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Co-purchaser Recommendation Based on Network Embedding

机译:基于网络嵌入的共同买方推荐

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Although recommending co-purchasers for a target buyer on the group buying is an interesting problem, existing studies haven't paid attention to this topic. Different from the collaborator recommendation that only considers users with high similarity to the target user, copurchaser recommendation takes both users with high and weak similarity into account, and the recommendation results can achieve high recall and diversity. However, the task turns out to be a challenging problem since it is hard to make a precise recommendation for buyers with weak similarity. To address the problem, we propose the following two methods. In the first one, we directly impose a penalty to the weakly similar co-purchasers in the embedding space. To further improve the recommendation performance, in the second one, we smoothly increase the co-occurrence probability of the weakly similar co-purchasers by truncated bias walk. Our experimental results on real datasets show that the proposed methods, particularly the latter, can effectively complete the co-purchaser recommendation and has a high recommendation performance.
机译:虽然推荐为目标买家的共同购买者购买集团购买是一个有趣的问题,但现有的研究没有重视本主题。与协作者建议不同,只考虑对目标用户的高相似性的用户,Copurchaser推荐考虑了高度和弱势的用户,而且建议结果可以实现高召回和多样性。然而,任务结果表明是一个具有挑战性的问题,因为很难为具有弱相似性的买家做出准确的建议。要解决问题,我们提出了以下两种方法。在第一个,我们直接对嵌入空间中的弱相同的共同购买者施加罚款。为了进一步提高建议表现,在第二个,我们通过截短的偏见步行顺利提高弱相似的共同购买者的共同发生概率。我们对实际数据集的实验结果表明,所提出的方法,特别是后者,可以有效地完成共同买方推荐,并具有高推荐绩效。

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