Real Time Anomaly Detection And Categorisation

09/14/2020
by   Alexander T M Fisch, et al.
0

The ability to quickly and accurately detect anomalous structure within data sequences is an inference challenge of growing importance. This work extends recently proposed post-hoc (offline) anomaly detection methodology to the sequential setting. The resultant procedure is capable of real-time analysis and categorisation between baseline and two forms of anomalous structure: point and collective anomalies. Various theoretical properties of the procedure are derived. These, together with an extensive simulation study, highlight that the average run length to false alarm and the average detection delay of the proposed online algorithm are very close to that of the offline version. Experiments on simulated and real data are provided to demonstrate the benefits of the proposed method.

READ FULL TEXT
research
10/19/2020

anomaly : Detection of Anomalous Structure in Time Series Data

One of the contemporary challenges in anomaly detection is the ability t...
research
10/19/2020

Online network monitoring

The application of network analysis has found great success in a wide va...
research
07/28/2020

Quickest Detection of Moving Anomalies in Sensor Networks

The problem of sequentially detecting a moving anomaly which affects dif...
research
10/04/2019

AKM^2D : An Adaptive Framework for Online Sensing and Anomaly Quantification

In point-based sensing systems such as coordinate measuring machines (CM...
research
10/09/2017

Lagged Exact Bayesian Online Changepoint Detection

Identifying changes in the generative process of sequential data, known ...
research
07/31/2023

General Anomaly Detection of Underwater Gliders Validated by Large-scale Deployment Dataset

This paper employs an anomaly detection algorithm to assess the normal o...
research
10/18/2018

Unsupervised Anomalous Data Space Specification

Computer algorithms are written with the intent that when run they perfo...

Please sign up or login with your details

Forgot password? Click here to reset