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Point-of-Interest Recommendation based on Geographical Influence and Extended Pairwise Ranking

机译:基于地理影响力和扩展成对排名的兴趣点推荐

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In recent years, recommendation based on explicit feedback data has been extensively studied. However, in the field of Point-of-Interest (POI) recommendation, check-in information is usually implicit feedback, that is, we can only observe positive data where users interact with POIs. The lack of negative samples brings difficulties to the research of POI recommendation. Although there have been recently studies converted the rating prediction into the POIs ranking by constructing pairwise preference assumption, they only consider the optimization of the ranking of one POI pair, which the value of negative data is underutilized. In addition, the geographical influence has not been fully utilized. Hence, we propose a recommendation model based on geographic influence and extended pairwise ranking (GIEPR). Extensive empirical studies on two publicly available datasets show that our method performs significantly better than state-of-the-art methods for POI recommendation.
机译:近年来,已经广泛研究了基于显式反馈数据的推荐。但是,在兴趣点(POI)推荐领域中,签到信息通常是隐式反馈,也就是说,我们只能在用户与POI交互的地方观察到积极数据。阴性样本的缺乏给POI推荐研究带来了困难。尽管最近有研究通过构建成对偏好假设将评级预测转换为POI排名,但他们仅考虑优化一对POI对的排名,而负面数据的价值未得到充分利用。此外,地理影响还没有得到充分利用。因此,我们提出了一种基于地理影响力和扩展成对排名(GIEPR)的推荐模型。对两个公开可用数据集的大量实证研究表明,我们的方法的性能明显优于最新的POI推荐方法。

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