GeoSoCa:为兴趣点推荐开发地理、社会和分类相关性

Jiadong Zhang, Chi-Yin Chow
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引用次数: 297

摘要

向用户推荐他们喜欢的兴趣点(poi),例如博物馆和餐馆,已经成为基于位置的社交网络(LBSNs)的一个重要功能,它有利于人们探索新的地方和企业,发现潜在的客户。然而,由于用户只签入LBSN中的几个POI,因此用户-POI签入交互非常稀疏,这对POI推荐提出了很大的挑战。为了应对这一挑战,在本研究中,我们通过利用用户和POI之间的地理相关性、社会相关性和分类相关性,提出了一种名为GeoSoCa的新的POI推荐方法。可以从用户在POI上的历史签到数据中了解地理、社会和分类相关性,并利用这些相关性预测用户与未访问POI的相关性评分,从而为用户提供推荐。首先,在GeoSoCa中,我们提出了一种具有自适应带宽的核估计方法,以确定每个用户的poi的个性化签入分布,该方法自然地模拟了poi之间的地理相关性。然后,GeoSoCa在POI上汇总用户朋友的签到频率或评分,并将社交签到频率或评分建模为幂律分布,以利用用户之间的社交相关性。此外,GeoSoCa应用用户对POI类别的偏见来衡量相应类别中POI的受欢迎程度,并将加权后的受欢迎程度建模为幂律分布,以利用POI之间的分类相关性。最后,我们使用从Foursquare和Yelp收集的两个大规模真实签到数据集对GeoSoCa进行了全面的性能评估。实验结果表明,与其他最先进的POI推荐技术相比,GeoSoCa的推荐质量显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GeoSoCa: Exploiting Geographical, Social and Categorical Correlations for Point-of-Interest Recommendations
Recommending users with their preferred points-of-interest (POIs), e.g., museums and restaurants, has become an important feature for location-based social networks (LBSNs), which benefits people to explore new places and businesses to discover potential customers. However, because users only check in a few POIs in an LBSN, the user-POI check-in interaction is highly sparse, which renders a big challenge for POI recommendations. To tackle this challenge, in this study we propose a new POI recommendation approach called GeoSoCa through exploiting geographical correlations, social correlations and categorical correlations among users and POIs. The geographical, social and categorical correlations can be learned from the historical check-in data of users on POIs and utilized to predict the relevance score of a user to an unvisited POI so as to make recommendations for users. First, in GeoSoCa we propose a kernel estimation method with an adaptive bandwidth to determine a personalized check-in distribution of POIs for each user that naturally models the geographical correlations between POIs. Then, GeoSoCa aggregates the check-in frequency or rating of a user's friends on a POI and models the social check-in frequency or rating as a power-law distribution to employ the social correlations between users. Further, GeoSoCa applies the bias of a user on a POI category to weigh the popularity of a POI in the corresponding category and models the weighed popularity as a power-law distribution to leverage the categorical correlations between POIs. Finally, we conduct a comprehensive performance evaluation for GeoSoCa using two large-scale real-world check-in data sets collected from Foursquare and Yelp. Experimental results show that GeoSoCa achieves significantly superior recommendation quality compared to other state-of-the-art POI recommendation techniques.
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