IRCLMay 28, 2020

JointMap: Joint Query Intent Understanding For Modeling Intent Hierarchies in E-commerce Search

arXiv:2005.13783v217 citations
AI Analysis

This addresses the challenge of handling non-commercial queries in e-commerce search engines, which can improve downstream tasks like ranking, but it is incremental as it builds on existing query understanding methods.

The paper tackled the problem of accurately understanding user query intent in e-commerce search, particularly distinguishing between commercial and non-commercial intents and mapping queries to product categories, by introducing JointMap, a deep learning model that jointly learns these tasks and improves prediction accuracy by 2.3% and 10% over state-of-the-art methods.

An accurate understanding of a user's query intent can help improve the performance of downstream tasks such as query scoping and ranking. In the e-commerce domain, recent work in query understanding focuses on the query to product-category mapping. But, a small yet significant percentage of queries (in our website 1.5% or 33M queries in 2019) have non-commercial intent associated with them. These intents are usually associated with non-commercial information seeking needs such as discounts, store hours, installation guides, etc. In this paper, we introduce Joint Query Intent Understanding (JointMap), a deep learning model to simultaneously learn two different high-level user intent tasks: 1) identifying a query's commercial vs. non-commercial intent, and 2) associating a set of relevant product categories in taxonomy to a product query. JointMap model works by leveraging the transfer bias that exists between these two related tasks through a joint-learning process. As curating a labeled data set for these tasks can be expensive and time-consuming, we propose a distant supervision approach in conjunction with an active learning model to generate high-quality training data sets. To demonstrate the effectiveness of JointMap, we use search queries collected from a large commercial website. Our results show that JointMap significantly improves both "commercial vs. non-commercial" intent prediction and product category mapping by 2.3% and 10% on average over state-of-the-art deep learning methods. Our findings suggest a promising direction to model the intent hierarchies in an e-commerce search engine.

Foundations

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