Query intent classification, which aims at assisting customers to find desired products, has become an essential component of the e-commerce search. Existing query intent classification models either design more exquisite models to enhance the representation learning of queries or explore label-graph and multi-task to facilitate models to learn external information. However, these models cannot capture multi-granularity matching features from queries and categories, which makes them hard to mitigate the gap in the expression between informal queries and categories. This paper proposes a Multi-granularity Matching Attention Network (MMAN), which contains three modules: a self-matching module, a char-level matching module, and a semantic-level matching module to comprehensively extract features from the query and a query-category interaction matrix. In this way, the model can eliminate the difference in expression between queries and categories for query intent classification. We conduct extensive offline and online A/B experiments, and the results show that the MMAN significantly outperforms the strong baselines, which shows the superiority and effectiveness of MMAN. MMAN has been deployed in production and brings great commercial value for our company.
翻译:在电商搜索中,查询意图分类旨在帮助客户找到所需的产品,已成为不可或缺的组成部分。现有的查询意图分类模型要么设计更精致的模型以增强查询的表征学习,要么探索标签-图和多任务以帮助模型学习外部信息。然而,这些模型无法从查询和类别中捕获多粒度匹配特征,这使得它们难以弥合非正式查询和类别之间的表达差距。本文提出了一种多粒度匹配注意力网络(MMAN),它包含三个模块:自匹配模块,字符级匹配模块和语义级匹配模块,以全面提取查询和查询类别交互矩阵的特征。这样,模型可以消除查询和类别之间表达差异,达到查询意图分类的目的。我们进行了广泛的离线和在线A/B实验,结果表明,MMAN显著优于强基线,这说明了MMAN的优越性和有效性。MMAN已在生产中部署,并为我们的公司带来了巨大的商业价值。