UAV Anomaly Detection Using Active Learning and Improved S3VM Model

Author(s):  
Dawei Pan ◽  
Longqiang Nie ◽  
Weixin Kang ◽  
Zhe Song
2012 ◽  
Author(s):  
David J. Miller ◽  
Aditya Natraj ◽  
Ryler Hockenbury ◽  
Katherine Dunn ◽  
Michael Sheffler ◽  
...  

2021 ◽  
Author(s):  
Christopher Nixon ◽  
Mohamed Sedky ◽  
Mohamed Hassan

<div>Machine learning based intrusion detection systems monitor network data streams for cyber attacks. Challenges in this space include detection of unknown attacks, adaptation to changes in the data stream such as changes in underlying behaviour, the human cost of labeling data to retrain the machine learning model and the processing and memory constraints of a real-time data stream. Failure to manage the aforementioned factors could result in missed attacks, degraded detection performance, unnecessary expense or delayed detection times. This research evaluated autoencoders, a type of feed-forward neural network, as online anomaly detectors for network data streams. The autoencoder method was combined with an active learning strategy to further reduce labeling cost and speed up training and adaptation times, resulting in a proposed Split Active Learning Anomaly Detector (SALAD) method. The proposed method was evaluated with the NSL-KDD, KDD Cup 1999, and UNSW-NB15 data sets, using the scikit-multiflow framework. Results demonstrated that a novel Adaptive Anomaly Threshold method, combined with a split active learning strategy offered superior anomaly detection performance with a labeling budget of just 20%, significantly reducing the required human expertise to annotate the network data. Processing times of the autoencoder anomaly detector method were demonstrated to be significantly lower than traditional online learning methods, allowing for greatly improved responsiveness to attacks occurring in real time. Future research areas are applying unsupervised threshold methods, multi-label classification, sample annotation, and hybrid intrusion detection.</div>


Author(s):  
Lorenzo Perini ◽  
Vincent Vercruyssen ◽  
Jesse Davis

Estimating the proportion of positive examples (i.e., the class prior) from positive and unlabeled (PU) data is an important task that facilitates learning a classifier from such data. In this paper, we explore how to tackle this problem when the observed labels were acquired via active learning. This introduces the challenge that the observed labels were not selected completely at random, which is the primary assumption underpinning existing approaches to estimating the class prior from PU data. We analyze this new setting and design an algorithm that is able to estimate the class prior for a given active learning strategy. Empirically, we show that our approach accurately recovers the true class prior on a benchmark of anomaly detection datasets and that it does so more accurately than existing methods.


2020 ◽  
Vol 134 ◽  
pp. 104869
Author(s):  
Stefania Russo ◽  
Moritz Lürig ◽  
Wenjin Hao ◽  
Blake Matthews ◽  
Kris Villez

2021 ◽  
Author(s):  
Nikunj Oza ◽  
Kevin Bradner ◽  
David L. Iverson ◽  
Adwait Sahasrabhojanee ◽  
Shawn R. Wolfe

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