为电子商务应用快速检索多模态嵌入信息

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Alessandro Abluton, Daniele Ciarlo, Luigi Portinale
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引用次数: 0

摘要

在本文中,我们介绍了一个专为电子商务应用设计的检索框架,该框架采用多模态方法来表示感兴趣的项目。这种方法结合了产品的文字描述和图片,并采用了对位置敏感的哈希(LSH)索引方案,用于快速检索潜在的相关产品。我们的重点是一种与数据无关的方法,索引机制不受特定数据集的影响,而多模态表示则是事先学习的。具体来说,我们利用多模态架构 CLIP,以对比方式结合文本和图像来学习项目的潜在表示。由此产生的项目嵌入包涵了产品的视觉和文本信息,然后对其进行各种类型的 LSH,以在结果质量和检索速度之间取得平衡。我们介绍了在两个真实世界数据集上进行的实验结果,这些数据集来自电子商务平台,包括产品图片和文本描述。实验取得了令人满意的结果,显示了良好的检索时间和平均精确度。这些结果是通过使用专门选定的查询集和使用大型语言模型生成的合成查询对该方法进行测试后得出的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast retrieval of multi-modal embeddings for e-commerce applications
In this paper, we introduce a retrieval framework designed for e-commerce applications, which employs a multi-modal approach to represent items of interest. This approach incorporates both textual descriptions and images of products, alongside a locality-sensitive hashing (LSH) indexing scheme for rapid retrieval of potentially relevant products. Our focus is on a data-independent methodology, where the indexing mechanism remains unaffected by the specific dataset, while the multi-modal representation is learned beforehand. Specifically, we utilize a multi-modal architecture, CLIP, to learn a latent representation of items by combining text and images in a contrastive manner. The resulting item embeddings encapsulate both the visual and textual information of the products, which are then subjected to various types of LSH for balancing between result quality and retrieval speed. We present the findings of our experiments conducted on two real-world datasets sourced from e-commerce platforms, comprising both product images and textual descriptions. Promising results have been achieved, demonstrating favorable retrieval time and average precision. These results were obtained through testing the approach with a specifically selected set of queries and with synthetic queries generated using a Large Language Model.
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CiteScore
2.10
自引率
0.00%
发文量
22
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