Research Review on Group Recommendation Aggregation Strategy at Abroad

  • He Jun
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  • School of Business, Anhui University, Hefei 230601

Received date: 2012-11-07

  Revised date: 2013-02-27

  Online published: 2013-04-05

Abstract

Group recommendation is a kind of personalization recommendation technology to group users. The aggregation is one important step for group recommendation, which is the model to aggregate recommendation items from individuals to groups or aggregate individual preference to group preference. The aggregation strategy is the implementation method to aggregate. By collecting and analyzing the literatures, this paper introduces the group formation and recommendation process, and compares types and applications of the aggregation strategy. Then it analyzes the dilemma and privacy problem, the interaction and diversity problem, and the social influence strategy. Finally, it prospects the further study on aggregation strategy.

Cite this article

He Jun . Research Review on Group Recommendation Aggregation Strategy at Abroad[J]. Library and Information Service, 2013 , (07) : 127 -133,88 . DOI: 10.7536/j.issn.0252-3116.2013.07.023

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