基于会话推荐的双变压器编码器

P. H. Anh, Ngo Xuan Bach, Tu Minh Phuong
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引用次数: 0

摘要

当长期用户不可用时,使用基于会话的推荐方法从基于匿名会话的数据中预测用户的下一步操作。基于会话的推荐的最新进展强调了不仅要对用户的顺序行为建模,还要对用户在会话中的主要兴趣建模,同时避免意外点击导致用户兴趣漂移的影响。在这项工作中,我们提出了一个双变压器编码器推荐模型(DTER)作为解决这一需求的解决方案。其思想是结合以下方法:(1)基于transformer的模型,该模型具有双编码器,能够对顺序模式和会话中用户的主要兴趣进行建模;(2)一种新的推荐模型,该模型通过对会话前缀的所有排列进行条件反射来学习更丰富的会话上下文。这种方法提供了一个统一的框架,在考虑用户对会话的主要兴趣的同时,利用Transformer在会话序列建模中的自关注机制的能力。我们在两个基准数据集上对所提出的方法进行了实证评估。结果表明,DTER在常用评价指标上优于最先进的基于会话的推荐方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DUAL TRANSFORMER ENCODERS FOR SESSION-BASED RECOMMENDATION
When long-term user proles are not available, session-based recommendation methods are used to predict the user's next actions from anonymous sessions-based data. Recent advances in session-based recommendation highlight the necessity of modeling not only user sequential behaviors but also the user's main interest in a session, while avoiding the eect of unintended clicks causing interest drift of the user. In this work, we propose a Dual Transformer Encoder Recommendation model (DTER) as a solution to address this requirement. The idea is to combine the following recipes: (1) a Transformer-based model with dual encoders capable of modeling both sequential patterns and the main interest of the user in a session; (2) a new recommendation model that is designed for learning richer session contexts by conditioning on all permutations of the session prex. This approach provides a unied framework for leveraging the ability of the Transformer's self-attention mechanism in modeling session sequences while taking into account the user's main interest in the session. We empirically evaluate the proposed method on two benchmark datasets. The results show that DTER outperforms state-of-the-art session-based recommendation methods on common evaluation metrics.
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