Unified Embedding Based Personalized Retrieval in Etsy Search

June 07, 2023 Β· Declared Dead Β· πŸ› 2024 IEEE International Conference on Future Machine Learning and Data Science (FMLDS)

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Authors Rishikesh Jha, Siddharth Subramaniyam, Ethan Benjamin, Thrivikrama Taula arXiv ID 2306.04833 Category cs.IR: Information Retrieval Cross-listed cs.AI Citations 4 Venue 2024 IEEE International Conference on Future Machine Learning and Data Science (FMLDS) Last Checked 4 months ago
Abstract
Embedding-based neural retrieval is a prevalent approach to address the semantic gap problem which often arises in product search on tail queries. In contrast, popular queries typically lack context and have a broad intent where additional context from users historical interaction can be helpful. In this paper, we share our novel approach to address both: the semantic gap problem followed by an end to end trained model for personalized semantic retrieval. We propose learning a unified embedding model incorporating graph, transformer and term-based embeddings end to end and share our design choices for optimal tradeoff between performance and efficiency. We share our learnings in feature engineering, hard negative sampling strategy, and application of transformer model, including a novel pre-training strategy and other tricks for improving search relevance and deploying such a model at industry scale. Our personalized retrieval model significantly improves the overall search experience, as measured by a 5.58% increase in search purchase rate and a 2.63% increase in site-wide conversion rate, aggregated across multiple A/B tests - on live traffic.
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