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A Comparative Study of Outfit Recommendation Methods with a Focus on Attention-based Fusion

机译:封装推荐方法的比较研究,重点关注关注基于关注的融合

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摘要

In recent years, deep learning-based recommender systems have received increasing attention, as deep neural networks can detect important product features in images and text descriptions and capture them in semantic vector representations of items. This is especially relevant for outfit recommendation, since a variety of fashion product features play a role in creating outfits. This work is a comparative study of fusion methods for outfit recommendation that combine relevant product features extracted from visual and textual data in semantic, multimodal item representations. We compare traditional fusion methods with attention-based fusion methods, which are designed to focus on the fine-grained product features of items. We evaluate the fusion methods on four benchmark datasets for outfit recommendation and provide insights into the importance of the multimodality and granularity of the fashion item representations. We find that the visual and textual item data not only share product features but also contain complementary product features for the outfit recommendation task, confirming the need to effectively combine them into multimodal item representations. Furthermore, we show that the average performance of attention-based fusion methods surpasses the average performance of traditional fusion methods on three out of the four benchmark datasets, demonstrating the ability of attention to learn relevant correlations among fine-grained fashion attributes.
机译:近年来,基于深度学习的推荐制度受到越来越关注,因为深度神经网络可以检测图像和文本描述中的重要产品特征,并在项目的语义矢量表示中捕获它们。这与填写建议特别相关,因为各种时尚产品特征在创建服装方面发挥作用。这项工作是融合方法的融合方法,用于结合语义,多模式表示中的视觉和文本数据中提取的相关产品特征。我们将传统的融合方法与基于注意的融合方法进行比较,这些方法旨在专注于物品的细粒度产品特征。我们评估了四个基准数据集的融合方法,以便推荐推荐,并提供对时尚项目表示的多层性和粒度的重要性的见解。我们发现视觉和文本项目数据不仅共享产品功能,还包含套装推荐任务的互补产品功能,确认需要有效地将它们组合成多式化项目表示。此外,我们表明,关注的融合方法的平均性能超过了四个基准数据集中的三个中传统融合方法的平均性能,展示了注意力学习细粒度时尚属性之间相关相关性的能力。

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