Sensing What Surveys Miss: Understanding and Personalizing Proactive LLM Support by User Modeling

要旨

Difficulty spillover and suboptimal help-seeking challenge the sequential, knowledge-intensive nature of digital tasks. In online surveys, tough questions can drain mental energy and hurt performance on later questions, while users often fail to recognize when they need assistance or may satisfy, lacking motivation to seek help. We developed a proactive, adaptive system using electrodermal activity and mouse movement to predict when respondents need support. Personalized classifiers with a rule-based threshold adaptation trigger timely LLM-based clarifications and explanations. In a within-subjects study (N=32), aligned-adaptive timing was compared to misaligned-adaptive and random-adaptive controls. Aligned-adaptive assistance improved response accuracy by 21%, reduced false negative rates from 50.9% to 22.9%, and improved perceived efficiency, dependability, and benevolence. Properly timed interventions prevent cascades of degraded responses, showing that aligning support with cognitive states improves both the outcomes and the user experience. This enables more effective, personalized large language model (LLM) support in survey-based research.

著者
Ailin Liu
LMU Munich, Munich, Germany
Yesmine Karoui
LMU Munich, Munich, Germany
Fiona Draxler
University of Mannheim, Mannheim, Germany
Frauke Kreuter
LMU Munich, Munich, Germany
Francesco Chiossi
LMU Munich, Munich, Germany

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Methodological Foundations

P1 - Room 116
7 件の発表
2026-04-16 18:00:00
2026-04-16 19:30:00