The Minority Matters: A Diversity-Promoting Collaborative Metric Learning Algorithm
Shilong Bao, Qianqian Xu, Zhiyong Yang, Yuan He, Xiaochun Cao,, Qingming Huang

TL;DR
This paper introduces DPCML, a novel collaborative metric learning algorithm that uses multiple user representations and diversity regularization to better capture minority interests and improve recommendation accuracy.
Contribution
DPCML is the first to incorporate multiple user embeddings with diversity control in collaborative metric learning for recommendation systems.
Findings
DPCML outperforms existing methods on benchmark datasets.
The diversity regularization improves minority interest representation.
Theoretical analysis shows good generalization to unseen data.
Abstract
Collaborative Metric Learning (CML) has recently emerged as a popular method in recommendation systems (RS), closing the gap between metric learning and Collaborative Filtering. Following the convention of RS, existing methods exploit unique user representation in their model design. This paper focuses on a challenging scenario where a user has multiple categories of interests. Under this setting, we argue that the unique user representation might induce preference bias, especially when the item category distribution is imbalanced. To address this issue, we propose a novel method called \textit{Diversity-Promoting Collaborative Metric Learning} (DPCML), with the hope of considering the commonly ignored minority interest of the user. The key idea behind DPCML is to include a multiple set of representations for each user in the system. Based on this embedding paradigm, user preference…
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Taxonomy
TopicsFace recognition and analysis · Recommender Systems and Techniques · Emotion and Mood Recognition
