Title
A Density-Based Backward Approach To Isolate Rare Events In Large-Scale Applications
Abstract
While significant work in data mining has been dedicated to the detection of single outliers in the data, less research has approached the problem of isolating a group of outliers, i.e. rare events representing micro-clusters of less - or significantly less - than 1% of the whole dataset. This research issue is critical for example in medical applications. The problem is difficult to handle as it lies at the frontier between outlier detection and clustering and distinguishes by a clear challenge to avoid missing true positives. We address this challenge and propose a novel two-stage framework, based on a backward approach, to isolate abnormal groups of events in large datasets. The key of our backward approach is to first identify the core of the dense regions and then gradually augments them based on a density-driven condition. The framework outputs a small subset of the dataset containing both rare events and outliers. We tested our framework on a biomedical application to find micro-clusters of pathological cells. The comparison against two common clustering (DBSCAN) and outlier detection (LOF) algorithms show that our approach is a very efficient alternative to the detection of rare events - generally a recall of 100% and a higher precision, positively correlated wih the size of the rare event - while also providing a O(N) solution to the existing algorithms dominated by a O(N-2) complexity.
Year
DOI
Venue
2013
10.1007/978-3-642-40897-7_17
DISCOVERY SCIENCE
Keywords
Field
DocType
rare events, outlier/anomaly detection, large scale, k-means
Anomaly detection,k-means clustering,Data mining,Computer science,Outlier,Artificial intelligence,Cluster analysis,True positive rate,Machine learning,DBSCAN,Rare events
Conference
Volume
ISSN
Citations 
8140
0302-9743
0
PageRank 
References 
Authors
0.34
19
5
Name
Order
Citations
PageRank
Enikö Székely120.73
Pascal Poncelet2768126.47
Florent Masseglia340843.08
Maguelonne Teisseire4557129.00
Renaud Cezar500.34