论文标题

Curatornet:视觉意识到艺术图像的建议

CuratorNet: Visually-aware Recommendation of Art Images

论文作者

Messina, Pablo, Cartagena, Manuel, Cerda-Mardini, Patricio, del Rio, Felipe, Parra, Denis

论文摘要

尽管在时尚甚至电影等领域中有几种视觉意识到的推荐模型,但尽管在线艺术品市场最近增长,但艺术领域仍缺乏研究水平的关注。为了减少这一差距,在本文中,我们介绍了一种神经网络架构,用于视觉吸引艺术图像的建议。 Curatornet的设计核心是最大化概括的目标:该网络具有固定的参数,仅需要一次培训一次,此后,TheSodel能够推广到新用户或从未见过的新用户或项目,而没有进一步的培训。这是通过利用可录像带来实现的:项目通过视觉嵌入将项目向量映射到项目向量,并通过汇总所消耗的项目的可算置来映射到用户向量。除了模型体系结构外,我们还介绍了新颖的三重态采样策略,以在艺术领域中建立用于等级学习的疗程,从而使学习比幼稚的随机抽样更有效。通过评估物理绘画的真实数据集,我们表明Curatornet在包括最先进的Model VBPR在内的几个基线中实现了最佳性能。 Curatornet是在艺术领域进行的激励和评估,但是可以调整其建筑和培训仪,以在其他领域推荐图像

Although there are several visually-aware recommendation models in domains like fashion or even movies, the art domain lacks thesame level of research attention, despite the recent growth of the online artwork market. To reduce this gap, in this article we introduceCuratorNet, a neural network architecture for visually-aware recommendation of art images. CuratorNet is designed at the core withthe goal of maximizing generalization: the network has a fixed set of parameters that only need to be trained once, and thereafter themodel is able to generalize to new users or items never seen before, without further training. This is achieved by leveraging visualcontent: items are mapped to item vectors through visual embeddings, and users are mapped to user vectors by aggregating the visualcontent of items they have consumed. Besides the model architecture, we also introduce novel triplet sampling strategies to build atraining set for rank learning in the art domain, resulting in more effective learning than naive random sampling. With an evaluationover a real-world dataset of physical paintings, we show that CuratorNet achieves the best performance among several baselines,including the state-of-the-art model VBPR. CuratorNet is motivated and evaluated in the art domain, but its architecture and trainingscheme could be adapted to recommend images in other areas

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