基于知识图谱的推荐系统项目完整代码(附带数据集)

上传者: chengbi0653 | 上传时间: 2021-03-19 21:02:03 | 文件大小: 1.8MB | 文件类型: ZIP
基于知识图谱的推荐系统项目完整代码
数据集在data文件夹下
数据集为txt模式,分为训练集、验证集以及测试集

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  • xiezi_1015 :
    瞎扯,浪费劳资一次下载,什么都没有
    2020-05-22

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