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-va...
This paper describes a methodology for detecting anomalies from sequentially observed and potentiall...
AD-DMKDE is a novel anomaly detection method that combines density matrices (a mathematical formalis...
We show that anomaly detection can be interpreted as a binary classifi-cation problem. Using this in...
We propose a novel unsupervised anomaly detection algorithm that can work for sequential data from a...
This paper presents an unsupervised, density-based approach to anomaly detection. The purpose is to ...
Anomaly detection is an important aspect of data analysis. Kernel methods have been shown to exhibit...
We propose a high-performance algorithm for sequential anomaly detection. The proposed algorithm seq...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Electrical an...
International audienceReal-time detection of anomalies in streaming data is receiving increasing att...
While the network anomaly detection is essential in network operations and management, it becomes fu...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
Anomalies are patterns in data or events which are unlikely to appear under normal conditions. It is...
Anomaly Detection is an important aspect of many application domains. It refers to the problem of fi...
Abstract—Detecting anomalies during the operation of a network is an important aspect of network man...
This paper describes a methodology for detecting anomalies from sequentially observed and potentiall...
AD-DMKDE is a novel anomaly detection method that combines density matrices (a mathematical formalis...
We show that anomaly detection can be interpreted as a binary classifi-cation problem. Using this in...
We propose a novel unsupervised anomaly detection algorithm that can work for sequential data from a...
This paper presents an unsupervised, density-based approach to anomaly detection. The purpose is to ...
Anomaly detection is an important aspect of data analysis. Kernel methods have been shown to exhibit...
We propose a high-performance algorithm for sequential anomaly detection. The proposed algorithm seq...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Electrical an...
International audienceReal-time detection of anomalies in streaming data is receiving increasing att...
While the network anomaly detection is essential in network operations and management, it becomes fu...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
Anomalies are patterns in data or events which are unlikely to appear under normal conditions. It is...
Anomaly Detection is an important aspect of many application domains. It refers to the problem of fi...
Abstract—Detecting anomalies during the operation of a network is an important aspect of network man...
This paper describes a methodology for detecting anomalies from sequentially observed and potentiall...
AD-DMKDE is a novel anomaly detection method that combines density matrices (a mathematical formalis...
We show that anomaly detection can be interpreted as a binary classifi-cation problem. Using this in...