论文标题

会议感知建议:对最新的一个令人惊讶的追求

Session-aware Recommendation: A Surprising Quest for the State-of-the-art

论文作者

Latifi, Sara, Mauro, Noemi, Jannach, Dietmar

论文摘要

推荐系统旨在帮助用户在信息过载的情况下。近年来,我们观察到对基于会话的建议方案的兴趣增加,在这种情况下,问题是仅根据正在进行的会话中观察到的互动向用户提出项目建议。但是,如果可用以前的用户会话进行互动,则可以根据用户的长期偏好(称为session-awawawawaenawawawawawawaenawawawawawawawawawawawawawawawawawawawawawaweawawawawaweawawawawawawawawawawawawawawawawawawawawawawawaence''提供了个性化建议。如今,该领域的研究分散了,许多现有作品仅将会话了解与基于会话的模型进行比较。这使得了解什么代表最先进的事情变得具有挑战性。为了缩小这一研究差距,我们对彼此的近期会话感知算法进行了基准测试,并针对许多基于会话的建议算法和琐碎的扩展。令人惊讶的是,我们的比较表明,基于最近的邻居的项目简单技术始终超过最近的神经技术,并且(ii)会话感知模型大多不比不使用长期偏好信息的方法更好。因此,我们的工作不仅指出了将新方法与弱基线进行比较的潜在方法论问题,而且还表明,对于更复杂的会话感知推荐算法仍然存在巨大的潜力。

Recommender systems are designed to help users in situations of information overload. In recent years, we observed increased interest in session-based recommendation scenarios, where the problem is to make item suggestions to users based only on interactions observed in an ongoing session. However, in cases where interactions from previous user sessions are available, the recommendations can be personalized according to the users' long-term preferences, a process called session-aware recommendation. Today, research in this area is scattered and many existing works only compare session-aware with session-based models. This makes it challenging to understand what represents the state-of-the-art. To close this research gap, we benchmarked recent session-aware algorithms against each other and against a number of session-based recommendation algorithms and trivial extensions thereof. Our comparison, to some surprise, revealed that (i) item simple techniques based on nearest neighbors consistently outperform recent neural techniques and that (ii) session-aware models were mostly not better than approaches that do not use long-term preference information. Our work therefore not only points to potential methodological issues where new methods are compared to weak baselines, but also indicates that there remains a huge potential for more sophisticated session-aware recommendation algorithms.

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