Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4942979 | Expert Systems with Applications | 2017 | 26 Pages |
Abstract
Concept drift detectors are online learning software that mostly attempt to estimate the drift positions in data streams in order to modify the base classifier after these changes and improve accuracy. This is very important in applications such as the detection of anomalies in TCP/IP traffic and/or frauds in financial transactions. Drift Detection Method (DDM) is a simple, efficient, well-known method whose performance is often impaired when the concepts are very long. This article proposes the Reactive Drift Detection Method (RDDM), which is based on DDM and, among other modifications, discards older instances of very long concepts aiming to detect drifts earlier, improving the final accuracy. Experiments run in MOA, using abrupt and gradual concept drift versions of different dataset generators and sizes (48 artificial datasets in total), as well as three real-world datasets, suggest RDDM beats the accuracy results of DDM, ECDD, and STEPD in most scenarios.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Roberto S.M. Barros, Danilo R.L. Cabral, Paulo M. Jr., Silas G.T.C. Santos,