Transfer Learning for E-commerce Query Product Type Prediction
Anna Tigunova, Thomas Ricatte, Ghadir Eraisha

TL;DR
This paper introduces a transfer learning approach for product type prediction in global e-commerce, improving performance across diverse locales by leveraging shared models and data.
Contribution
It proposes a unified locale-aware transfer learning method for query product type prediction, addressing low-resource and expansion challenges in international markets.
Findings
Unified locale-aware model outperforms locale-specific models.
Transfer learning reduces performance gap in low-resource locales.
Model generalizes well across 20 worldwide locales.
Abstract
Getting a good understanding of the customer intent is essential in e-commerce search engines. In particular, associating the correct product type to a search query plays a vital role in surfacing correct products to the customers. Query product type classification (Q2PT) is a particularly challenging task because search queries are short and ambiguous, the number of existing product categories is extremely large, spanning thousands of values. Moreover, international marketplaces face additional challenges, such as language and dialect diversity and cultural differences, influencing the interpretation of the query. In this work we focus on Q2PT prediction in the global multilocale e-commerce markets. The common approach of training Q2PT models for each locale separately shows significant performance drops in low-resource stores. Moreover, this method does not allow for a smooth…
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Taxonomy
TopicsWeb Data Mining and Analysis · Text and Document Classification Technologies · Sentiment Analysis and Opinion Mining
MethodsFocus
