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Merging user social network into the random walk model for better group recommendation

机译:将用户社交网络合并到随机步道模型中,以获得更好的组推荐

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摘要

At present, most recommendation approaches used to suggest appreciate items for individual users. However, due to the social nature of human beings, group activities have become an integral part of our daily life, thus the popularity of group recommender systems has increased in the last years. Unfortunately, most existing approaches used in group recommender systems make recommendations through aggregating individual preferences or individual predictive results rather than comprehensively investigating users social features that govern their choices made within a group. Therefore, we propose a new group recommendation approach, it incorporates user social network into the random walk with restart model and variously detects the inherent associations among group members, which can help us to better describe groups preference and improve the performance of group recommender systems. Besides, on the basis of multifaceted associations incorporation, we apply a partitioned matrix computation method in the recommendation process to save computational and storage costs. The final experiment results on the real-world CAMRa2011 dataset demonstrates that the proposed approach can not only effectively predict groups' preference, but also have faster performance and more stable than other baseline methods.
机译:目前,用于建议为个人用户欣赏物品的大多数推荐方法。然而,由于人类的社会性质,小组活动已成为我们日常生活的一个组成部分,因此,集团推荐系统的普及在过去几年增加。遗憾的是,组推荐系统中使用的大多数现有方法通过聚合各个偏好或个人预测结果来提出建议,而不是全面调查管理他们在组内所做的选择的社交功能。因此,我们提出了一种新的组推荐方法,它将用户的社交网络与重启模型中的随机散步融入了随机散步,并各种检测组成员之间的固有关联,这可以帮助我们更好地描述组偏好并提高组推荐系统的性能。此外,在多方面的关联融合的基础上,我们在推荐过程中应用分区矩阵计算方法,以节省计算和存储成本。最终的实验结果对现实世界的CAMRA2011数据集表明,所提出的方法不仅可以有效地预测群体的偏好,而且比其他基线方法更快的性能和更稳定。

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