Title :
Resolving global and local drifts in data stream regression using evolving rule-based models
Author :
Shaker, Ahmed ; Lughofer, Edwin
Author_Institution :
Dept. of Math. & Comput. Sci., Philipps-Univ., Marburg, Germany
Abstract :
In this paper, we present new concepts for dealing with drifts in data streams during the run of on-line modeling processes for regression problems in the context of evolving fuzzy systems. Opposed to the nominal case based on conventional life-long learning, drifts are requiring a specific treatment for the modeling phase, as they refer to changes in the underlying data distribution or target concepts, which makes older learned concepts obsolete. Our approach comes with three new stages for an appropriate drift handling: 1.) drifts are not only detected, but also quantified with a new extended version of the Page-Hinkley test, which overcomes some instabilities during downtrends of the indicator; 2.) based on the current intensity quantification of the drift, the necessary degree of forgetting (weak to strong) is extracted (adaptive forgetting); 3.) the latter is achieved by two variants, a.) a single forgetting factor value, accounting for global drifts, and b.) a forgetting factor vector with different entries for separate regions of the feature space, accounting for local drifts. Forgetting factors are integrated into the learning scheme of both, the antecedent and consequent parts of the evolving fuzzy systems. The new approach will be evaluated on high-dimensional data streams, where the results will show that 1.) our adaptive forgetting strategy outperforms the usage of fixed forgetting factors throughout the learning process and 2.) forgetting in local regions may improve forgetting in global ones when drifts appear locally.
Keywords :
fuzzy systems; knowledge based systems; learning (artificial intelligence); regression analysis; Page-Hinkley test; adaptive forgetting strategy; current intensity quantification; data stream regression; drift handling; evolving fuzzy systems; fixed forgetting factors; forgetting factor value; forgetting factor vector; global drifts; high-dimensional data streams; learning process; learning scheme; life-long learning; local drifts; on-line modeling processes; regression problems; rule-based models; Accuracy; Adaptation models; Adaptive systems; Conferences; Data models; Fuzzy systems; Intelligent systems; adaptive forgetting; data stream regression; drift handling; evolving rule-based models; global and local drifts;
Conference_Titel :
Evolving and Adaptive Intelligent Systems (EAIS), 2013 IEEE Conference on
Conference_Location :
Singapore
DOI :
10.1109/EAIS.2013.6604099