DocumentCode
3849802
Title
Self-Adaptive Induction of Regression Trees
Author
Raul Fidalgo-Merino;Marlon Nunez
Author_Institution
Universidad de Má
Volume
33
Issue
8
fYear
2011
Firstpage
1659
Lastpage
1672
Abstract
A new algorithm for incremental construction of binary regression trees is presented. This algorithm, called SAIRT, adapts the induced model when facing data streams involving unknown dynamics, like gradual and abrupt function drift, changes in certain regions of the function, noise, and virtual drift. It also handles both symbolic and numeric attributes. The proposed algorithm can automatically adapt its internal parameters and model structure to obtain new patterns, depending on the current dynamics of the data stream. SAIRT can monitor the usefulness of nodes and can forget examples from selected regions, storing the remaining ones in local windows associated to the leaves of the tree. On these conditions, current regression methods need a careful configuration depending on the dynamics of the problem. Experimentation suggests that the proposed algorithm obtains better results than current algorithms when dealing with data streams that involve changes with different speeds, noise levels, sampling distribution of examples, and partial or complete changes of the underlying function.
Keywords
"Heuristic algorithms","Adaptation model","Data models","Regression tree analysis","Numerical models","Approximation algorithms","Algorithm design and analysis"
Journal_Title
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2011.19
Filename
5703095
Link To Document