TY - JOUR
T1 - Deep abstraction and weighted feature selection for Wi-Fi impersonation detection
AU - Aminanto, Muhamad Erza
AU - Choi, Rakyong
AU - Tanuwidjaja, Harry Chandra
AU - Yoo, Paul D.
AU - Kim, Kwangjo
N1 - Funding Information:
Manuscript received March 16, 2017; revised July 17, 2017 and September 19, 2017; accepted September 27, 2017. Date of publication October 13, 2017; date of current version December 19, 2017. The work of M. E. Aminanto, R. Choi, and K. Kim was supported in part by the Institute for Information & communications Technology Promotion through the Korea Government (MSIT) (2013-0-00396, Research on Communication Technology using Bio-Inspired Algorithm and 2017-0-00555, Towards Provable-secure Multi-party Authenticated Key Exchange Protocol based on Lattices in a Quantum World) and in part by the National Research Foundation of Korea through the Korea Government (MSIT) under Grant NRF-2015R1A-2A2A01006812. The associate editor coordinating the review of this manuscript and approving it for publication was Dr. Tansu Alpcan. (Corresponding author: Muhamad Erza Aminanto.) M. E. Aminanto, R. Choi, H. C. Tanuwidjaja, and K. Kim are with the School of Computing, Korea Advanced Institute of Science and Technology, Daejeon 34141, South Korea (e-mail: [email protected]; [email protected]; [email protected]; [email protected]).
Publisher Copyright:
© 2017 IEEE.
PY - 2017/10/12
Y1 - 2017/10/12
N2 - The recent advances in mobile technologies have resulted in Internet of Things (IoT)-enabled devices becoming more pervasive and integrated into our daily lives. The security challenges that need to be overcome mainly stem from the open nature of a wireless medium, such as a Wi-Fi network. An impersonation attack is an attack in which an adversary is disguised as a legitimate party in a system or communications protocol. The connected devices are pervasive, generating high-dimensional data on a large scale, which complicates simultaneous detections. Feature learning, however, can circumvent the potential problems that could be caused by the large-volume nature of network data. This paper thus proposes a novel deep-feature extraction and selection (D-FES), which combines stacked feature extraction and weighted feature selection. The stacked autoencoding is capable of providing representations that are more meaningful by reconstructing the relevant information from its raw inputs. We then combine this with modified weighted feature selection inspired by an existing shallow-structured machine learner. We finally demonstrate the ability of the condensed set of features to reduce the bias of a machine learner model as well as the computational complexity. Our experimental results on a well-referenced Wi-Fi network benchmark data set, namely, the Aegean Wi-Fi Intrusion data set, prove the usefulness and the utility of the proposed D-FES by achieving a detection accuracy of 99.918% and a false alarm rate of 0.012%, which is the most accurate detection of impersonation attacks reported in the literature.
AB - The recent advances in mobile technologies have resulted in Internet of Things (IoT)-enabled devices becoming more pervasive and integrated into our daily lives. The security challenges that need to be overcome mainly stem from the open nature of a wireless medium, such as a Wi-Fi network. An impersonation attack is an attack in which an adversary is disguised as a legitimate party in a system or communications protocol. The connected devices are pervasive, generating high-dimensional data on a large scale, which complicates simultaneous detections. Feature learning, however, can circumvent the potential problems that could be caused by the large-volume nature of network data. This paper thus proposes a novel deep-feature extraction and selection (D-FES), which combines stacked feature extraction and weighted feature selection. The stacked autoencoding is capable of providing representations that are more meaningful by reconstructing the relevant information from its raw inputs. We then combine this with modified weighted feature selection inspired by an existing shallow-structured machine learner. We finally demonstrate the ability of the condensed set of features to reduce the bias of a machine learner model as well as the computational complexity. Our experimental results on a well-referenced Wi-Fi network benchmark data set, namely, the Aegean Wi-Fi Intrusion data set, prove the usefulness and the utility of the proposed D-FES by achieving a detection accuracy of 99.918% and a false alarm rate of 0.012%, which is the most accurate detection of impersonation attacks reported in the literature.
KW - Deep learning
KW - Feature extraction
KW - Impersonation attack
KW - Intrusion detection system
KW - Large-scale Wi-Fi networks
KW - Stacked autoencoder
UR - http://www.scopus.com/inward/record.url?scp=85045420000&partnerID=8YFLogxK
U2 - 10.1109/TIFS.2017.2762828
DO - 10.1109/TIFS.2017.2762828
M3 - Article
AN - SCOPUS:85045420000
SN - 1556-6013
VL - 13
SP - 621
EP - 636
JO - IEEE Transactions on Information Forensics and Security
JF - IEEE Transactions on Information Forensics and Security
IS - 3
ER -