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Learning Discrete Hashing Towards Efficient Fashion Recommendation

机译:学习离散哈希以获取有效的时尚推荐

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摘要

In our daily life, how to match clothing well is always a troublesome problem especially when we are shopping online to select a pair of matched pieces of clothing from tens of thousands available selections. To help common customers overcome selection issues, recent studies in the recommender system area have started to infer the fashion matching results automatically. The traditional fashion recommendation is normally achieved by considering visual similarity of clothing items or/and item co-purchase history from existing shopping transactions. Due to the high complexity of visual features and the lack of historical item purchase records, most of the existing work is unlikely to make an efficient and accurate recommendation. To address the problem, in this paper, we propose a new model called Discrete Supervised Fashion Coordinates Hashing. Its main objective is to learn meaningful yet compact high-level features of clothing items, which are represented as binary hash codes. In detail, this learning process is supervised by a clothing matching matrix, which is initially constructed based on limited known matching pairs and subsequently on the self-augmented ones. The proposed model jointly learns the intrinsic matching patterns from the matching matrix and the binary representations from the clothing items’ images, where the visual feature of each clothing item is discretized into a fixed-length binary vector. The binary representation learning significantly reduces the memory cost and accelerates the recommendation speed. The experiments compared with several state-of-the-art approaches have evidenced the superior performance of the proposed approach on efficient fashion recommendation.
机译:在我们的日常生活中,如何很好地搭配衣服总是一个麻烦的问题,尤其是当我们在网上购物时,从成千上万种可供选择的衣服中选择一副搭配的衣服。为了帮助普通客户克服选择问题,推荐系统领域中的最新研究已开始自动推断时尚匹配结果。通常,通过考虑服装项目或/和来自现有购物交易的项目共同购买历史的视觉相似性来实现传统的时尚推荐。由于视觉功能的高度复杂性以及缺乏历史项目的购买记录,因此大多数现有工作不太可能提出有效且准确的建议。为了解决这个问题,在本文中,我们提出了一种称为离散监督时尚坐标散列的新模型。它的主要目的是学习有意义且紧凑的服装高级特征,这些特征以二进制哈希码表示。详细地,该学习过程由服装匹配矩阵监督,该服装匹配矩阵首先基于有限的已知匹配对构造,然后基于自增广的匹配对构造。所提出的模型从匹配矩阵中学习固有的匹配模式,并从服装的图像中学习二进制表示,其中每个服装的视觉特征被离散为固定长度的二进制矢量。二进制表示学习大大降低了存储成本并加快了推荐速度。实验与几种最新方法进行了比较,证明了该方法在高效时尚推荐方面的优越性能。

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