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A POI group recommendation method in location-based social networks based on user influence

机译:基于用户影响的基于位置的社交网络的POI组推荐方法

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Group recommendation has attracted researchers? attention in various domains, specifically such approaches utilizing location-based social networks (LBSNs). However, point of interest (POI) group recommendation faces the challenge of aggregating diverse user preferences, while group members have different influences on the final decision of the group. Besides, the recommendation of spatial items is different from non-spatial items and the unique features of the spatial items such as distance must be considered in the recommendation. In this paper, a POI group recommendation method is proposed to tackle this problem. User influence is modeled fuzzy and taken into account the difference of users? personality and their preferences when are alone or in a group, by using historical check-in data in LBSNs and in terms of category, distance and time. The proposed method is integrated with the weighted average aggregation to improve the efficiency of the POI group recommendation. Experimental results in a real dataset show improvement in the accuracy of POI group recommendations in varying sizes of groups. The results also get better when the user influence is calculated using the fuzzy approach. Besides, studying user behavior differences to choose the place to visit when alone or in a group shows that i) the flexibility of users in distance is less than time and category. It is also in the category less than time. ii) Time has a greater range of behavioral change than distance and category. iii) Users who actively participate in group decision making have a more significant number of visits in groups than when they are alone.
机译:集团推荐吸引了研究人员?在各个域中注意,特别是利用基于位置的社交网络(LBSNS)的这种方法。但是,兴趣点(POI)集团建议面临挑战各种用户偏好,而集团成员对本集团的最终决定产生了不同的影响。此外,空间物品的推荐与非空间物品不同,并且在推荐中必须考虑诸如距离的空间物品的独特功能。在本文中,提出了一种POI组推荐方法来解决这个问题。用户影响是模糊模糊的,并考虑了用户的差异吗?人格及其偏好,单独或在组中,通过使用LBSN中的历史登记数据以及类别,距离和时间。该方法与加权平均聚合集成,以提高POI组建议的效率。实验结果在实时数据集中显示了不同尺寸的POI组建议的准确性提高。当使用模糊方法计算用户影响时,结果也会变得更好。此外,研究用户行为差异以选择单独或组中访问的地方,或者在组中显示I)距离中用户的灵活性小于时间和类别。它也在不到时间的范围内。 ii)时间具有比距离和类别更大的行为变化。 iii)积极参与组决策的用户在群体中具有比单独的更重要的访问。

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