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Engaging Elementary Students in Data Science Practices

Authors :
Ibrahim Oluwajoba Adisa
Danielle Herro
Oluwadara Abimbade
Golnaz Arastoopour Irgens
Source :
Information and Learning Sciences. 2024 125(7-8):513-544.
Publication Year :
2024

Abstract

Purpose: This study is part of a participatory design research project and aims to develop and study pedagogical frameworks and tools for integrating computational thinking (CT) concepts and data science practices into elementary school classrooms. Design/methodology/approach: This paper describes a pedagogical approach that uses a data science framework the research team developed to assist teachers in providing data science instruction to elementary-aged students. Using phenomenological case study methodology, the authors use classroom observations, student focus groups, video recordings and artifacts to detail ways learners engage in data science practices and understand how they perceive their engagement during activities and learning. Findings: Findings suggest student engagement in data science is enhanced when data problems are contextualized and connected to students' lived experiences; data analysis and data-based decision-making is practiced in multiple ways; and students are given choices to communicate patterns, interpret graphs and tell data stories. The authors note challenges students experienced with data practices including conflict between inconsistencies in data patterns and lived experiences and focusing on data visualization appearances versus relationships between variables. Originality/value: Data science instruction in elementary schools is an understudied, emerging and important area of data science education. Most elementary schools offer limited data science instruction; few elementary schools offer data science curriculum with embedded CT practices integrated across disciplines. This research assists elementary educators in fostering children's data science engagement and agency while developing their ability to reason, visualize and make decisions with data.

Details

Language :
English
ISSN :
2398-5348 and 2398-5356
Volume :
125
Issue :
7-8
Database :
ERIC
Journal :
Information and Learning Sciences
Publication Type :
Academic Journal
Accession number :
EJ1426961
Document Type :
Journal Articles<br />Reports - Research<br />Tests/Questionnaires
Full Text :
https://doi.org/10.1108/ILS-06-2023-0062