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A new algorithm based on bipartite graph networks for improving aggregate recommendation diversity

机译:一种基于二分拉网网络的新算法,提高总推荐多样性

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Most of the traditional recommendation algorithms focus on the accuracy of recommendation results; however, the diversity of recommendation results is also important, which can be used to avoid the long-tail phenomenon. In this paper, a new algorithm for improving aggregate recommendation diversity is proposed. Firstly, a candidate recommendation list based on predictive scores is constructed; and then a bipartite graph network model is constructed. Secondly, item capacity is set to limit the number of recommendations of popular items. Finally, the final recommendation result is generated by combining the recommendation augmenting path. Based on the real world movie rating datasets, experiment results show that the proposed algorithm can effectively guarantee the accuracy of the recommendation results as well as improved the aggregate diversity of the recommendation.
机译:大多数传统推荐算法专注于推荐结果的准确性;然而,推荐结果的多样性也很重要,可用于避免长尾现象。本文提出了一种改进总体推荐多样性的新算法。首先,构建了基于预测分数的候选推荐列表;然后构建了双方图形网络模型。其次,项目容量设定为限制流行项目的建议数。最后,通过组合推荐增强路径来生成最终推荐结果。基于现实世界电影评级数据集,实验结果表明,该算法可以有效保证建议结果的准确性以及提高了建议的总多样性。

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