As the popularity of Location-based Social Networks (LBSNs) increases, designing accurate models for Point-of-Interest (POI) recommendation receives more attention. POI recommendation is often performed by incorporating contextual information into previously designed recommendation algorithms. Some of the major contextual information that has been considered in POI recommendation are the location attributes (i.e., exact coordinates of a location, category, and check-in time), the user attributes (i.e., comments, reviews, tips, and check-in made to the locations), and other information, such as the distance of the POI from user's main activity location, and the social tie between users. The right selection of such factors can significantly impact the performance of the POI recommendation. However, previous research does not consider the impact of the combination of these different factors. In this paper, we propose different contextual models and analyze the fusion of different major contextual information in POI recommendation. The major contributions of this paper are: (i) providing an extensive survey of context-aware location recommendation (ii) quantifying and analyzing the impact of different contextual information (e.g., social, temporal, spatial, and categorical) in the POI recommendation on available baselines and two new linear and non-linear models, that can incorporate all the major contextual information into a single recommendation model, and (iii) evaluating the considered models using two well-known real-world datasets. Our results indicate that while modeling geographical and temporal influences can improve recommendation quality, fusing all other contextual information into a recommendation model is not always the best strategy.
翻译:随着基于地点的社会网络(LBSNS)的受欢迎程度的提高,为利益点(POI)建议设计准确的模型得到更多的注意。执行POI建议的方式往往是将背景信息纳入先前设计的建议算法。在POI建议中考虑的一些主要背景信息是地点属性(即一个地点、类别的确切坐标和核对时间)、用户属性(即对地点的评论、审查、提示和报到),以及其他信息,例如POI与用户主要活动地点的距离以及用户之间的社会联系。正确选择这类因素可以极大地影响POI建议的执行。然而,先前的研究没有考虑到这些不同因素组合的影响。在本文件中,我们提出不同的背景模型和分析POI建议中不同主要背景信息的融合情况。本文件的主要贡献是:(一) 广泛调查背景了解地点的建议(二) 量化和分析不同背景信息与用户主要活动地点的主要位置,而不是将所有现有地理、空间和背景信息纳入两个基线建议,同时用我们现有的最新基线、空间和直观建议,可以将所有现有基线、空间和直观建议纳入我们现有两个基本建议。