The content discusses the importance of incorporating planning capabilities into recommendation systems to address long-term engagement issues. The proposed Bi-level Learnable LLM Planner framework leverages large language models for personalized recommendations, showcasing superior performance in learning to plan for long-term recommendations.
Traditional recommendation systems tend to focus on immediate interests, neglecting long-term engagement. Reinforcement Learning struggles with sparse data, leading to suboptimal performance in planning. Large Language Models offer powerful planning capabilities through pre-training on diverse textual data.
The proposed Bi-level Learnable LLM Planner framework integrates macro-learning and micro-learning mechanisms for enhanced planning in personalized recommendations. Extensive experiments validate the framework's superiority in learning to plan for long-term recommendations.
Naar een andere taal
vanuit de broninhoud
arxiv.org
Belangrijkste Inzichten Gedestilleerd Uit
by Wentao Shi,X... om arxiv.org 03-05-2024
https://arxiv.org/pdf/2403.00843.pdfDiepere vragen