Date
Publisher
arXiv
Providing effective, personalized support is critical for helping students
overcome conceptual difficulties in physics. However, established scaffolding
methods, such as structured tiered support, are often too resource-intensive
for widespread implementation. Therefore, this study, investigates whether an
easily adaptable, custom-configured AI chatbot can offer comparable affective
benefits and cognitive relief. We conducted a quasi-experimental field study
with 273 ninth-grade students in Germany. Classes were randomly assigned to
solve a buoyancy problem using one of three conditions: an AI chatbot, a tiered
support system, or traditional textbook-style explanations. We measured
intrinsic and extraneous cognitive load and affective outcomes (enjoyment,
hope, hopelessness, self-efficacy, situational interest) via research-validated
questionnaires. Results revealed that both interactive support systems -- the
custom-configured AI chatbot and tiered hints -- were significantly more
effective than the textual support in reducing students' intrinsic and
extraneous cognitive load. Furthermore, the AI chatbot yielded the most
comprehensive affective benefits, demonstrating significant improvements across
all measured affective dimensions, when compared to the textual support. While
the chatbot consistently trended more positively than the tiered hints on
affective measures, these differences were not statistically significant. These
findings suggest that while structured guidance is key to managing cognitive
load, the interactive and social nature of AI chatbots holds unique potential
for simultaneously fostering positive affective experiences, marking a
promising direction for developing effective and holistic learning support
tools in physics education.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
