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AUC-MF: Point of Interest Recommendation with AUC Maximization

机译:AUC-MF:带有AUC最大化的兴趣点推荐

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The task of point of interest (POI) recommendation aims to recommend unvisited places to users based on their check-in history. A major challenge in POI recommendation is data sparsity, because a user typically visits only a very small number of POIs among all available POIs. In this paper, we propose AUC-MF to address the POI recommendation problem by maximizing Area Under the ROC curve (AUC). AUC has been widely used for measuring classification performance with imbalanced data distributions. To optimize AUC, we transform the recommendation task to a classification problem, where the visited locations are positive examples and the unvisited are negative ones. We define a new lambda for AUC to utilize the LambdaMF model, which combines the lambda-based method and matrix factorization model in collaborative filtering. Experiments on two datasets show that the proposed AUC-MF outperforms state-of-the-art methods significantly in terms of recommendation accuracy.
机译:兴趣点(POI)推荐任务旨在根据用户的签到历史向其推荐未访问的地点。 POI推荐的主要挑战是数据稀疏性,因为用户通常仅在所有可用POI中访问非常少的POI。在本文中,我们提出了AUC-MF,以通过最大化ROC曲线下的面积(AUC)解决POI推荐问题。 AUC已被广泛用于测量具有不平衡数据分布的分类性能。为了优化AUC,我们将推荐任务转换为分类问题,其中访问位置是正面示例,未访问位置是负面示例。我们为AUC定义了一个新的lambda,以利用LambdaMF模型,该模型将基于lambda的方法和矩阵分解模型结合在一起进行协作过滤。在两个数据集上进行的实验表明,所提出的AUC-MF在推荐准确性方面明显优于最新方法。

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