撤稿:基于融合特征动态方面表示的跨域推荐
RETRACTED: Cross-Domain Recommendation Based on Dynamic Aspect Representation of Fusion Features
摘要:

撤稿声明“ 基于融合特征动态方面表示的跨域推荐”一文刊登在202010月出版的《计算机科学与应用》2020年第10卷第10期第1879-1887页上。作者发现文中的实验数据以及公式有误,需进一步修改。根据国际出版流程,编委会现决定撤除此稿件:何雅芳, 刘兴林, 郑小柏. 基于融合特征动态方面表示的跨域推荐[J]. 计算机科学与应用, 2020, 10(10): 1879-1887. https://doi.org/10.12677/CSA.2020.1010198

Abstract:
文章引用:  

参考文献

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