*KCI등재*

*학술저널*

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*Deep Learning 기반의 DGA 개발에 대한 연구*

A Study on the Development of DGA based on Deep Learning

- 박재균(Jae Gyun Park) 최은수(Eun Soo Choi) 김병준(Byung June Kim) 장범(Pan Zhang)
- 한국인공지능학회
- 인공지능연구
- Vol.5 No. 1
- 등재여부 : KCI등재후보
- 2017.06
- 18 - 28 (11 pages)

Recently, there are many companies that use systems based on artificial intelligence. The accuracy of artificial intelligence depends on the amount of learning data and the appropriate algorithm. However, it is not easy to obtain learning data with a large number of entity. Less data set have large generalization errors due to overfitting. In order to minimize this generalization error, this study proposed DGA which can expect relatively high accuracy even though data with a less data set is applied to machine learning based genetic algorithm to deep learning based dropout. The idea of this paper is to determine the active state of the nodes. Using Gradient about loss function, A new fitness function is defined. Proposed Algorithm DGA is supplementing stochastic inconsistency about Dropout. Also DGA solved problem by the complexity of the fitness function and expression range of the model about Genetic Algorithm As a result of experiments using MNIST data proposed algorithm accuracy is 75.3%. Using only Dropout algorithm accuracy is 41.4%. It is shown that DGA is better than using only dropout.

1. 서론

2. Dropout Genetic Algorithm

3. 실험 및 결과

4. Conclusion

References