Quarter-Sphere SVM: Attribute and Spatio-Temporal correlations based Outlier & Event Detection in wireless sensor networks

Support-Vector Machines (SVM) have received a great interest in the machine learning community since their introduction, especially in Outlier Detection in Wireless Sensor Networks (WSN). The Quarter-Sphere formulation of One-Class SVM (QS-SVM), extends the main SVM ideas from supervised to unsupervised learning algorithms. The QS-SVM formulation is based only on Spatio-Temporal correlations between the sensor nodes (hence the name Spatio-Temporal Quarter-Sphere SVM, ST-QS-SVM). Thus, it has a non-ideal performance. This work presents a new One-Class Quarter-Sphere SVM formulation based on the novel concept of Attribute Correlations between the sensor nodes, hence the name, Spatio-Temporal-Attribute Quarter-sphere SVM (STA-QS-SVM) formulation. Online and partially online approaches to Outlier Detection in WSNs have been presented using this formulation. The results indicate a significant increase in the Outlier Detection rates and a remarkable reduction in the False Positive rates over the previous formulation (ST-QS-SVM). The results of this novel technique also suggest that the partially online approach is as efficient as the online approach, thereby conserving significant computational and communication complexity. Moreover very high Event Detection rates have been reported for STA-QS-SVM, which have not been reported by ST-QS-SVM.

[1]  Radford M. Neal Pattern Recognition and Machine Learning , 2007, Technometrics.

[2]  Nirvana Meratnia,et al.  Hyperellipsoidal SVM-Based Outlier Detection Technique for Geosensor Networks , 2009, GSN.

[3]  Nirvana Meratnia,et al.  Outlier Detection Techniques for Wireless Sensor Networks: A Survey , 2008, IEEE Communications Surveys & Tutorials.

[4]  Christopher M. Bishop,et al.  Pattern Recognition and Machine Learning (Information Science and Statistics) , 2006 .

[5]  Marimuthu Palaniswami,et al.  Distributed training of multiclass conic-segmentation support vector machines on communication constrained networks , 2010, 2010 Sixth International Conference on Intelligent Sensors, Sensor Networks and Information Processing.

[6]  Zhang Yang,et al.  An online outlier detection technique for wireless sensor networks using unsupervised quarter-sphere support vector machine , 2008, 2008 International Conference on Intelligent Sensors, Sensor Networks and Information Processing.

[7]  Marimuthu Palaniswami,et al.  Centered Hyperspherical and Hyperellipsoidal One-Class Support Vector Machines for Anomaly Detection in Sensor Networks , 2010, IEEE Transactions on Information Forensics and Security.

[8]  Prasant Misra,et al.  Safety assurance and rescue communication systems in high-stress environments: A mining case study , 2010, IEEE Communications Magazine.

[9]  Marimuthu Palaniswami,et al.  Elliptical anomalies in wireless sensor networks , 2009, TOSN.

[10]  Nirvana Meratnia,et al.  Adaptive and Online One-Class Support Vector Machine-Based Outlier Detection Techniques for Wireless Sensor Networks , 2009, 2009 International Conference on Advanced Information Networking and Applications Workshops.

[11]  Miguel Lázaro-Gredilla,et al.  Adaptive One-Class Support Vector Machine , 2011, IEEE Transactions on Signal Processing.

[12]  Yang Zhang,et al.  Observing the unobservable : distributed online outlier detection in wireless sensor networks , 2010 .

[13]  Marimuthu Palaniswami,et al.  Quarter Sphere Based Distributed Anomaly Detection in Wireless Sensor Networks , 2007, 2007 IEEE International Conference on Communications.