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Engineering
Machine learning - powered intrusion detection system for agriculture 4.0: Securing the next generation of farming
Udaya Kumar Addanki, Ravi Babu Devareddi, Kishore Kumar Kamarajugadda, Movva Pavani,...
1964-1978
Abstract View : 485
Download :432
10.53894/ijirss.v8i1.4840
Engineering
The development of a model for the threat detection system with the use of machine learning and neural network methods
Olga Ussatova, Aidana Zhumabekova, Vladislav Karyukin, Eric T Matson, Nikita Ussatov
863-877
Abstract View : 2457
Download :1529
10.53894/ijirss.v7i3.2957
Engineering
Enhanced SVM model using PCA-autoencoder for DDoS-DNS attack detection in E-commerce networks
Kafayat Odunayo Tajudeen, Akeem Femi Kadri, Abidemi Emmanuel Adeniyi, Oluwasegun Julius...
2685-2701
Abstract View : 330
Download :131
10.53894/ijirss.v8i6.10195
Engineering
Evolving botnet defenses: A survey of machine learning approaches for identifying polymorphic and evasive malware
Sina Ahmadi
338-347
Abstract View : 324
Download :197
10.53894/ijirss.v8i2.5163
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