基于共同购买数据的分层视觉感知Minimax排序个性化推荐

Xiaoya Chong, Qing Li, Howard Leung, Qianhui Men, Xianjin Chao
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引用次数: 6

摘要

个性化推荐的目的是根据用户的学习偏好对一组项目进行排名。现有的方法通过将用户尚未购买的物品视为负面物品,并假设用户更喜欢他已购买的正面物品而不是负面物品来优化排名函数。该策略是从数据集中排除不相关的项目,以缩小潜在的积极项目的集合,以提高排名的准确性。从卖家的角度来看,这与推荐的目标相冲突,卖家的目标是扩大每个用户的推荐集。在本文中,我们提出了一种新的学习方法,称为分层视觉感知最小最大排序(H-VMMR),其中提出了预测抽样的新概念,对与积极项目(例如替代品,赞美)密切相关的项目进行抽样,从而消除了这一限制。我们通过最大化积极和消极项目之间的偏好差异,以及最小化基于视觉特征的积极和预测项目之间的差距来建立问题。我们还建立了基于共同购买数据的分层学习模型,以解决数据稀疏性问题。我们的方法能够在排序过程中扩大潜在的正项目和真负项目的集合。实验结果表明,我们的H-VMMR学习方法优于目前最先进的学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Visual-aware Minimax Ranking Based on Co-purchase Data for Personalized Recommendation
Personalized recommendation aims at ranking a set of items according to the learnt preferences of the user. Existing methods optimize the ranking function by considering an item that the user has not bought yet as a negative item and assuming that the user prefers the positive item that he has bought to the negative item. The strategy is to exclude irrelevant items from the dataset to narrow down the set of potential positive items to improve ranking accuracy. It conflicts with the goal of recommendation from the seller’s point of view, which aims to enlarge that set for each user. In this paper, we diminish this limitation by proposing a novel learning method called Hierarchical Visual-aware Minimax Ranking (H-VMMR), in which a new concept of predictive sampling is proposed to sample items in a close relationship with the positive items (e.g., substitutes, compliments). We set up the problem by maximizing the preference discrepancy between positive and negative items, as well as minimizing the gap between positive and predictive items based on visual features. We also build a hierarchical learning model based on co-purchase data to solve the data sparsity problem. Our method is able to enlarge the set of potential positive items as well as true negative items during ranking. The experimental results show that our H-VMMR outperforms the state-of-the-art learning methods.
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