DocumentCode
37299
Title
A Comprehensive Approach to Universal Piecewise Nonlinear Regression Based on Trees
Author
Vanli, Nuri Denizcan ; Kozat, Suleyman S.
Author_Institution
Dept. of Electr. & Electron. Eng., Bilkent Univ., Ankara, Turkey
Volume
62
Issue
20
fYear
2014
fDate
Oct.15, 2014
Firstpage
5471
Lastpage
5486
Abstract
In this paper, we investigate adaptive nonlinear regression and introduce tree based piecewise linear regression algorithms that are highly efficient and provide significantly improved performance with guaranteed upper bounds in an individual sequence manner. We use a tree notion in order to partition the space of regressors in a nested structure. The introduced algorithms adapt not only their regression functions but also the complete tree structure while achieving the performance of the “best” linear mixture of a doubly exponential number of partitions, with a computational complexity only polynomial in the number of nodes of the tree. While constructing these algorithms, we also avoid using any artificial “weighting” of models (with highly data dependent parameters) and, instead, directly minimize the final regression error, which is the ultimate performance goal. The introduced methods are generic such that they can readily incorporate different tree construction methods such as random trees in their framework and can use different regressor or partitioning functions as demonstrated in the paper.
Keywords
adaptive filters; computational complexity; nonlinear filters; piecewise linear techniques; regression analysis; trees (mathematics); adaptive nonlinear regression; artificial weighting; best linear mixture performance; computational complexity; data dependent parameters; doubly exponential partition number; nonlinear adaptive filtering; partitioning functions; polynomial; random trees; tree based piecewise linear regression algorithms; tree construction methods; tree structure; universal piecewise nonlinear regression; upper bounds; Adaptation models; Computational complexity; Computational modeling; Partitioning algorithms; Regression tree analysis; Signal processing algorithms; Vectors; Nonlinear regression; adaptive; binary tree; nonlinear adaptive filtering; universal;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2349882
Filename
6880812
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