How are Primary School Computer Science Curricular Reforms Contributing
to Equity? Impact on Student Learning, Perception of the Discipline, and
Gender Gaps
- URL: http://arxiv.org/abs/2306.00820v1
- Date: Thu, 1 Jun 2023 15:42:26 GMT
- Title: How are Primary School Computer Science Curricular Reforms Contributing
to Equity? Impact on Student Learning, Perception of the Discipline, and
Gender Gaps
- Authors: Laila El-Hamamsy, Barbara Bruno, Catherine Audrin, Morgane Chevalier,
Sunny Avry, Jessica Dehler Zufferey, Francesco Mondada
- Abstract summary: Early exposure to Computer Science (CS) for all is critical to broaden participation and promote equity in the field.
But how does introducting CS into primary school curricula impact learning, perception, and gaps between groups of students?
We investigate a CS-curricular reform and teacher Professional Development (PD) program from an equity standpoint.
- Score: 0.7896843467339624
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Early exposure to Computer Science (CS) for all is critical to broaden
participation and promote equity in the field. But how does introducting CS
into primary school curricula impact learning, perception, and gaps between
groups of students? We investigate a CS-curricular reform and teacher
Professional Development (PD) program from an equity standpoint by applying
hierarchical regression and structural equation modelling on student learning
and perception data from three studies with respectively 1384, 2433 & 1644
grade 3-6 students (ages 7-11) and their 83, 142 & 95 teachers. Regarding
learning, exposure to CS instruction appears to contribute to closing the
performance gap between low-achieving and high-achieving students, as well as
pre-existing gender gaps. Despite a lack of direct influence of what was taught
on student learning, there is no impact of teachers' demographics or motivation
on student learning, with teachers' perception of the CS-PD positively
influencing learning. Regarding perception, students perceive CS and its
teaching tools (robotics, tablets) positively, and even more so when they
perceive a role model close to them as doing CS. Nonetheless gender differences
exist all around with boys perceiving CS more positively than girls despite
access to CS education. However, access to CS-education affects boys and girls
differently: larger gender gaps are closing (namely those related to robotics),
while smaller gaps are increasing (namely those related to CS and tablets). To
conclude, our findings highlight how a CS curricular reform impacts learning,
perception, and equity and supports the importance of i) early introductions to
CS for all, ii) preparing teachers to teach CS all the while removing the
influence of teacher demographics and motivation on student outcomes, and iii)
having developmentally appropriate activities that signal to all groups of
students.
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