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Published:2026/1/8 14:09:17

テキストでAIをパーソナライズ!💖

超要約: AIを、テキストであなた色に染めちゃお! 🎨

ギャル的キラキラポイント

● テキストで、AIの"キブン"を自由自在に変身させちゃうんだって!🧙‍♀️ ● 色んなアプリやサービスで、あなたの好みを共有できる神機能✨ ● AIがもっと賢くなって、あなたのこと、もっと分かってくれるようになるってこと!🥰

詳細解説いくよ~!

続きは「らくらく論文」アプリで

Text as a Universal Interface for Transferable Personalization

Yuting Liu / Jian Guan / Jia-Nan Li / Wei Wu / Jiang-Ming Yang / Jianzhe Zhao / Guibing Guo

We study the problem of personalization in large language models (LLMs). Prior work predominantly represents user preferences as implicit, model-specific vectors or parameters, yielding opaque ``black-box'' profiles that are difficult to interpret and transfer across models and tasks. In contrast, we advocate natural language as a universal, model- and task-agnostic interface for preference representation. The formulation leads to interpretable and reusable preference descriptions, while naturally supporting continual evolution as new interactions are observed. To learn such representations, we introduce a two-stage training framework that combines supervised fine-tuning on high-quality synthesized data with reinforcement learning to optimize long-term utility and cross-task transferability. Based on this framework, we develop AlignXplore+, a universal preference reasoning model that generates textual preference summaries. Experiments on nine benchmarks show that our 8B model achieves state-of-the-art performanc -- outperforming substantially larger open-source models -- while exhibiting strong transferability across tasks, model families, and interaction formats.

cs / cs.CL / cs.AI