Title
An Effective Technique for Personalization Recommendation Based on Access Sequential Patterns
Abstract
Considering that personalization recommendation systems based on association rules suffer from some limitations that a lot of time is spent on matching current user session with all discovered patterns in patterns database, authors propose a new approach to build personalization recommendation system based on access sequential patterns discovered form usage data and highly compressed into a tree structure. During personalization recommendation stage we just need to intercept nearest access subsequence from current user session to match some sub paths of the tree. The speed of pattern matching is improved enormously, which satisfies the need of real-time recommendation better. The results of experiments show the proposed methodology can achieve better recommendation effectiveness
Year
DOI
Venue
2006
10.1109/APSCC.2006.27
APSCC
Keywords
Field
DocType
personalization recommendation,association rules,patterns database,web usage mining,sequential patterns,tree data structures,real-time recommendation,nearest access subsequence,data compression,pattern matching,access sequential patterns,information filters,internet,better recommendation effectiveness,current user session,tree structure,access sequential pattern,data mining,effective technique,access sequential pattern discovering,personalization recommendation system,personalization recommendation stage,recommender system,real time,satisfiability,association rule
Recommender system,Data mining,Web mining,Computer science,Tree (data structure),Association rule learning,Tree structure,Usage data,Pattern matching,Personalization
Conference
ISBN
Citations 
PageRank 
0-7695-2751-5
5
0.44
References 
Authors
4
3
Name
Order
Citations
PageRank
Xiaoqiu Tan1111.65
Min Yao2253.82
Miaojun Xu350.78