Title :
Online and Non-Parametric Drift Detection Methods Based on Hoeffding’s Bounds
Author :
Frias-Blanco, Isvani ; del Campo-Avila, Jose ; Ramos-Jimenez, Gonzalo ; Morales-Bueno, Rafael ; Ortiz-Diaz, Agustin ; Caballero-Mota, Yaile
Author_Institution :
Regional Fac. of Granma, Univ. of Comput. Sci., Granma, Cuba
Abstract :
Incremental and online learning algorithms are more relevant in the data mining context because of the increasing necessity to process data streams. In this context, the target function may change overtime, an inherent problem of online learning (known as concept drift). In order to handle concept drift regardless of the learning model, we propose new methods to monitor the performance metrics measured during the learning process, to trigger drift signals when a significant variation has been detected. To monitor this performance, we apply some probability inequalities that assume only independent, univariate and bounded random variables to obtain theoretical guarantees for the detection of such distributional changes. Some common restrictions for the online change detection as well as relevant types of change (abrupt and gradual) are considered. Two main approaches are proposed, the first one involves moving averages and is more suitable to detect abrupt changes. The second one follows a widespread intuitive idea to deal with gradual changes using weighted moving averages. The simplicity of the proposed methods, together with the computational efficiency make them very advantageous. We use a Naive Bayes classifier and a Perceptron to evaluate the performance of the methods over synthetic and real data.
Keywords :
Bayes methods; learning (artificial intelligence); pattern classification; incremental learning algorithms; naive Bayes classifier; nonparametric drift detection methods; online change detection; online learning algorithms; probability inequalities; weighted moving averages; Data models; Detectors; Electronic mail; Monitoring; Random variables; Vectors; Concept drift; control chart; incremental learning; weighted moving average;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2014.2345382