作者
Antonio Gonzalez Pastana Lobato, Martin Andreoni Lopez, Igor Jochem Sanz, Alvaro A Cardenas, Otto Carlos MB Duarte, Guy Pujolle
发表日期
2018/5/20
研讨会论文
2018 IEEE international conference on communications (ICC)
页码范围
1-6
出版商
IEEE
简介
Attackers create new threats and constantly change their behavior to mislead security systems. In this paper, we propose an adaptive threat detection architecture that trains its detection models in real time. The major contributions of the proposed architecture are: i) gather data about zero-day attacks and attacker behavior using honeypots in the network; ii) process data in real time and achieve high processing throughput through detection schemes implemented with stream processing technology; iii) use of two real datasets to evaluate our detection schemes, the first from a major network operator in Brazil and the other created in our lab; iv) design and development of adaptive detection schemes including both online trained supervised classification schemes that update their parameters in real time and learn zero-day threats from the honeypots, and online trained unsupervised anomaly detection schemes that …
引用总数
201720182019202020212022202320241261871383
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AGP Lobato, MA Lopez, IJ Sanz, AA Cardenas… - … IEEE international conference on communications (ICC …, 2018