Abstract
Product query classification is the basic component for query understanding, which aims to classify the user queries into multiple categories under a predefined product category taxonomy for the E-commerce search engine. It is a challenging task due to the tremendous amount of product categories. And a slight modification to a query will change its corresponding categories entirely, e.g., appending the "button"to the query "shirt". The problem is more severe for the tail queries which lack enough supervision information from customers. Motivated by this phenomenon, this paper proposes to model the contrasting/similar relationships between such similar queries. Our framework is composed of a base model and an across-context attention module. The across-context attention module plays the role of deriving and extracting external information from these variant queries by predicting their categories. We conduct both offline and online experiments on the real-world E-commerce search engine. Experimental results demonstrate the effectiveness of our across-context attention module.
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CITATION STYLE
Zhang, J., Xu, W., Ji, J., Chen, X., Deng, H., & Yang, K. (2021). Modeling Across-Context Attention for Long-Tail Query Classification in E-commerce. In WSDM 2021 - Proceedings of the 14th ACM International Conference on Web Search and Data Mining (pp. 58–66). Association for Computing Machinery, Inc. https://doi.org/10.1145/3437963.3441822
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