The content discusses the importance of incorporating planning capabilities into recommendation systems to improve long-term engagement. It introduces a Bi-level Learnable Large Language Model Planning framework for this purpose, highlighting the macro-learning and micro-learning mechanisms. The framework aims to enhance the planning ability of Large Language Models (LLMs) for long-term recommendations through a hierarchical approach. Extensive experiments validate the framework's superiority in learning to plan for long-term recommendations.
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arxiv.org
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