An Ensemble-based Machine Learning Model for Investigating Children Interaction with Robots in Childhood Education
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Fecha
2023-05-30Autor(es)
Fuster-Guillén, Doris
Guadalupe Zevallos, Oscar Gustavo
Sánchez Tarrillo, Juan
Aguinaga Vasquez, Silvia Josefina
Saavedra-López, Miguel A.
Hernández, Ronald M.
Metadatos
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“Investing in children's well-being and supporting high-quality pre-school education is a significant
component of its promotion (ECE). All children have the right to participate. ECE teachers' thoughts
about children's participation were examined to see if they were linked to children's perceptions of
their participation. On the other hand, current studies focus on a single categorization method with
lower overall accuracy. The findings of this study provided the basis for the development of an
ensemble machine learning (ML) approach for measuring the participation of children with learning
disabilities in educational situations that were specifically developed for them. Visual and auditory
data are collected and analyzed to determine whether or not the youngster is engaged during the
robot-child interaction in this manner. It is proposed that an ensemble ML technique (Enhanced
Deep Neural Network (EDNN), Modified Extreme Gradient Boost Classifier, and Logistic
Regression) be used to judge whether or not a youngster is actively engaged in the learning process.
Children's participation in ECE courses depends on both the quantitative and qualitative
characteristics of the classroom, according to this research.
“
Colecciones
- SCOPUS [380]