TY - JOUR
T1 - Challenging the long tail recommendation
AU - Yin, Hongzhi
AU - Cui, Bin
AU - Li, Jing
AU - Yao, Junjie
AU - Chen, Chen
PY - 2012/5
Y1 - 2012/5
N2 - The success of "infinite-inventory" retailers such as Amazon.com and Netflix has been largely attributed to a "long tail" phenomenon. Although the majority of their inventory is not in high demand, these niche products, unavailable at limited-inventory competitors, generate a significant fraction of total revenue in aggregate. In ad-dition, tail product availability can boost head sales by offering consumers the convenience of "one-stop shopping" for both their mainstream and niche tastes. However, most of existing recom-mender systems, especially collaborative filter based methods, can not recommend tail products due to the data sparsity issue. It has been widely acknowledged that to recommend popular products is easier yet more trivial while to recommend long tail products adds more novelty yet it is also a more challenging task. In this paper, we propose a novel suite of graph-based algorithms for the long tail recommendation. We first represent user-item in-formation with undirected edge-weighted graph and investigate the theoretical foundation of applying Hitting Time algorithm for long tail item recommendation. To improve recommendation diversity and accuracy, we extend Hitting Time and propose efficient Ab-sorbing Time algorithm to help users find their favorite long tail items. Finally, we refine the Absorbing Time algorithm and pro-pose two entropy-biased Absorbing Cost algorithms to distinguish the variation on different user-item rating pairs, which further en-hances the effectiveness of long tail recommendation. Empirical experiments on two real life datasets show that our proposed algo-rithms are effective to recommend long tail items and outperform state-of-the-art recommendation techniques.
AB - The success of "infinite-inventory" retailers such as Amazon.com and Netflix has been largely attributed to a "long tail" phenomenon. Although the majority of their inventory is not in high demand, these niche products, unavailable at limited-inventory competitors, generate a significant fraction of total revenue in aggregate. In ad-dition, tail product availability can boost head sales by offering consumers the convenience of "one-stop shopping" for both their mainstream and niche tastes. However, most of existing recom-mender systems, especially collaborative filter based methods, can not recommend tail products due to the data sparsity issue. It has been widely acknowledged that to recommend popular products is easier yet more trivial while to recommend long tail products adds more novelty yet it is also a more challenging task. In this paper, we propose a novel suite of graph-based algorithms for the long tail recommendation. We first represent user-item in-formation with undirected edge-weighted graph and investigate the theoretical foundation of applying Hitting Time algorithm for long tail item recommendation. To improve recommendation diversity and accuracy, we extend Hitting Time and propose efficient Ab-sorbing Time algorithm to help users find their favorite long tail items. Finally, we refine the Absorbing Time algorithm and pro-pose two entropy-biased Absorbing Cost algorithms to distinguish the variation on different user-item rating pairs, which further en-hances the effectiveness of long tail recommendation. Empirical experiments on two real life datasets show that our proposed algo-rithms are effective to recommend long tail items and outperform state-of-the-art recommendation techniques.
UR - https://www.scopus.com/pages/publications/84863735354
U2 - 10.14778/2311906.2311916
DO - 10.14778/2311906.2311916
M3 - 文章
AN - SCOPUS:84863735354
SN - 2150-8097
VL - 5
SP - 896
EP - 907
JO - Proceedings of the VLDB Endowment
JF - Proceedings of the VLDB Endowment
IS - 9
ER -