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Sequence Data Enhancement Method Based on Knowledge Graph

机译:基于知识图的序列数据增强方法

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To solve the problem of low recommendation accuracy caused by too little user behavior information in the current behavior recommendation system, an algorithm based on end-to-end data enhancement was proposed. In this paper, knowledge graph is constructed by learning and integrating structured knowledge network. Moreover, the characteristics of users with high preference similarity can be propagated through the inter-entity relations mapped by the knowledge map to reconstruct the preference vector of users. Through comparative experiments on open data sets, the AUC of RNN model, CNN model, RNN attention model and ATRank were improved by 3.28%, 2.35%, 2.89% and 1.30%, respectively.
机译:为了解决在当前行为推荐系统中的用户行为信息太少的低建议准确性的问题,提出了一种基于端到端数据增强的算法。在本文中,通过学习和整合结构化知识网络构建知识图。此外,具有高偏好相似性的用户的特征可以通过由知识映射映射的实体间关系来重建用户的偏好向量。通过对比较数据集的比较实验,RNN模型,CNN模型,RNN注意模型和Atrank的AUC分别提高了3.28%,2.35%,2.89%和1.30%。

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