Non-Invasive Monitoring of Cognitive Load Using Behavioral and Linguistic Indicators: A Systems-Level Perspective
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AbstractBackground: Cognitive load plays a central role in human performance across health, education,and human–computer interaction domains. Traditional assessment approaches are often intrusiveor impractical for continuous monitoring.Objective: This paper presents a systems-level perspective on non-invasive monitoring of cognitiveload using behavioral and linguistic indicators derived from natural interactions.Methods: Behavioral signals such as response timing, interaction patterns, and error dynamics areconsidered alongside linguistic characteristics including fluency, complexity, and coherence. Theseindicators are examined as complementary components within an integrated monitoring framework,without reliance on invasive sensors or explicit testing procedures.Conclusions: Behavioral and linguistic indicators offer promising avenues for scalable andunobtrusive cognitive load monitoring. A systems-level approach enables flexible adaptation acrossapplication domains while preserving user comfort and ecological validity.