Groß A, Richter B, Thomzik B, Wrede B. Leveraging Cognitive States for Adaptive Scaffolding of Understanding in Explanatory Tasks in HRI. arXiv:2503.19692. 2025.Understanding how scaffolding strategies influence human understanding in
human-robot interaction is important for developing effective assistive
systems. This empirical study investigates linguistic scaffolding strategies
based on negation as an important means that de-biases the user from potential
errors but increases processing costs and hesitations as a means to ameliorate
processing costs. In an adaptive strategy, the user state with respect to the
current state of understanding and processing capacity was estimated via a
scoring scheme based on task performance, prior scaffolding strategy, and
current eye gaze behavior. In the study, the adaptive strategy of providing
negations and hesitations was compared with a non-adaptive strategy of
providing only affirmations. The adaptive scaffolding strategy was generated
using the computational model SHIFT. Our findings indicate that using adaptive
scaffolding strategies with SHIFT tends to (1) increased processing costs, as
reflected in longer reaction times, but (2) improved task understanding,
evidenced by a lower error rate of almost 23%. We assessed the efficiency of
SHIFT's selected scaffolding strategies across different cognitive states,
finding that in three out of five states, the error rate was lower compared to
the baseline condition. We discuss how these results align with the assumptions
of the SHIFT model and highlight areas for refinement. Moreover, we demonstrate
how scaffolding strategies, such as negation and hesitation, contribute to more
effective human-robot explanatory dialogues
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