时尚产品的可解释多模态检索

Lizi Liao, Xiangnan He, Bo Zhao, C. Ngo, Tat-Seng Chua
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引用次数: 59

摘要

深度学习方法已成功应用于时尚检索。然而,学习到的特征向量的潜在意义阻碍了对检索结果的解释和用户反馈的整合。幸运的是,有许多在线购物网站根据产品分类和领域知识将时尚产品组织成层次结构。这种结构有助于揭示人类如何感知时尚产品之间的相关性。然而,将结构化知识整合到深度学习中仍然是一个具有挑战性的问题。本文提出了在深度学习中组织和利用时尚层次结构的技术,以促进搜索结果和用户意图的推理。我们工作的新颖性源于EI (Exclusive & Independent)树的发展,它可以与深度模型合作进行端到端多模态学习。EI树将时尚概念组织成多个语义层次,并以互斥约束和独立约束增强了树结构。它描述了兄弟概念之间的不同关系,并指导多层次时尚语义的端到端学习。从EI树中,我们学习到一个明确的层次相似函数来描述时尚产品之间的语义相似度。它促进了集成概念级反馈的可解释检索方案。在两个大型时尚数据集上的实验结果表明,该方法可以准确地表征时尚产品之间的语义相似度,准确地捕捉用户的搜索意图,从而获得比现有方法更准确的搜索结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Multimodal Retrieval for Fashion Products
Deep learning methods have been successfully applied to fashion retrieval. However, the latent meaning of learned feature vectors hinders the explanation of retrieval results and integration of user feedback. Fortunately, there are many online shopping websites organizing fashion items into hierarchical structures based on product taxonomy and domain knowledge. Such structures help to reveal how human perceive the relatedness among fashion products. Nevertheless, incorporating structural knowledge for deep learning remains a challenging problem. This paper presents techniques for organizing and utilizing the fashion hierarchies in deep learning to facilitate the reasoning of search results and user intent. The novelty of our work originates from the development of an EI (Exclusive & Independent) tree that can cooperate with deep models for end-to-end multimodal learning. EI tree organizes the fashion concepts into multiple semantic levels and augments the tree structure with exclusive as well as independent constraints. It describes the different relationships among sibling concepts and guides the end-to-end learning of multi-level fashion semantics. From EI tree, we learn an explicit hierarchical similarity function to characterize the semantic similarities among fashion products. It facilitates the interpretable retrieval scheme that can integrate the concept-level feedback. Experiment results on two large fashion datasets show that the proposed approach can characterize the semantic similarities among fashion items accurately and capture user's search intent precisely, leading to more accurate search results as compared to the state-of-the-art methods.
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