Side information is being used extensively to improve the effectiveness of sequential recommendation models. It is said to help capture the transition patterns among items. Most previous work on sequential recommendation that uses side information models item IDs and side information separately, which may fail to fully model the relation between the items and their side information. Moreover, in real-world systems, not all values of item feature fields are available. This hurts the performance of models that rely on side information. Existing methods tend to neglect the context of missing item feature fields, and fill them with generic or special values, e.g., unknown, which might lead to sub-optimal performance. To address the limitation of sequential recommenders with side information, we define a way to fuse side information and alleviate the problem of missing side information by proposing a unified task, namely the missing information imputation (MII), which randomly masks some feature fields in a given sequence of items, including item IDs, and then forces a predictive model to recover them. By considering the next item as a missing feature field, sequential recommendation can be formulated as a special case of MII. We propose a sequential recommendation model, called missing information imputation recommender (MIIR), that builds on the idea of MII and simultaneously imputes missing item feature values and predicts the next item. We devise a dense fusion self-attention (DFSA) mechanism for MIIR to capture all pairwise relations between items and their side information. Empirical studies on three benchmark datasets demonstrate that MIIR, supervised by MII, achieves a significantly better sequential recommendation performance than state-of-the-art baselines.
翻译:目前广泛使用侧边信息来提高顺序建议模式的效力。据说,它有助于捕捉各个项目之间的过渡模式。大多数先前关于顺序建议的工作,分别使用侧边信息模型项目ID和侧信息,可能无法完全模拟项目与其侧信息之间的关系。此外,在现实世界系统中,并非所有项目特性字段的值都可用。这伤害了依赖侧信息的模式的性能。现有方法往往忽视缺失的项目特性字段的背景,并填充这些功能字段的通用或特殊值,例如未知值,这可能导致次优性业绩。为了解决使用侧信息处理顺序建议者的局限性,我们定义了连接侧信息的方法,并通过提出统一的任务,即缺少信息估算(MII),它随机掩盖了某个特定项目序列中的某些功能字段,包括项目捕获标识,然后迫使一个预测模型来恢复这些功能。如果将下一个项目视为缺失的特性字段,可以将顺序建议拟订为MII的特殊性能。我们提议一个顺序建议模型,即连接边端信息端信息端信息端信息,同时标注三号的自我定位项目(我们错误的IMI),然后通过不断更新数据定位的模型来显示一个更好的自我定位。