TY - GEN
T1 - Distributed collaborative filtering recommendation model based on expand-vector
AU - Zhu, Ye
AU - Su, Hong Yi
AU - Wang, Cai Qun
AU - Yan, Bo
AU - Zheng, Hong
PY - 2014
Y1 - 2014
N2 - The recommendation system based on collaborative filtering is one of the most popular recommendation mechanisms. However, with the continuous expansion of the system, several problems that traditional collaborative filtering recommendation algorithm (CF) faced such as cold startup, accuracy, and scalability are worsen. In order to address these issues, a distributed collaborative filtering recommendation model based on expand-vector (CF-EV) is proposed. Firstly, the eigenvector is expanded reasonably to get the expand-vector based on the expand-vector model, a new extension measure created in this paper. Then, the nearest neighbor user is found and a more accurate recommendation to the target user is given based on the calculation results. In addition, the further optimization makes it applied to the parallel computing framework successfully. Using the MovieLens dataset, the performance of CF-EV is compared with CF from both sides of recommendation precision and the speedup ratio. Through experimental results, CF-EV overcomes the problem of cold startup. Moreover, the accuracy and recall ratio has been doubled. With the increasing numbers of the computing nodes, the distributed implementation has linear speedup.
AB - The recommendation system based on collaborative filtering is one of the most popular recommendation mechanisms. However, with the continuous expansion of the system, several problems that traditional collaborative filtering recommendation algorithm (CF) faced such as cold startup, accuracy, and scalability are worsen. In order to address these issues, a distributed collaborative filtering recommendation model based on expand-vector (CF-EV) is proposed. Firstly, the eigenvector is expanded reasonably to get the expand-vector based on the expand-vector model, a new extension measure created in this paper. Then, the nearest neighbor user is found and a more accurate recommendation to the target user is given based on the calculation results. In addition, the further optimization makes it applied to the parallel computing framework successfully. Using the MovieLens dataset, the performance of CF-EV is compared with CF from both sides of recommendation precision and the speedup ratio. Through experimental results, CF-EV overcomes the problem of cold startup. Moreover, the accuracy and recall ratio has been doubled. With the increasing numbers of the computing nodes, the distributed implementation has linear speedup.
KW - Collaborative filtering
KW - Expand-vector
KW - MapReduce
KW - Parallel and distributed computing
KW - Recommend mechanism
UR - http://www.scopus.com/inward/record.url?scp=84905836909&partnerID=8YFLogxK
U2 - 10.4028/www.scientific.net/AMR.989-994.2188
DO - 10.4028/www.scientific.net/AMR.989-994.2188
M3 - Conference contribution
AN - SCOPUS:84905836909
SN - 9783038351733
T3 - Advanced Materials Research
SP - 2188
EP - 2191
BT - Materials Science, Computer and Information Technology
PB - Trans Tech Publications Ltd.
T2 - 4th International Conference on Materials Science and Information Technology, MSIT 2014
Y2 - 14 June 2014 through 15 June 2014
ER -