Title
Top- k probabilistic prevalent co-location mining in spatially uncertain data sets
Abstract
A co-location pattern is a set of spatial features whose instances frequently appear in a spatial neighborhood. This paper efficiently mines the top-k probabilistic prevalent co-locations over spatially uncertain data sets and makes the following contributions: 1) the concept of the top-k probabilistic prevalent co-locations based on a possible world model is defined; 2) a framework for discovering the top-k probabilistic prevalent co-locations is set up; 3) a matrix method is proposed to improve the computation of the prevalence probability of a top-k candidate, and two pruning rules of the matrix block are given to accelerate the search for exact solutions; 4) a polynomial matrix is developed to further speed up the top-k candidate refinement process; 5) an approximate algorithm with compensation factor is introduced so that relatively large quantity of data can be processed quickly. The efficiency of our proposed algorithms as well as the accuracy of the approximation algorithms is evaluated with an extensive set of experiments using both synthetic and real uncertain data sets.
Year
DOI
Venue
2016
10.1007/s11704-015-4196-9
Frontiers of Computer Science
Keywords
Field
DocType
spatial co-location mining,top-k probabilistic prevalent co-location mining,spatially uncertain data sets,matrix methods
Data mining,Approximation algorithm,Polynomial matrix,Computer science,Matrix (mathematics),Uncertain data,Matrix method,Artificial intelligence,Probabilistic logic,Machine learning,Computation,Speedup
Journal
Volume
Issue
ISSN
10
3
2095-2236
Citations 
PageRank 
References 
10
0.59
17
Authors
4
Name
Order
Citations
PageRank
Lizhen Wang115326.16
Jun Han2100.59
Hongmei Chen3255.39
Junli Lu4100.59