论文标题

有效地使用长时间和简短的会议进行基于多课的建议

Effectively Using Long and Short Sessions for Multi-Session-based Recommendations

论文作者

Wang, Zihan, Wu, Gang, Wang, Yan

论文摘要

仅基于一个当前的一次会话就不准确。因此,基于多课程的建议(MSBR)是解决问题的解决方案。与以前的MSBR模型相比,我们在本文中取得了三个改进。首先,以前的工作选择使用用户和/或其类似用户的所有历史记录会话。当用户当前的兴趣与过去发生很大变化时,这些会话中的大多数只能产生负面影响。因此,我们从数据集中选择大量随机选择的会话作为候选会话,以避免过度取决于历史记录数据。然后,我们只选择使用最相似的会话来获取最有用的信息,同时减少不同会话引起的噪音。其次,在现实世界数据集中,简短的会议占很大比例。以前工作中经常使用的RNN不适合处理简短的会话,因为RNN仅着眼于顺序关系,我们发现这不是简短课程中项目之间唯一的关系。因此,我们设计了一种更合适的方法,该方法基于对过程简短会议的关注。第三,尽管很少的会议,但不能忽略它们。我们不像以前的模型那样以与简短的会话相同的方式处理长时间的模型,我们建议LSIS可以更好地利用长时间的会话。最后,为了帮助建议,我们还考虑了用户多层GRU捕获的长期利益。考虑到上面的四个点,我们构建了模型Enirec。两个现实世界数据集的实验表明,ENIREC的全面性能比其他现有模型更好。

It is not accurate to make recommendations only based one single current session. Therefore, multi-session-based recommendation(MSBR) is a solution for the problem. Compared with the previous MSBR models, we have made three improvements in this paper. First, the previous work choose to use all the history sessions of the user and/or of his similar users. When the user's current interest changes greatly from the past, most of these sessions can only have negative impacts. Therefore, we select a large number of randomly chosen sessions from the dataset as candidate sessions to avoid over depending on history data. Then we only choose to use the most similar sessions to get the most useful information while reduce the noise caused by dissimilar sessions. Second, in real-world datasets, short sessions account for a large proportion. The RNN often used in previous work is not suitable to process short sessions, because RNN only focuses on the sequential relationship, which we find is not the only relationship between items in short sessions. So, we designed a more suitable method named GAFE based on attention to process short sessions. Third, Although there are few long sessions, they can not be ignored. Not like previous models, which simply process long sessions in the same way as short sessions, we propose LSIS, which can split the interest of long sessions, to make better use of long sessions. Finally, to help recommendations, we also have considered users' long-term interests captured by a multi-layer GRU. Considering the four points above, we built the model ENIREC. Experiments on two real-world datasets show that the comprehensive performance of ENIREC is better than other existing models.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源