Prism: Towards Lowering User Cognitive Load in LLMs via Complex Intent Understanding
Zenghua Liao, Jinzhi Liao, Xiang Zhao

TL;DR
Prism is a framework that improves complex intent understanding in large language models by modeling logical dependencies among clarification questions, leading to more coherent interactions and reduced user cognitive load.
Contribution
It introduces a novel, modular approach inspired by Cognitive Load Theory to enhance intent clarification and logical coherence in human-LLM interactions.
Findings
Outperforms existing methods in clarification and intent execution
Reduces logical conflicts to 11.5%
Increases user satisfaction by 14.4%
Abstract
Large Language Models are rapidly emerging as web-native interfaces to social platforms. On the social web, users frequently have ambiguous and dynamic goals, making complex intent understanding-rather than single-turn execution-the cornerstone of effective human-LLM collaboration. Existing approaches attempt to clarify user intents through sequential or parallel questioning, yet they fall short of addressing the core challenge: modeling the logical dependencies among clarification questions. Inspired by the Cognitive Load Theory, we propose Prism, a novel framework for complex intent understanding that enables logically coherent and efficient intent clarification. Prism comprises four tailored modules: a complex intent decomposition module, which decomposes user intents into smaller, well-structured elements and identifies logical dependencies among them; a logical clarification…
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Taxonomy
TopicsTopic Modeling · Expert finding and Q&A systems · Text Readability and Simplification
