Fints: Efficient Inference-Time Personalization for LLMs with Fine-Grained Instance-Tailored Steering
Kounianhua Du, Jianxing Liu, Kangning Zhang, Wenxiang Jiao, Yuan Lu, Jiarui Jin, Weiwen Liu, Yong Yu, Weinan Zhang

TL;DR
Fints introduces a dynamic, fine-grained personalization method for LLMs that injects instance-specific signals during inference, improving adaptability and data efficiency in rapidly changing environments.
Contribution
It proposes a novel, plug-in steering framework that dynamically generates sample-level interference vectors for personalized LLM adaptation, compatible with existing methods.
Findings
Significantly improves personalization in fast-changing scenarios.
Enhances performance with high data sparsity.
Maintains robustness across different interaction modes.
Abstract
The rapid evolution of large language models (LLMs) has intensified the demand for effective personalization techniques that can adapt model behavior to individual user preferences. Despite the non-parametric methods utilizing the in-context learning ability of LLMs, recent parametric adaptation methods, including personalized parameter-efficient fine-tuning and reward modeling emerge. However, these methods face limitations in handling dynamic user patterns and high data sparsity scenarios, due to low adaptability and data efficiency. To address these challenges, we propose a fine-grained and instance-tailored steering framework that dynamically generates sample-level interference vectors from user data and injects them into the model's forward pass for personalized adaptation. Our approach introduces two key technical innovations: a fine-grained steering component that captures…
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Taxonomy
TopicsTopic Modeling · Recommender Systems and Techniques · Machine Learning in Healthcare
