核心概念
Incorporating Large Language Models, the generative news recommendation paradigm aims to enhance accuracy and generate personalized narratives.
要約
The paper introduces a novel approach, GNR, leveraging LLM for theme-level representations in news recommendation. It explores news relations and fuses personalized multi-news narratives, improving accuracy and user engagement.
Existing methods overlook implicit relationships in news articles, hindering accurate recommendations. GNR proposes dual-level representations to capture high-level connections between news and users. By exploring related news sets based on user preferences, GNR generates coherent multi-news narratives that align with user interests.
The study evaluates the impact of relation thresholds on narrative consistency and the maximum number of reference news on fusion quality. Results show that GNR enhances recommendation accuracy and generates more personalized narratives compared to traditional methods.
統計
Extensive experiments show that GNR improves recommendation accuracy.
The proposed method can generate more personalized and factually consistent narratives.
The Win Rate increases first and then decreases with an increase in the maximum number of reference news 𝑇𝑚𝑎𝑥.
Relation threshold 𝛼 has an impact on the consistency of the fused narrative.
引用
"Most existing news recommendation methods tackle this task by conducting semantic matching between candidate news and user representation produced by historical clicked news."
"In this paper, we propose a novel generative news recommendation paradigm that includes two steps: Leveraging the internal knowledge and reasoning capabilities of the Large Language Model (LLM) to perform high-level matching between candidate news and user representation."