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Treffer: Trends and patterns in K-12 computer science education: data analysis from twitter.

Title:
Trends and patterns in K-12 computer science education: data analysis from twitter.
Authors:
Wang, Cheng1 (AUTHOR) chengwang@wayne.edu, Zhu, Meina2 (AUTHOR)
Source:
Educational Media International. Mar2025, Vol. 62 Issue 1, p101-122. 22p.
Database:
Education Research Complete

Weitere Informationen

K-12 computer science (CS) education has emerged as a vital component of modern education, nurturing computational thinking, problem-solving, and digital literacy. This study examines the K-12 CS education dynamics, emphasizing its impact and implications, particularly in the context of equity. Twitter data from 2017 to 2021 were collected, focusing on English-language tweets within the United States. This collection was completed before Elon Musk's acquisition of the company and its subsequent rebranding to X. Three keyword sets span CS education, computational thinking – a core competency of CS learners and CS education organizations and conferences. The findings indicate: (1) a significant decrease in tweet volumes for each set of keywords after 2019, (2) the critical role of coding within a broader STEM education framework, and (3) the centrality of students in semantic networks formed by the tweets, highlighting the pertinence of a student-centered learning strategy in K-12 CS education. To ensure equitable access and opportunities, K-12 CS education in a broader STEM ecosystem should adopt student-centered learning, with teachers facilitating coding, programming, and technology education. These insights inform educators, policymakers, and researchers about K-12 CS education's significance in preparing students for the future, with a strong emphasis on equity and inclusion. [ABSTRACT FROM AUTHOR]

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