Proceedings of the 16th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining 2010
DOI: 10.1145/1835804.1835896
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Temporal recommendation on graphs via long- and short-term preference fusion

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Cited by 319 publications
(248 citation statements)
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“…Xiang proposed a session-based temporal graph method that integrates short and long-term temporal variations [4]. Lathia, Hailes, Capra and Amarian compared the results they obtained from item-based CF, the k closest neighbour algorithm, and the SVD methoda matrix factorization technique -in terms of rating accuracy.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Xiang proposed a session-based temporal graph method that integrates short and long-term temporal variations [4]. Lathia, Hailes, Capra and Amarian compared the results they obtained from item-based CF, the k closest neighbour algorithm, and the SVD methoda matrix factorization technique -in terms of rating accuracy.…”
Section: Related Workmentioning
confidence: 99%
“…Also seasonal changes or regional factors [1,4] may change users' perception and perspective over time. For instance, users may develop a new perspective for an actor or movie genre, or may change the types of movies he or she likes over time.…”
Section: Introductionmentioning
confidence: 99%
“…The use of a graph-based model for recommendations was first introduced in [Aggarwal et al 1999]. To apply a bipartite user-item-feedback graph G was proposed in [Huang et al 2004] and several projects [Baluja et al 2008;Bogers 2010;Cooper et al 2014;Fouss et al 2005;Gori et al 2007;Jamali and Ester 2009;Lee et al 2012;Xiang et al 2010] extended this approach. We classify them as vertex ranking algorithms because their main idea is to rank the vertices in the graph based on their similarities with the target user and use the ranking to generate recommendations.…”
Section: Related Workmentioning
confidence: 99%
“…Recently, another issue has been addressed by a couple of recent published work (Ahmed, Low, Aly, Josifovski, & Smola, 2011;Gueye, Abdessalem, & Naacke, 2012;Li, Yang, Wang, & Kitsuregawa, 2007;Xiang et al, 2010) that is referred to as the dynamicity problem. We define it as the effect of time on user's preferences and how it can be reflected in their profiles.…”
Section: Issues and Problemsmentioning
confidence: 99%