An Evaluation Method for Generalization Errors of CNN using Training Data 


Vol. 48,  No. 3, pp. 284-292, Mar.  2021
10.5626/JOK.2021.48.3.284


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  Abstract

Even with high-performance CNNs, generalization errors, which are the errors on test datasets that are expected in the real world, are often high. This generalization error must be reduced so that the model can maintain its learned performance in the real world. This paper defines a response set as a neuron set that is frequently activated for each model class learned from the training dataset with high data diversity. Also, the differences in generalization errors due to the data diversity of the test dataset are considered. The difference is defined as a relative generalization error. In the current work, an evaluation method for CNN generalization error using only the training dataset is proposed by using the relationship between the CNN class response set and the relative generalization error. The case study confirms that the response set ratio is related to the relative generalization error and demonstrates the effectiveness of the evaluation method for generalization errors of CNN using training data.


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  Cite this article

[IEEE Style]

H. H. Lee and H. S. Chae, "An Evaluation Method for Generalization Errors of CNN using Training Data," Journal of KIISE, JOK, vol. 48, no. 3, pp. 284-292, 2021. DOI: 10.5626/JOK.2021.48.3.284.


[ACM Style]

Hyeon Ho Lee and Heung Seok Chae. 2021. An Evaluation Method for Generalization Errors of CNN using Training Data. Journal of KIISE, JOK, 48, 3, (2021), 284-292. DOI: 10.5626/JOK.2021.48.3.284.


[KCI Style]

이현호, 채흥석, "학습 데이터를 이용한 CNN의 일반화 오류 평가 방법," 한국정보과학회 논문지, 제48권, 제3호, 284~292쪽, 2021. DOI: 10.5626/JOK.2021.48.3.284.


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