Litcius/Paper detail

Online Anomaly Detection With Bandwidth Optimized Hierarchical Kernel Density Estimators

Mine Kerpiççi, Hüseyin Özkan, Süleyman S. Kozat

2020IEEE Transactions on Neural Networks and Learning Systems27 citationsDOI

Abstract

We propose a novel unsupervised anomaly detection algorithm that can work for sequential data from any complex distribution in a truly online framework with mathematically proven strong performance guarantees. First, a partitioning tree is constructed to generate a doubly exponentially large hierarchical class of observation space partitions, and every partition region trains an online kernel density estimator (KDE) with its own unique dynamical bandwidth. At each time, the proposed algorithm optimally combines the class estimators to sequentially produce the final density estimation. We mathematically prove that the proposed algorithm learns the optimal partition with kernel bandwidths that are optimized in both region-specific and time-varying manner. The estimated density is then compared with a data-adaptive threshold to detect anomalies. Overall, the computational complexity is only linear in both the tree depth and data length. In our experiments, we observe significant improvements in anomaly detection accuracy compared with the state-of-the-art techniques.

Topics & Concepts

EstimatorAnomaly detectionKernel density estimationPartition (number theory)AlgorithmComputer scienceKernel (algebra)Bandwidth (computing)Variable kernel density estimationDensity estimationMathematicsKernel methodArtificial intelligenceSupport vector machineStatisticsDiscrete mathematicsComputer networkCombinatoricsAnomaly Detection Techniques and ApplicationsData Stream Mining TechniquesNetwork Security and Intrusion Detection