跨城市POI推荐的深度神经网络(扩展摘要)

Dichao Li, Zhiguo Gong
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引用次数: 0

摘要

智能手机等位置感知设备的普及使得用户可以通过各种基于位置的社交网络(LBSNs),如Foursquare和Yelp,自由地分享他们的活动。大量用户贡献的数据使开发有效的兴趣点(POI)推荐系统成为可能。它不仅可以引导用户探索更多有趣的景点,还可以帮助位置服务提供商投放有针对性的广告。目前已有的研究大多集中在同一城市或地区的POI推荐上,称为传统的POI推荐系统。然而,他们未能处理日益流行的情况:用户前往新城市探索更多景点。这就产生了一个问题,即我们如何根据新访客在源城市的入住记录向其推荐目标城市的poi。我们把这个问题称为跨城市POI建议。与传统的POI推荐系统相比,跨城市POI推荐系统更具挑战性,主要表现在以下几个方面:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Neural Network for Crossing-City POI Recommendations : (Extended Abstract)
THE popularity of location-aware devices such as smart phones makes users freely share their activities through various location-based social networks (LBSNs), such as Foursquare and Yelp. A large amount of user-contributed data enable to develop effective point-of-interest (POI) recommender systems. It not only guides users to explore more interesting attractions, but also helps the location service providers deliver targeted advertising. Now most of existing studies focus on recommending POIs in the same city or region, named as traditional POI recommender systems. However, they fail to deal with the increasingly popular case: users travel to new cities to explore more attractions. This raises the problem that how we shall recommend POIs in a target city to a new visitor based on her/his check-in records in source cities. We refer to this problem as crossing-city POI recommendations. Compared with traditional POI recommender systems, crossing-city POI recommender systems are more challenging due to the following aspects:
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