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引用次数: 0
摘要
兴趣点(POI)推荐成为基于位置服务的核心功能。与传统的物品推荐不同,兴趣点推荐具有明显的特征,如地理影响、复杂的移动模式、本地用户偏好与全球用户偏好之间的平衡等。以往的 POI 推荐系统研究主要集中在卷积神经网络、递归神经网络和基于注意力的架构等深度学习模型的集成上,证明了它们在解决 POI 推荐领域时空数据的动态特性方面的有效性。近年来,随着大型语言模型(LLMs)的兴起,POI 推荐领域出现了许多前景广阔的方向。本文首先讨论了 POI 推荐的特点和最先进的解决方案,然后结合最新的 LLMs 介绍了潜在的研究方向。
Embracing LLMs for Point-of-Interest Recommendations
A point-of-interest (POI) recommendation becomes the core function of location-based services. Unlike a traditional item recommendation, a POI recommendation has distinct features, such as geographical influences, complex mobility patterns, and a balance between local and global user preferences. Past POI recommendation system research has focused mainly on integrating deep learning models like convolutional neural networks, recurrent neural networks, and attention-based architectures, demonstrating their effectiveness in addressing the dynamic nature of spatial–temporal data in POI recommendation areas. In recent years, with the rise of large language models (LLMs), POI recommendation has produced a number of promising directions. This article first discusses the characteristics and state-of-the-art solutions of POI recommendation, then it introduces potential research directions by integrating the latest LLMs.
期刊介绍:
IEEE Intelligent Systems serves users, managers, developers, researchers, and purchasers who are interested in intelligent systems and artificial intelligence, with particular emphasis on applications. Typically they are degreed professionals, with backgrounds in engineering, hard science, or business. The publication emphasizes current practice and experience, together with promising new ideas that are likely to be used in the near future. Sample topic areas for feature articles include knowledge-based systems, intelligent software agents, natural-language processing, technologies for knowledge management, machine learning, data mining, adaptive and intelligent robotics, knowledge-intensive processing on the Web, and social issues relevant to intelligent systems. Also encouraged are application features, covering practice at one or more companies or laboratories; full-length product stories (which require refereeing by at least three reviewers); tutorials; surveys; and case studies. Often issues are theme-based and collect articles around a contemporary topic under the auspices of a Guest Editor working with the EIC.