Intelligent Interaction Strategies for Context-Aware Cognitive Augmentation
Abstract
Human cognition is constrained by processing limitations, leading to cognitive overload and inefficiencies in knowledge synthesis and decision-making. Large Language Models (LLMs) present an opportunity for cognitive augmentation, but their current reactive nature limits their real-world applicability. This position paper explores the potential of context-aware cognitive augmentation, where LLMs dynamically adapt to users' cognitive states and task environments to provide appropriate support. Through a think-aloud study in an exhibition setting, we examine how individuals interact with multi-modal information and identify key cognitive challenges in structuring, retrieving, and applying knowledge. Our findings highlight the need for AI-driven cognitive support systems that integrate real-time contextual awareness, personalized reasoning assistance, and socially adaptive interactions. We propose a framework for AI augmentation that seamlessly transitions between real-time cognitive support and post-experience knowledge organization, contributing to the design of more effective human-centered AI systems.
Cite
@article{arxiv.2504.13684,
title = {Intelligent Interaction Strategies for Context-Aware Cognitive Augmentation},
author = {Xiangrong and Zhu and Yuan Xu and Tianjian Liu and Jingwei Sun and Yu Zhang and Xin Tong},
journal= {arXiv preprint arXiv:2504.13684},
year = {2025}
}
Comments
Presented at the 2025 ACM Workshop on Human-AI Interaction for Augmented Reasoning, Report Number: CHI25-WS-AUGMENTED-REASONING