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Social Group Recommendation With TrAdaBoost

机译:与TradaBoost的社会团体建议

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摘要

In recent years, group recommendation has become a research hotspot and focus in online social network community. Currently, several deep-learning-based approaches are leveraged to learn preferences of groups for items and predict the next items in which groups may be interested. Yet, their recommendation performance is still unsatisfactory due to the sparse group-item interactions. In order to address this problem, in this article, we introduce an effective model, namely Social Group Recommendation model with TrAdaBoost (SGRTAB), to raise the performance of group recommendation in online social networks. The SGRTAB model includes two stages: data preprocessing (DP) and model optimization (MO). In DP, SGRTAB produces inputs for MO and implements three related tasks: extracting individual features, handling group data via GloVe, and utilizing user contribute ratings to their own groups, whereas in MO, SGRTAB implements group preference learning with the assistance of user preference learning based on the TrAdaBoost algorithm. Specifically, SGRTAB can effectively absorb the knowledge of user preferences into the process of group preference learning through the idea of transferring-ensemble learning. Moreover, extensive experiments on four real-world data sets indicate that the proposed SGRTAB model significantly outperforms the state-of-the-art baselines for social group recommendation.
机译:近年来,集团推荐已成为研究热点,专注于在线社交网络社区。目前,利用了几种基于深度学习的方法,以了解物品组的偏好,并预测组可能感兴趣的下一个项目。然而,由于稀疏的组项目交互,他们的推荐性能仍然不满意。为了解决这个问题,在本文中,我们介绍了一个有效的模型,即具有TradaBoost(SGRTAB)的社会团体推荐模型,以提高在线社交网络中的组建议的表现。 SGRTAB模型包括两个阶段:数据预处理(DP)和模型优化(MO)。在DP中,SGRTAB为MO产生输入并实现三个相关任务:提取单个功能,通过手套处理组数据,利用用户对其自己的群体提供评级,而在MO中,SGRTAB在用户偏好学习的帮助下实现组偏好学习基于TradaBoost算法。具体而言,SGRTAB可以通过传输集合学习的想法有效地吸收对用户偏好的知识进入群体偏好学习的过程。此外,在四个真实数据集上进行了广泛的实验,表明所提出的SGRTAB模型显着优于社会团体建议的最先进的基线。

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