EigenEvent: An Algorithm for Event Detection from Complex Data Streams in Syndromic Surveillance

06/13/2014
by   Hadi Fanaee-T, et al.
0

Syndromic surveillance systems continuously monitor multiple pre-diagnostic daily streams of indicators from different regions with the aim of early detection of disease outbreaks. The main objective of these systems is to detect outbreaks hours or days before the clinical and laboratory confirmation. The type of data that is being generated via these systems is usually multivariate and seasonal with spatial and temporal dimensions. The algorithm What's Strange About Recent Events (WSARE) is the state-of-the-art method for such problems. It exhaustively searches for contrast sets in the multivariate data and signals an alarm when find statistically significant rules. This bottom-up approach presents a much lower detection delay comparing the existing top-down approaches. However, WSARE is very sensitive to the small-scale changes and subsequently comes with a relatively high rate of false alarms. We propose a new approach called EigenEvent that is neither fully top-down nor bottom-up. In this method, we instead of top-down or bottom-up search, track changes in data correlation structure via eigenspace techniques. This new methodology enables us to detect both overall changes (via eigenvalue) and dimension-level changes (via eigenvectors). Experimental results on hundred sets of benchmark data reveals that EigenEvent presents a better overall performance comparing state-of-the-art, in particular in terms of the false alarm rate.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/26/2021

A Real Time Monitoring Approach for Bivariate Event Data

Early detection of changes in the frequency of events is an important ta...
research
06/13/2014

Eigenspace Method for Spatiotemporal Hotspot Detection

Hotspot detection aims at identifying subgroups in the observations that...
research
03/13/2019

Lost Silence: An emergency response early detection service through continuous processing of telecommunication data streams

Early detection of significant traumatic events, e.g. a terrorist attack...
research
07/21/2010

Video Event Recognition for Surveillance Applications (VERSA)

VERSA provides a general-purpose framework for defining and recognizing ...
research
05/22/2018

An integer-valued time series model for multivariate surveillance

In recent days different types of surveillance data are becoming availab...
research
12/19/2022

Using Microbenchmark Suites to Detect Application Performance Changes

Software performance changes are costly and often hard to detect pre-rel...
research
03/30/2023

An evaluation framework for comparing epidemic intelligence systems

In the context of Epidemic Intelligence, many Event-Based Surveillance (...

Please sign up or login with your details

Forgot password? Click here to reset