The emerging meta- and multi-verse landscape is yet another step towards the more prevalent use of already ubiquitous online markets. In such markets, recommender systems play critical roles by offering items of interest to the users, thereby narrowing down a vast search space that comprises hundreds of thousands of products. Recommender systems are usually designed to learn common user behaviors and rely on them for inference. This approach, while effective, is oblivious to subtle idiosyncrasies that differentiate humans from each other. Focusing on this observation, we propose an architecture that relies on common patterns as well as individual behaviors to tailor its recommendations for each person. Simulations under a controlled environment show that our proposed model learns interpretable personalized user behaviors. Our empirical results on Nielsen Consumer Panel dataset indicate that the proposed approach achieves up to 27.9% performance improvement compared to the state-of-the-art.
翻译:新兴的元和多元景观是朝着更普遍地使用已经普遍存在的在线市场迈出的又一步骤。 在这样的市场中,推荐者系统通过提供用户感兴趣的项目来发挥关键的作用,从而缩小一个由数十万产品组成的庞大搜索空间。推荐者系统通常设计来学习普通用户的行为,并依靠它们进行推理。这个方法虽然有效,但却忽视了将人与人区分开的微妙的特异性。在这种观察中,我们提出了一个依靠共同模式和个人行为来为每个人调整建议的结构。在受控环境中的模拟显示,我们提议的模型学习了可解释的个性化用户行为。我们在Nielsen消费者小组数据集上的经验结果表明,拟议方法与最新技术相比,提高了27.9%的绩效。