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http://dx.doi.org/10.14352/jkaie.2019.23.2.189

An Analysis of the Influence of Block-type Programming Language-Based Artificial Intelligence Education on the Learner's Attitude in Artificial Intelligence  

Lee, Youngho (Seoul Youngdo Elementary School)
Publication Information
Journal of The Korean Association of Information Education / v.23, no.2, 2019 , pp. 189-196 More about this Journal
Abstract
Artificial intelligence has begun to be used in various parts of our lives, and recently its sphere has been expanding. However, students tend to find it difficult to recognize artificial intelligence technology because education on artificial intelligence is not being conducted on elementary school students. This paper examined the teaching programming language and artificial intelligence teaching methods, and looked at the changes in students' attitudes toward artificial intelligence technology by conducting education on artificial intelligence. To this end, education on block-type programming language-based artificial intelligence technology was provided to students' level. And we looked at students' attitudes toward artificial intelligence technology through a single group pre-postmortem. As a result, it brought about significant improvements in interest in artificial intelligence, possible access to artificial intelligence technology and the need for education on artificial intelligence technology in schools.
Keywords
Artificial Intelligence Technology Attitude; Artificial Intelligence Education; Scratch 3.0; Machine Learning Model Development; Machine Learning for kids;
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