Title
Constraint k-segment principal curves
Abstract
To represent the intrinsic regularity of data, one way is to compute the “middle” curves or principal curves (PCs) across the data. However, there are difficulties for current PCs algorithms to discover some known positions that are out of the sampled range of data (Henceforth, out-of-the-samples). Based on principal curves with length constraint proposed by kégl (KPCs), we propose constraint K-segment principal curves (CKPCs) with two refinements. First, out-of-the-samples are introduced as endpoints to improve the performance of the KPCs algorithm. Second, a constraint term is proposed for removing some unexpected vertices and enhancing the stability of the KPCs algorithm. Experiments in three set of practical traffic stream data show that both the stability and the shape of the proposed CKPCs algorithm are better than those of the KPCs algorithm.
Year
DOI
Venue
2006
10.1007/11816157_38
ICIC (1)
Keywords
Field
DocType
length constraint,constraint term,principal curve,constraint k-segment principal curve,known position,current pcs algorithm,kpcs algorithm,intrinsic regularity,proposed ckpcs,constraint k-segment,practical traffic stream data
Vertex (geometry),Computer science,Algorithm,Stream data,Principal curves
Conference
Volume
ISSN
ISBN
4113
0302-9743
3-540-37271-7
Citations 
PageRank 
References 
3
0.44
4
Authors
2
Name
Order
Citations
PageRank
Junping Zhang1117359.62
Dewang Chen210912.44