Learning Users’ Preferred Visual Styles in an Image Marketplace

Raul Gomez Bruballa, Lauren Burnham-King, Alessandra Sala
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引用次数: 1

Abstract

Providing meaningful recommendations in a content marketplace is challenging due to the fact that users are not the final content consumers. Instead, most users are creatives whose interests, linked to the projects they work on, change rapidly and abruptly. To address the challenging task of recommending images to content creators, we design a RecSys that learns visual styles preferences transversal to the semantics of the projects users work on. We analyze the challenges of the task compared to content-based recommendations driven by semantics, propose an evaluation setup, and explain its applications in a global image marketplace.
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在图像市场中学习用户的首选视觉风格
在内容市场中提供有意义的推荐具有挑战性,因为用户不是最终的内容消费者。相反,大多数用户都是创造性的,他们的兴趣与他们所从事的项目联系在一起,变化迅速而突然。为了解决向内容创建者推荐图像的挑战性任务,我们设计了一个RecSys,它可以学习与用户工作的项目语义横向的视觉样式偏好。与语义驱动的基于内容的推荐相比,我们分析了该任务的挑战,提出了一个评估设置,并解释了其在全球图像市场中的应用。
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