Leveraging Large Language Models For Sequential Recommendation · The Large Language Model Bible Contribute to LLM-Bible

Leveraging Large Language Models For Sequential Recommendation

Harte Jesse, Zorgdrager Wouter, Louridas Panos, Katsifodimos Asterios, Jannach Dietmar, Fragkoulis Marios. Arxiv 2023

[Paper]    
Applications Attention Mechanism BERT Model Architecture RAG

Sequential recommendation problems have received increasing attention in research during the past few years, leading to the inception of a large variety of algorithmic approaches. In this work, we explore how large language models (LLMs), which are nowadays introducing disruptive effects in many AI-based applications, can be used to build or improve sequential recommendation approaches. Specifically, we devise and evaluate three approaches to leverage the power of LLMs in different ways. Our results from experiments on two datasets show that initializing the state-of-the-art sequential recommendation model BERT4Rec with embeddings obtained from an LLM improves NDCG by 15-20% compared to the vanilla BERT4Rec model. Furthermore, we find that a simple approach that leverages LLM embeddings for producing recommendations, can provide competitive performance by highlighting semantically related items. We publicly share the code and data of our experiments to ensure reproducibility.

Similar Work