LLM Retrieval for Stable and Predictable Ad Recommendations
Vinodh Kumar Sunkara, Satheeshkumar Karuppusamy, Hangjun Xu, Sai Deepika Regani, Kshitij Gupta, Gaby Nahum, Sneha Iyer, Jean-Baptiste Fiot, Yinglong Guo, Xiaowen Guo, Atul Jangra, Yucheng Liu, Jinghao Yan, Vijay Pappu, Benjamin Schulte, Deepak Chandra

TL;DR
This paper introduces a semantic LLM-based retrieval framework for ad recommendations that enhances stability and predictability, ensuring consistent results despite creative variations, validated through large-scale industrial experiments.
Contribution
The paper presents a novel LLM-powered semantic retrieval approach that improves stability and predictability in ad recommendation systems, addressing robustness issues with small creative perturbations.
Findings
Significant offline and online improvements in predictability and performance metrics.
Enhanced semantic-awareness leads to more consistent ad delivery.
Framework applicable to large-scale recommendation systems beyond advertising.
Abstract
Traditional ads recommendation systems have primarily focused on optimizing for prediction accuracy of click or conversion events using canonical metrics such as recall or normalized discounted cumulative gain (NDCG). With the hyper-growth of ads inventory and liquidity with generative AI technologies, the prediction stability and predictability is becoming increasingly critical. Intuitively, prediction stability and predictability can be defined to quantify system robustness with respect to minor/noisy input (ads, creatives) perturbations, the lack of which could lead to advertiser perceivable problems such as repeatability, cold start and under-exploration. In this paper, we introduce a new evaluation framework for quantifying stability and predictability of an ads recommender system, and present an online validated semantic candidate generation framework powered by fine-tuned Large…
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