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Main Authors: Liu, Qi, Singh, Atul, Liu, Jingbo, Mu, Cun, Yan, Zheng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.17460
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author Liu, Qi
Singh, Atul
Liu, Jingbo
Mu, Cun
Yan, Zheng
author_facet Liu, Qi
Singh, Atul
Liu, Jingbo
Mu, Cun
Yan, Zheng
contents Training Learning-to-Rank models for e-commerce product search ranking can be challenging due to the lack of a gold standard of ranking relevance. In this paper, we decompose ranking relevance into content-based and engagement-based aspects, and we propose to leverage Large Language Models (LLMs) for both label and feature generation in model training, primarily aiming to improve the model's predictive capability for content-based relevance. Additionally, we introduce different sigmoid transformations on the LLM outputs to polarize relevance scores in labeling, enhancing the model's ability to balance content-based and engagement-based relevances and thus prioritize highly relevant items overall. Comprehensive online tests and offline evaluations are also conducted for the proposed design. Our work sheds light on advanced strategies for integrating LLMs into e-commerce product search ranking model training, offering a pathway to more effective and balanced models with improved ranking relevance.
format Preprint
id arxiv_https___arxiv_org_abs_2409_17460
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Towards More Relevant Product Search Ranking Via Large Language Models: An Empirical Study
Liu, Qi
Singh, Atul
Liu, Jingbo
Mu, Cun
Yan, Zheng
Information Retrieval
Training Learning-to-Rank models for e-commerce product search ranking can be challenging due to the lack of a gold standard of ranking relevance. In this paper, we decompose ranking relevance into content-based and engagement-based aspects, and we propose to leverage Large Language Models (LLMs) for both label and feature generation in model training, primarily aiming to improve the model's predictive capability for content-based relevance. Additionally, we introduce different sigmoid transformations on the LLM outputs to polarize relevance scores in labeling, enhancing the model's ability to balance content-based and engagement-based relevances and thus prioritize highly relevant items overall. Comprehensive online tests and offline evaluations are also conducted for the proposed design. Our work sheds light on advanced strategies for integrating LLMs into e-commerce product search ranking model training, offering a pathway to more effective and balanced models with improved ranking relevance.
title Towards More Relevant Product Search Ranking Via Large Language Models: An Empirical Study
topic Information Retrieval
url https://arxiv.org/abs/2409.17460