时序推荐的多兴趣网络

Jiayi Ma, Tianhao Sun, Xiaodong Zhang
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引用次数: 0

摘要

基于多兴趣框架的顺序推荐旨在基于历史交互分析兴趣的不同方面,并生成用户对项目列表的潜在兴趣的预测。大多数现有的方法只关注交互背后的多重兴趣,而忽略了用户兴趣随时间的演变。为了探索时间动态对兴趣提取的影响,本文明确地用多兴趣网络对时间戳进行建模,并提出了一个时间突出网络来学习用户偏好,该网络不仅考虑了不同时刻的兴趣,而且考虑了兴趣随时间的可能趋势。更具体地说,历史相互作用和预测时刻之间的时间间隔首先映射到向量。同时,设计了一个时间关注聚合层来捕捉序列中项目随时间的趋势,其中时间间隔被视为区分不同邻居重要性的附加信息。然后,通过一个门控单元将学习到的项目的转换趋势与项目本身聚合在一起。最后,利用获得的时间信息向量,利用自关注网络捕获多个兴趣点。基于三个真实世界的数据集进行了广泛的实验,结果令人信服地证明了所提出的方法在模型性能方面优于其他最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Highlighted Multi-Interest Network for Sequential Recommendation
Sequential recommendation based on a multi-interest framework aims to analyze different aspects of interest based on historical interactions and generate predictions of a user’s potential interest in a list of items. Most existing methods only focus on what are the multiple interests behind interactions but neglect the evolution of user interests over time. To explore the impact of temporal dynamics on interest extraction, this paper explicitly models the timestamp with a multi-interest network and proposes a time-highlighted network to learn user preferences, which considers not only the interests at different moments but also the possible trends of interest over time. More specifically, the time intervals between historical interactions and prediction moments are first mapped to vectors. Meanwhile, a time-attentive aggregation layer is designed to capture the trends of items in the sequence over time, where the time intervals are seen as additional information to distinguish the importance of different neighbors. Then, the learned items’ transition trends are aggregated with the items themselves by a gated unit. Finally, a self-attention network is deployed to capture multiple interests with the obtained temporal information vectors. Extensive experiments are carried out based on three real-world datasets and the results convincingly establish the superiority of the proposed method over other state-of-the-art baselines in terms of model performance.
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