Language-Agnostic Representation Learning for Product Search on E-Commerce Platforms

Aman Ahuja, Nikhil S. Rao, S. Katariya, Karthik Subbian, C. Reddy
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引用次数: 19

Abstract

Product search forms an indispensable component of any e-commerce service, and helps customers find products of their interest from a large catalog on these websites. When products that are irrelevant to the search query are surfaced, it leads to a poor customer experience, thus reducing user trust and increasing the likelihood of churn. While identifying and removing such results from product search is crucial, doing so is a burdensome task that requires large amounts of human annotated data to train accurate models. This problem is exacerbated when products are cross-listed across countries that speak multiple languages, and customers specify queries in multiple languages and from different cultural contexts. In this work, we propose a novel multi-lingual multi-task learning framework, to jointly train product search models on multiple languages, with limited amount of training data from each language. By aligning the query and product representations from different languages into a language-independent vector space of queries and products, respectively, the proposed model improves the performance over baseline search models in any given language. We evaluate the performance of our model on real data collected from a leading e-commerce service. Our experimental evaluation demonstrates up to 23% relative improvement in the classification F1-score compared to the state-of-the-art baseline models.
面向电子商务平台产品搜索的语言不可知表示学习
产品搜索是任何电子商务服务中不可或缺的组成部分,它可以帮助客户从这些网站上的大量目录中找到他们感兴趣的产品。当与搜索查询无关的产品出现时,它会导致糟糕的客户体验,从而降低用户信任并增加流失的可能性。虽然从产品搜索中识别和删除此类结果至关重要,但这样做是一项繁重的任务,需要大量的人工注释数据来训练准确的模型。当产品在使用多种语言的国家之间交叉上市,并且客户使用多种语言和不同的文化背景指定查询时,这个问题就会加剧。在这项工作中,我们提出了一种新的多语言多任务学习框架,在每种语言的有限训练数据的情况下,在多种语言上联合训练产品搜索模型。通过将来自不同语言的查询和产品表示分别对齐到独立于语言的查询和产品向量空间中,所提出的模型比使用任何给定语言的基线搜索模型提高了性能。我们根据从一个领先的电子商务服务收集的真实数据来评估我们的模型的性能。我们的实验评估表明,与最先进的基线模型相比,分类f1得分相对提高了23%。
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