As the final stage of the multi-stage recommender system (MRS), reranking directly affects users' experience and satisfaction, thus playing a critical role in MRS. Despite the improvement achieved in the existing work, three issues are yet to be solved. First, users' historical behaviors contain rich preference information, such as users' long and short-term interests, but are not fully exploited in reranking. Previous work typically treats items in history equally important, neglecting the dynamic interaction between the history and candidate items. Second, existing reranking models focus on learning interactions at the item level while ignoring the fine-grained feature-level interactions. Lastly, estimating the reranking score on the ordered initial list before reranking may lead to the early scoring problem, thereby yielding suboptimal reranking performance. To address the above issues, we propose a framework named Multi-level Interaction Reranking (MIR). MIR combines low-level cross-item interaction and high-level set-to-list interaction, where we view the candidate items to be reranked as a set and the users' behavior history in chronological order as a list. We design a novel SLAttention structure for modeling the set-to-list interactions with personalized long-short term interests. Moreover, feature-level interactions are incorporated to capture the fine-grained influence among items. We design MIR in such a way that any permutation of the input items would not change the output ranking, and we theoretically prove it. Extensive experiments on three public and proprietary datasets show that MIR significantly outperforms the state-of-the-art models using various ranking and utility metrics.
翻译:由于多阶段建议系统(MRS)的最后阶段,重新排序直接影响到用户的经验和满意度,从而在最低服务级中发挥关键的作用。尽管现有工作取得了改进,但有三个问题尚待解决。首先,用户的历史行为包含丰富的偏好信息,例如用户的长期和短期利益,但在重新排序中没有得到充分利用。以往的工作通常处理历史中的项目,忽视历史和候选项目之间的动态互动。第二,现有的重新排序模式侧重于在项目一级学习互动,而忽视细微的特异功能级互动。最后,在重新排序之前,在预定的初步名单上估计排序得分可能导致早期评分问题,从而产生次优异的重新排序业绩。为了解决上述问题,我们提出了一个名为多层次互动升级(MIR)的框架。MIR将低层次跨项目互动与高层次的定位到列表互动结合起来,我们把候选项目重新排序为一组,而用户的行为史则按时间顺序排列为一个细数级的标准列表。我们设计了一个新版的高级服务级(MIR)互动模型,用高层次(MIR)的模型来大幅评估长期互动。