recommenders-team/recommenders

Question about Wide and Deep Model for Movie Recommendation

Open

#1,206 创建于 2020年9月23日

在 GitHub 查看
 (0 评论) (1 反应) (1 负责人)Python (2,972 fork)batch import
help wanted

仓库指标

Star
 (17,706 star)
PR 合并指标
 (平均合并 6天 16小时) (30 天内合并 10 个 PR)

描述

Description

in this example there are some itemID(movie_id) in test data that they don't exists in train data, so during training the model can't build or it is better to say "can't update" embedding for them. in normal situation it's not a problem but "ranking_pool" that was used for evaluation also contains these itemIDs pair with some userIDs therefore they have negative affects on evaluation metric like NDCG because we multiplied some random vectors with learned user vectors. Is there any reason for doing so?

贡献者指南