将 LLM 与影响力推荐系统结合起来

Mingze Wang, Shuxian Bi, Wenjie Wang, Chongming Gao, Yangyang Li, Fuli Feng
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引用次数: 0

摘要

多年来,推荐系统的精确度不断提高。然而,这种精确度往往会导致用户缩小自己的兴趣范围,从而产生诸如多样性有限和回音室等问题。目前的研究通过主动推荐系统来应对这些挑战,该系统通过推荐一系列项目(称为影响路径)来引导用户对目标项目的兴趣。然而,现有的方法很难构建出一条连贯的影响路径,以用户可能喜欢的项目为基础。在本文中,我们利用大语言模型(LLM)在路径规划和指令跟踪方面的卓越能力,引入了一种名为基于大语言模型的影响路径规划(LLM-IPP)的新方法。我们的方法保持了连续推荐之间的一致性,并提高了用户对推荐项目的可接受性。为了评估 LLM-IPP,我们使用了各种用户模拟器和指标来衡量用户的可接受性和路径一致性。实验结果表明,LLM-IPP 明显优于传统的主动推荐系统。这项研究开创了将 LLM 集成到主动推荐系统中的先河,为未来的推荐技术提供了一种可靠且能吸引用户的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporate LLMs with Influential Recommender System
Recommender systems have achieved increasing accuracy over the years. However, this precision often leads users to narrow their interests, resulting in issues such as limited diversity and the creation of echo chambers. Current research addresses these challenges through proactive recommender systems by recommending a sequence of items (called influence path) to guide user interest in the target item. However, existing methods struggle to construct a coherent influence path that builds up with items the user is likely to enjoy. In this paper, we leverage the Large Language Model's (LLMs) exceptional ability for path planning and instruction following, introducing a novel approach named LLM-based Influence Path Planning (LLM-IPP). Our approach maintains coherence between consecutive recommendations and enhances user acceptability of the recommended items. To evaluate LLM-IPP, we implement various user simulators and metrics to measure user acceptability and path coherence. Experimental results demonstrate that LLM-IPP significantly outperforms traditional proactive recommender systems. This study pioneers the integration of LLMs into proactive recommender systems, offering a reliable and user-engaging methodology for future recommendation technologies.
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