Feed recommendation allows users to constantly browse items until feel uninterested and leave the session, which differs from traditional recommendation scenarios. Within a session, user's decision to continue browsing or not substantially affects occurrences of later clicks. However, such type of exposure bias is generally ignored or not explicitly modeled in most feed recommendation studies. In this paper, we model this effect as part of intra-session context, and propose a novel intra-session Context-aware Feed Recommendation (INSCAFER) framework to maximize the total views and total clicks simultaneously. User click and browsing decisions are jointly learned by a multi-task setting, and the intra-session context is encoded by the session-wise exposed item sequence. We deploy our model online with all key business benchmarks improved. Our method sheds some lights on feed recommendation studies which aim to optimize session-level click and view metrics.
翻译:Feed建议允许用户不断浏览项目,直到感到不感兴趣并离开会议,这与传统的建议设想方案不同。在届会中,用户决定继续浏览或不严重影响以后点击的发生。然而,这种类型的接触偏差通常在大多数反馈建议研究中被忽略或没有明确建模。在本文中,我们将这种影响作为会期内的一部分进行模型分析,并提议一个新的会期内部内部内部有觉进料建议(INSCAPEFER)框架,以尽量扩大总观点并同时点击总数。用户点击和浏览决定是通过多任务设置共同学习的,而会内背景则由会议暴露的项目序列编码。我们把模型放在网上,所有关键业务基准都得到了改进。我们的方法为旨在优化会议一级点击和查看指标的供料建议研究提供了一些灯光。