Title
A New Approach for Mining Order-Preserving Submatrices Based on All Common Subsequences.
Abstract
Order-preserving submatrices (OPSMs) have been applied in many fields, such as DNA microarray data analysis, automatic recommendation systems, and target marketing systems, as an important unsupervised learning model. Unfortunately, most existing methods are heuristic algorithms which are unable to reveal OPSMs entirely in NP-complete problem. In particular, deep OPSMs, corresponding to long patterns with few supporting sequences, incur explosive computational costs and are completely pruned by most popular methods. In this paper, we propose an exact method to discover all OPSMs based on frequent sequential pattern mining. First, an existing algorithm was adjusted to disclose all common subsequence (ACS) between every two row sequences, and therefore all deep OPSMs will not be missed. Then, an improved data structure for prefix tree was used to store and traverse ACS, and Apriori principle was employed to efficiently mine the frequent sequential pattern. Finally, experiments were implemented on gene and synthetic datasets. Results demonstrated the effectiveness and efficiency of this method.
Year
DOI
Venue
2015
10.1155/2015/680434
COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE
Field
DocType
Volume
Recommender system,Data structure,Data mining,Heuristic,Computer science,Automation,Unsupervised learning,Artificial intelligence,Subsequence,Trie,Machine learning,Traverse
Journal
2015
ISSN
Citations 
PageRank 
1748-670X
1
0.35
References 
Authors
17
7
Name
Order
Citations
PageRank
Yun Xue1113.59
Zhengling Liao253.44
Meihang Li383.83
Jie Luo470673.44
Qiuhua Kuang511.02
Xiao-Hui Hu6105.55
TieChen Li783.57