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This paper argues that LLMs are shifting personalization from platform-specific hidden profiles to more transparent and user-governable representations. It identifies five key research areas for recommender systems in the age of LLM agents, including transparent user modeling, intent translation, cross-domain representation, trustworthy commercialization, and operational mechanisms for ownership and accountability. The authors advocate for building personalization systems that users can understand, shape, and govern, rather than solely focusing on improved inference.
LLMs are poised to flip the script on personalization, giving users unprecedented control over their data and how it's used across platforms.
Personalization has traditionally depended on platform-specific user models that are optimized for prediction but remain largely inaccessible to the people they describe. As LLM-based assistants increasingly mediate search, shopping, travel, and content access, this arrangement may be giving way to a new personalization stack in which user representation is no longer confined to isolated platforms. In this paper, we argue that the key issue is not simply that large language models can enhance recommendation quality, but that they reconfigure where and how user representations are produced, exposed, and acted upon. We propose a shift from hidden platform profiling toward governable personalization, where user representations may become more inspectable, revisable, portable, and consequential across services. Building on this view, we identify five research fronts for recommender systems: transparent yet privacy-preserving user modeling, intent translation and alignment, cross-domain representation and memory design, trustworthy commercialization in assistant-mediated environments, and operational mechanisms for ownership, access, and accountability. We position these not as isolated technical challenges, but as interconnected design problems created by the emergence of LLM agents as intermediaries between users and digital platforms. We argue that the future of recommender systems will depend not only on better inference, but on building personalization systems that users can meaningfully understand, shape, and govern.