recommenders-team/recommenders

[ASK] Sequential Recommender (SLi_Rec) Questions

Open

#1,040 创建于 2020年1月22日

在 GitHub 查看
 (4 评论) (0 反应) (0 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

When we create a dataset for the predict function in SLi_Rec do we need to start with a label i.e. 1 or 0 and what timestamp should we use? If we use a future timestamp does the model provide a probability based on the timestamp? How about if we use the timestamp for NOW() or a timestamp in the past?

What are the tradeoffs/benefits for min_sequence_len and max_sequence_len in terms of network complexity and compute memory and time?

Is there a way to influence the alpha parameter that balances short-term and long-term?

What were the RAM requirements for the full Amazon dataset and the training data file size?

Any tips on providing the model with a more complex representation for Category. I see that under the hood there is an embedding happening, wondering if there is a way to include a combination of columns.

Other Comments

贡献者指南