冷启动顺序推荐的多模态元学习

Xingyu Pan, Yushuo Chen, Changxin Tian, Zihan Lin, Jinpeng Wang, He Hu, Wayne Xin Zhao
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引用次数: 12

摘要

在本文中,我们研究了冷启动顺序推荐的任务,其中新用户具有非常短的交互序列随着时间的推移而出现。我们将这个问题视为一个少量学习问题,并采用元学习方法来开发我们的解决方案。对于我们的任务,有效知识转移的主要障碍是元学习的新旧交互序列之间存在显著的特征差异。为了解决上述问题,我们采用了一种多模态元学习(MML)方法,该方法将项目(如文本和图像)的多模态侧信息整合到元学习过程中,以稳定和改进冷启动顺序推荐的元学习过程。具体而言,我们针对每种模态设计了一组多模态元学习器,其中ID特征用于开发主元学习器,其余文本和图像特征用于开发辅助元学习器。我们不是简单地梳理来自不同元学习器的预测,而是设计了一个自适应的、可学习的融合层来整合基于不同模式的预测。同时,我们设计了一个冷启动的项目嵌入生成器,利用多模态侧信息对新项目的ID嵌入进行预热。大量的离线和在线实验表明,与基线模型相比,MML可以显著提高冷启动用户的推荐性能。我们的代码发布在https://github.com/RUCAIBox/MML。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Meta-Learning for Cold-Start Sequential Recommendation
In this paper, we study the task of cold-start sequential recommendation, where new users with very short interaction sequences come with time. We cast this problem as a few-shot learning problem and adopt a meta-learning approach to developing our solution. For our task, a major obstacle of effective knowledge transfer that is there exists significant characteristic divergence between old and new interaction sequences for meta-learning. To address the above issues, we purpose a Multimodal MetaLearning (denoted as MML) approach that incorporates multimodal side information of items (e.g., text and image) into the meta-learning process, to stabilize and improve the meta-learning process for cold-start sequential recommendation. In specific, we design a group of multimodal meta-learners corresponding to each kind of modality, where ID features are used to develop the main meta-learner and the rest text and image features are used to develop auxiliary meta-learners. Instead of simply combing the predictions from different meta-learners, we design an adaptive, learnable fusion layer to integrate the predictions based on different modalities. Meanwhile, we design a cold-start item embedding generator, which utilize multimodal side information to warm up the ID embeddings of new items. Extensive offline and online experiments demonstrate that MML can significantly improve the recommendation performance for cold-start users compared with baseline models. Our code is released at https://github.com/RUCAIBox/MML.
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