Time series forecast modeling of vulnerabilities in the android operating system using ARIMA and deep learning methods

Sustainable Computing: Informatics and Systems - Tập 30 - Trang 100515 - 2021
Kerem Gencer1, Fatih Başçiftçi2
1Karamanoglu Mehmetbey University, Vocational School of Technical Sciences, Department of Computer Programming, Karaman, Turkey
2Selcuk University, Faculty of Technology, Department of Computer Engineering, Konya, Turkey

Tài liệu tham khảo

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