Explainable LLM-driven Multi-dimensional Distillation for E-Commerce Relevance Learning
Gang Zhao, Ximing Zhang, Chenji Lu, Hui Zhao, Tianshu Wu, Pengjie, Wang, Jian Xu, Bo Zheng

TL;DR
This paper introduces an explainable, multi-dimensional knowledge distillation framework leveraging LLMs to improve relevance learning in e-commerce search, balancing interpretability, performance, and deployability.
Contribution
It proposes a novel explainable LLM with Chain-of-Thought reasoning and a multi-dimensional distillation method to enhance online relevance models in e-commerce.
Findings
Significant performance improvements in relevance learning.
Enhanced interpretability of LLM-based relevance modeling.
Better long-tail generalization and user experience in online search.
Abstract
Effective query-item relevance modeling is pivotal for enhancing user experience and safeguarding user satisfaction in e-commerce search systems. Recently, benefiting from the vast inherent knowledge, Large Language Model (LLM) approach demonstrates strong performance and long-tail generalization ability compared with previous neural-based specialized relevance learning methods. Though promising, current LLM-based methods encounter the following inadequacies in practice: First, the massive parameters and computational demands make it difficult to be deployed online. Second, distilling LLM models to online models is a feasible direction, but the LLM relevance modeling is a black box, and its rich intrinsic knowledge is difficult to extract and apply online. To improve the interpretability of LLM and boost the performance of online relevance models via LLM, we propose an Explainable…
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Taxonomy
TopicsData Mining Algorithms and Applications · Semantic Web and Ontologies · Customer churn and segmentation
MethodsKnowledge Distillation
