ERUDITE: Human-in-the-Loop IoT for an Adaptive Personalized Learning
System
- URL: http://arxiv.org/abs/2303.04292v2
- Date: Mon, 20 Nov 2023 17:45:37 GMT
- Title: ERUDITE: Human-in-the-Loop IoT for an Adaptive Personalized Learning
System
- Authors: Mojtaba Taherisadr and Mohammad Abdullah Al Faruque and Salma Elmalaki
- Abstract summary: This paper proposes ERUDITE, a human-in-the-loop IoT system for the learning environment.
By using the brain signals as a sensor modality to infer the human learning state, ERUDITE provides personalized adaptation to the learning environment.
- Score: 14.413929652259469
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Thanks to the rapid growth in wearable technologies and recent advancement in
machine learning and signal processing, monitoring complex human contexts
becomes feasible, paving the way to develop human-in-the-loop IoT systems that
naturally evolve to adapt to the human and environment state autonomously.
Nevertheless, a central challenge in designing many of these IoT systems arises
from the requirement to infer the human mental state, such as intention,
stress, cognition load, or learning ability. While different human contexts can
be inferred from the fusion of different sensor modalities that can correlate
to a particular mental state, the human brain provides a richer sensor modality
that gives us more insights into the required human context. This paper
proposes ERUDITE, a human-in-the-loop IoT system for the learning environment
that exploits recent wearable neurotechnology to decode brain signals. Through
insights from concept learning theory, ERUDITE can infer the human state of
learning and understand when human learning increases or declines. By
quantifying human learning as an input sensory signal, ERUDITE can provide
adequate personalized feedback to humans in a learning environment to enhance
their learning experience. ERUDITE is evaluated across $15$ participants and
showed that by using the brain signals as a sensor modality to infer the human
learning state and providing personalized adaptation to the learning
environment, the participants' learning performance increased on average by
$26\%$. Furthermore, we showed that ERUDITE can be deployed on an edge-based
prototype to evaluate its practicality and scalability.
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