posted on 2016-04-07, 11:09authored byR. Cavalcante, Leandro Lei Minku, A. Oliveira
A time series is a sequence of observations col- lected over fixed sampling intervals. Several real-world dynamic processes can be modeled as a time series, such as stock price movements, exchange rates, temperatures, among others. As a special kind of data stream, a time series may present concept drift, which affects negatively time series analysis and forecasting. Explicit drift detection methods based on monitoring the time series features may provide a better understanding of how concepts evolve over time than methods based on monitoring the forecasting error of a base predictor. In this paper, we propose an online explicit drift detection method that identifies concept drifts in time series by monitoring time series features, called Feature Extraction for Explicit Concept Drift Detection (FEDD). Computational experiments showed that FEDD performed better than error-based approaches in several linear and nonlinear artificial time series with abrupt and gradual concept drifts.
History
Citation
Proceedings, 2016 International Joint Conference on Neural Networks (IJCNN 2016)
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Computer Science
Source
2016 International Joint Conference on Neural Networks (IJCNN 2016)
Version
AM (Accepted Manuscript)
Published in
Proceedings
Publisher
Institute of Electrical and Electronics Engineers (IEEE), United States