Precise user modeling is critical for online personalized recommendation services. Generally, users' interests are diverse and are not limited to a single aspect, which is particularly evident when their behaviors are observed for a longer time. For example, a user may demonstrate interests in cats/dogs, dancing and food \& delights when browsing short videos on Tik Tok; the same user may show interests in real estate and women's wear in her web browsing behaviors. Traditional models tend to encode a user's behaviors into a single embedding vector, which do not have enough capacity to effectively capture her diverse interests. This paper proposes a Sequential User Matrix (SUM) to accurately and efficiently capture users' diverse interests. SUM models user behavior with a multi-channel network, with each channel representing a different aspect of the user's interests. User states in different channels are updated by an \emph{erase-and-add} paradigm with interest- and instance-level attention. We further propose a local proximity debuff component and a highway connection component to make the model more robust and accurate. SUM can be maintained and updated incrementally, making it feasible to be deployed for large-scale online serving. We conduct extensive experiments on two datasets. Results demonstrate that SUM consistently outperforms state-of-the-art baselines.
翻译:精确的用户模型对于在线个人化推荐服务至关重要。 一般来说, 用户的兴趣是多种多样的, 并不局限于一个单一的嵌入矢量, 无法有效捕捉用户的不同利益。 本文提出一个序列用户矩阵(SUM), 以准确和高效地捕捉用户的不同利益。 SUM模式用户行为模式, 使用多通道网络, 每个频道都代表用户利益的不同方面。 不同频道的用户状态都通过一个具有兴趣和实例级的样板进行更新。 我们进一步提议一个本地近距离的嵌入矢量和高速公路连接组件, 以便让模型更加可靠和准确。 SUM 能够持续更新和不断更新SUM 数据库, 并不断更新SUM 数据库, 以更新和升级数据库。