Unified Supervision for Walmart's Sponsored Search Retrieval via Joint Semantic Relevance and Behavioral Engagement Modeling
Shasvat Desai, Md Omar Faruk Rokon, Jhalak Nilesh Acharya, Isha Shah, Hong Yao, Utkarsh Porwal, Kuang-chih Lee

TL;DR
This paper introduces a joint semantic relevance and behavioral engagement model for Walmart's sponsored search retrieval, improving relevance and ranking by combining multiple supervision signals.
Contribution
It proposes a bi-encoder training framework that integrates relevance labels, retrieval priors, and engagement signals to enhance search retrieval performance.
Findings
Outperforms existing production systems in offline metrics.
Achieves significant online relevance and NDCG improvements.
Effectively leverages relevance and engagement signals together.
Abstract
Modern search systems rely on a fast first stage retriever to fetch relevant items from a massive catalog of items. Deployed search systems often use user engagement signals to supervise bi-encoder retriever training at scale, because these signals are continuously logged from real traffic and require no additional annotation effort. However, engagement is an imperfect proxy for semantic relevance. Items may receive interactions due to popularity, promotion, attractive visuals, titles, or price, despite weak query-item relevance. These limitations are further accentuated in Walmart's e-commerce sponsored search. User engagement on ad items is often structurally sparse because the frequency with which an ad is shown depends on factors beyond relevance such as whether the advertiser is currently running that ad, the outcome of the auction for available ad slots, bid competitiveness, and…
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