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Evaluating Session-Based Recommendation Approaches on Datasets from Different Domains

机译:在不同领域的数据集上评估基于会话的推荐方法

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Recommending relevant items of interest for user is the main purpose of recommendation system based on long-term user profiles. However, personal data privacy is becoming a big challenge recently. Thus, recommendation system needs to reduce the dependence on user profiles while still keeping high accuracy on recommendation. Session-based recommendation is a recent proposed approach for recommendation system to overcome the issue of user profiles dependency. The relevance of problem is quite high and has triggered interest among researchers in observing activities of users. It increased a number of proposals for session-based recommendation algorithms that aiming to make prediction of next actions. In this paper, we would like to compare the performance of such algorithms by using various datasets and evaluation metrics. The most recent deep learning approach named GRU4REC [1] and simpler methods based are included in our comparison. Six real-world datasets from three different domains are included in our experiment. Our experiments reveal that in case of numerous unpopular items dataset, GRU4REC's performance is low. However, its performance is significantly increased after applying our proposed sampling method. Therefore, our obtained results suggested that there is still room for improving deep learning session-based recommendation algorithms.
机译:为用户推荐感兴趣的相关项目是基于长期用户配置文件的推荐系统的主要目的。但是,最近,个人数据隐私正成为一个巨大的挑战。因此,推荐系统需要减少对用户简档的依赖性,同时仍然保持推荐的高精度。基于会话的推荐是推荐系统最近提出的一种方法,用于克服用户配置文件依赖性的问题。问题的相关性很高,并且引起了研究人员对用户活动观察的兴趣。它为基于会话的推荐算法增加了许多建议,这些建议旨在预测下一个动作。在本文中,我们想通过使用各种数据集和评估指标来比较这种算法的性能。我们的比较中包括了最新的深度学习方法GRU4REC [1]和基于更简单的方法。我们的实验中包括来自三个不同领域的六个真实世界的数据集。我们的实验表明,在众多不受欢迎的商品数据集的情况下,GRU4REC的性能很低。但是,应用我们提出的采样方法后,其性能将大大提高。因此,我们获得的结果表明,仍存在改进基于深度学习会话的推荐算法的空间。

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