Title
Integrating Collaborative Filtering and Association Rule Mining for Market Basket Recommendation.
Abstract
This paper proposes a market basket recommendation algorithm based on association rules and collaborative filtering. It solves the problem that traditional association rule recommendation algorithms cannot generate association rules from cold commodity items under big data environment. An implicit semantic model based on historical transaction data of all users is constructed to represent potential features of commodities and measure similarities among commodities. The missing unknown elements in the implicit semantic model are complemented by the least square method. Association rules on unpopular commodities are obtained by the similarity of the commodities, thereby improving the recommendation accuracy. Experiments with real supermarket sales data demonstrate its effectiveness.
Year
Venue
Field
2018
WISE
Data mining,Collaborative filtering,Market basket,Commodity,Computer science,Association rule learning,Transaction data,Big data,Semantic data model
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
12
4
Name
Order
Citations
PageRank
Feiran Wang122.08
Yiping Wen2258.59
Jinjun Chen332.07
Buqing Cao495.93