Breaking the Barrier: Utilizing Large Language Models for Industrial Recommendation Systems through an Inferential Knowledge Graph
Qian Zhao, Hao Qian, Ziqi Liu, Gong-Duo Zhang, Lihong Gu

TL;DR
This paper introduces LLM-KERec, a novel recommendation system leveraging large language models and a complementary knowledge graph to better capture user intent, adapt to new items, and improve recommendation performance in e-commerce.
Contribution
It proposes a new framework that integrates large language models with a complementary knowledge graph and novel modules for improved recommendation accuracy and adaptability.
Findings
Significant performance improvements over existing methods on industry datasets.
Enhanced user engagement through better recommendation of complementary items.
Effective adaptation to new items and evolving e-commerce environments.
Abstract
Recommendation systems are widely used in e-commerce websites and online platforms to address information overload. However, existing systems primarily rely on historical data and user feedback, making it difficult to capture user intent transitions. Recently, Knowledge Base (KB)-based models are proposed to incorporate expert knowledge, but it struggle to adapt to new items and the evolving e-commerce environment. To address these challenges, we propose a novel Large Language Model based Complementary Knowledge Enhanced Recommendation System (LLM-KERec). It introduces an entity extractor that extracts unified concept terms from item and user information. To provide cost-effective and reliable prior knowledge, entity pairs are generated based on entity popularity and specific strategies. The large language model determines complementary relationships in each entity pair, constructing a…
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Taxonomy
TopicsSemantic Web and Ontologies · Data Quality and Management
MethodsBalanced Selection
