deep learning frame for recommendation algorithm
Project description
easyrec:一个简单易用的pytorch推荐框架
目的:
该框架目的是方便研究人员快速搭建自己的推荐算法。
该框架参考于DeepCTR、 DeepCTR-Torch、fun-rec、Recommender-System-with-TF2.0
框架在输入层使用了更灵活的接口方便研究人员的使用。
框架流程
1.导入数据集
2.定义输入以及输出
3.建立模型
4.评测
模型搭建方法:
-
继承Base类
-
__init__
的编写def model(Base): def __init__(self,)
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