Authors
Burak Cetin, Alina Lazar, Jinoh Kim, Alex Sim, Kesheng Wu
Publication date
2019/12/9
Conference
2019 IEEE International Conference on Big Data (Big Data)
Pages
6004-6006
Publisher
IEEE
Description
Wi-Fi has become the wireless networking standard that allows short- to medium-range device to connect without wires. For the last 20 year, the Wi-Fi technology has so pervasive that most devices in use today are mobile and connect to the internet through Wi-Fi. Unlike wired network, a wireless network lacks a clear boundary, which leads to significant Wi-Fi network security concerns, especially because the current security measures are prone to several types of intrusion. To address this problem, machine learning and deep learning methods have been successfully developed to identify network attacks. However, collecting data to develop models is expensive and raises privacy concerns. The goal of this paper is to evaluate a federated learning approach that would alleviate such privacy concerns. This initial work on intrusion detection is performed in a simulated environment. Once proven feasible, this process …
Total citations
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Scholar articles
B Cetin, A Lazar, J Kim, A Sim, K Wu - 2019 IEEE International Conference on Big Data (Big …, 2019