Social group recommendation in the tourism domain

被引:0
作者
Ingrid Christensen
Silvia Schiaffino
Marcelo Armentano
机构
[1] Campus Universitario,ISISTAN (CONICET
来源
Journal of Intelligent Information Systems | 2016年 / 47卷
关键词
Social recommender systems; Recommender systems; Tourism;
D O I
暂无
中图分类号
学科分类号
摘要
Recommender Systems learn users’ preferences and tastes in different domains to suggest potentially interesting items to users. Group Recommender Systems generate recommendations that intend to satisfy a group of users as a whole, instead of individual users. In this article, we present a social based approach for recommender systems in the tourism domain, which builds a group profile by analyzing not only users’ preferences, but also the social relationships between members of a group. This aspect is a hot research topic in the recommender systems area. In addition, to generate the individual and group recommendations our approach uses a hybrid technique that combines three well-known filtering techniques: collaborative, content-based and demographic filtering. In this way, the disadvantages of one technique are overcome by the others. Our approach was materialized in a recommender system named Hermes, which suggests tourist attractions to both individuals and groups of users. We have obtained promising results when comparing our approach with classic approaches to generate recommendations to individual users and groups. These results suggest that considering the type of users’ relationship to provide recommendations to groups leads to more accurate recommendations in the tourism domain. These findings can be helpful for recommender systems developers and for researchers in this area.
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页码:209 / 231
页数:22
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