Title
Sparse alternating decision tree
Abstract
Alternating decision tree (ADTree) brings interpretability to boosting.A novel sparse version of multivariate ADTree is presented.Sparse ADTree is a better generalization of existing univariate ADTree.The decision nodes are designed based on modified sparse discriminant analysis.The complexity of the decision nodes can be regularized easily. Alternating decision tree (ADTree) is a special decision tree representation that brings interpretability to boosting, a well-established ensemble algorithm. This has found success in wide applications. However, existing variants of ADTree are implementing univariate decision nodes where potential interactions between features are ignored. To date, there has been no multivariate ADTree. We propose a sparse version of multivariate ADTree such that it remains comprehensible. The proposed sparse ADTree is empirically tested on UCI datasets as well as spectral datasets from the University of Eastern Finland (UEF). We show that sparse ADTree is competitive against both univariate decision trees (original ADTree, C4.5, and CART) and multivariate decision trees (Fisher's decision tree and a single multivariate decision tree from oblique Random Forest). It achieves the best average rank in terms of prediction accuracy, second in terms of decision tree size and faster induction time than existing ADTree. In addition, it performs especially well on datasets with correlated features such as UEF spectral datasets. Thus, the proposed sparse ADTree extends the applicability of ADTree to a wider variety of applications.
Year
DOI
Venue
2015
10.1016/j.patrec.2015.03.002
Pattern Recognition Letters
Keywords
Field
DocType
Alternating decision tree,Decision tree,Boosting,Sparse discriminant analysis,Feature selection
Data mining,Decision tree,Feature selection,Computer science,Artificial intelligence,Random forest,Alternating decision tree,Interpretability,Pattern recognition,Multivariate statistics,Boosting (machine learning),Univariate,Machine learning
Journal
Volume
Issue
ISSN
60-61
C
0167-8655
Citations 
PageRank 
References 
1
0.36
20
Authors
3
Name
Order
Citations
PageRank
Hong Kuan Sok1151.80
Melanie Po-Leen Ooi27018.35
Ye Chow Kuang37219.81