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