Learning in the Presence of Concept Drift and Hidden Contexts (1996)
| Venue: | Machine Learning |
| Citations: | 135 - 0 self |
BibTeX
@INPROCEEDINGS{Widmer96learningin,
author = {Gerhard Widmer and M. Kubat},
title = {Learning in the Presence of Concept Drift and Hidden Contexts},
booktitle = {Machine Learning},
year = {1996},
pages = {69--101}
}
Years of Citing Articles
OpenURL
Abstract
. On-line learning in domains where the target concept depends on some hidden context poses serious problems. A changing context can induce changes in the target concepts, producing what is known as concept drift. We describe a family of learning algorithms that flexibly react to concept drift and can take advantage of situations where contexts reappear. The general approach underlying all these algorithms consists of (1) keeping only a window of currently trusted examples and hypotheses; (2) storing concept descriptions and re-using them when a previous context reappears; and (3) controlling both of these functions by a heuristic that constantly monitors the system's behavior. The paper reports on experiments that test the systems' performance under various conditions such as different levels of noise and different extent and rate of concept drift. Keywords: Incremental concept learning, on-line learning, context dependence, concept drift, forgetting 1. Introduction The work presen...







