User Modeling and User Profiling: A Comprehensive Survey

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.09660
Erasmo Purificato, Ludovico Boratto, Ernesto William De Luca
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Abstract

The integration of artificial intelligence (AI) into daily life, particularly through information retrieval and recommender systems, has necessitated advanced user modeling and profiling techniques to deliver personalized experiences. These techniques aim to construct accurate user representations based on the rich amounts of data generated through interactions with these systems. This paper presents a comprehensive survey of the current state, evolution, and future directions of user modeling and profiling research. We provide a historical overview, tracing the development from early stereotype models to the latest deep learning techniques, and propose a novel taxonomy that encompasses all active topics in this research area, including recent trends. Our survey highlights the paradigm shifts towards more sophisticated user profiling methods, emphasizing implicit data collection, multi-behavior modeling, and the integration of graph data structures. We also address the critical need for privacy-preserving techniques and the push towards explainability and fairness in user modeling approaches. By examining the definitions of core terminology, we aim to clarify ambiguities and foster a clearer understanding of the field by proposing two novel encyclopedic definitions of the main terms. Furthermore, we explore the application of user modeling in various domains, such as fake news detection, cybersecurity, and personalized education. This survey serves as a comprehensive resource for researchers and practitioners, offering insights into the evolution of user modeling and profiling and guiding the development of more personalized, ethical, and effective AI systems.
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用户建模和用户分析:全面调查
人工智能(AI)与日常生活的融合,特别是通过信息检索和推荐系统,需要先进的用户建模和分析技术来提供个性化体验。这些技术旨在根据与这些系统交互时产生的大量数据构建准确的用户表征。本文全面介绍了用户建模和特征分析研究的现状、发展和未来方向。我们提供了一个历史概述,追溯了从早期定型模型到最新深度学习技术的发展历程,并提出了一个新颖的分类法,涵盖了该研究领域的所有活跃课题,包括最新趋势。我们的调查突出了向更复杂的用户剖析方法的范式转变,强调了隐式数据收集、多行为建模和图数据结构的整合。我们还讨论了对隐私保护技术的迫切需求,以及在用户建模方法中对可解释性和公平性的推动。通过研究核心术语的定义,我们提出了两个新颖的百科全书式的主要术语定义,旨在澄清歧义,促进对该领域更清晰的理解。此外,我们还探讨了用户建模在假新闻检测、网络安全和个性化教育等不同领域的应用。这份调查报告为研究人员和从业人员提供了全面的资源,让他们深入了解用户建模和用户画像的演变,并为开发更个性化、更道德、更有效的人工智能系统提供指导。
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