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Cold-start Point-of-interest Recommendation through Crowdsourcing

机译:通过众包的冷启动点的兴趣点推荐

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摘要

Recommender system is a popular tool that aims to provide personalized suggestions to user about items, products, services, and so on. Recommender system has effectively been used in online social networks, especially the location-based social networks for providing suggestions for interesting places known as POIs (points-of-interest). Popular recommender systems explore historical data to learn users' preferences and, subsequently, they recommend locations to an active user. This strategy faces a major problem when a new POI or business evolves in a city. New business has no historical user experience data. Thus, a recommender system fails to gather enough knowledge about the new businesses, resulting in ignoring them during recommendations. This scenario is popularly known as a cold-start POI problem. Users never get recommendations of the new businesses in a city even though they can be relevant to a user. Also, from a business owner's perspective, such a recommendation strategy does not help its reachability among users. Therefore, it is important for a recommender system to remain updated with new businesses in a city and ensure that all relevant POIs are recommended to a user irrespective of their lifetime. A POI recommendation approach is proposed in this work that can effectively handle the new businesses, or the cold-start POI problem, in a city. We crowdsource descriptions of cold-start POIs from various online social networks. The reviews of users are exploited here to learn the inherent features at the existing POIs and the new crowdsourced POIs. Finally, the proposed approach recommends top-K POIs consisting of the existing and new POIs. We perform experiments on the real-world Yelp dataset, which is one of the largest available data resources containing details on a wide range of businesses, users, and reviews. The proposed approach is compared with four existing POI recommendation approaches. The obtained results show that our approach outperforms others in handling cold-start POIs.
机译:推荐系统是一个流行的工具,旨在为用户提供个性化建议,了解项目,产品,服务等。推荐系统有效地用于在线社交网络,特别是基于位置的社交网络,用于为称为POI(兴趣点)提供有趣的地方的建议。流行的推荐系统探索历史数据以了解用户的首选项,然后,他们推荐到活动用户的位置。当新的POI或业务在一个城市发展时,这一策略面临着一个主要问题。新业务没有历史用户体验数据。因此,推荐系统无法收集足够的关于新业务的知识,从而在建议期间忽略它们。这种情况是普遍称为冷启动POI问题。用户永远不会在一个城市中获得新业务的建议,即使它们与用户有关。此外,从业主的角度来看,这种推荐策略并没有帮助其在用户之间的可达性。因此,对于推荐系统来说,在城市中的新业务保持更新,并确保所有相关的POI都建议给用户,而不管他们的一生。在这项工作中提出了一种POI推荐方法,可以有效地处理新业务,或者在一个城市中的冷启动POI问题。我们从各种在线社交网络中携带冷启动POI的描述。这里利用用户的审查来了解现有POI和新众群痘的固有功能。最后,拟议的方法推荐了由现有和新的POI组成的Top-K Pois。我们在真实世界的Yelp DataSet上执行实验,它是包含各种业务,用户和评论的最大可用数据资源之一。拟议的方法与四个现有的POI推荐方法进行比较。所获得的结果表明,我们的方法在处理冷启动POI时表现出其他人。

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