Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education

In science, technology, engineering, arts, and mathematics (STEAM) education, artificial intelligence (AI) analytics are useful as educational scaffolds to educe (draw out) the students’ AI-Thinking skills in the form of AI-assisted human-centric reasoning for the development of knowledge...

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Main Authors: Meng-Leong How, Wei Loong David Hung
Format: Article
Language:English
Published: MDPI AG 2019-07-01
Series:Education Sciences
Subjects:
Online Access:https://www.mdpi.com/2227-7102/9/3/184
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spelling doaj-20e6bd70e3944ec49c75d237d1ad48642020-11-24T21:24:23ZengMDPI AGEducation Sciences2227-71022019-07-019318410.3390/educsci9030184educsci9030184Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) EducationMeng-Leong How0Wei Loong David Hung1National Institute of Education, Nanyang Technological University Singapore, Singapore 639798, SingaporeNational Institute of Education, Nanyang Technological University Singapore, Singapore 639798, SingaporeIn science, technology, engineering, arts, and mathematics (STEAM) education, artificial intelligence (AI) analytics are useful as educational scaffolds to educe (draw out) the students’ AI-Thinking skills in the form of AI-assisted human-centric reasoning for the development of knowledge and competencies. This paper demonstrates how STEAM learners, rather than computer scientists, can use AI to predictively simulate how concrete mixture inputs might affect the output of compressive strength under different conditions (e.g., lack of water and/or cement, or different concrete compressive strengths required for art creations). To help STEAM learners envision how AI can assist them in human-centric reasoning, two AI-based approaches will be illustrated: first, a Naïve Bayes approach for supervised machine-learning of the dataset, which assumes no direct relations between the mixture components; and second, a semi-supervised Bayesian approach to machine-learn the same dataset for possible relations between the mixture components. These AI-based approaches enable controlled experiments to be conducted in-silico, where selected parameters could be held constant, while others could be changed to simulate hypothetical “what-if” scenarios. In applying AI to think discursively, AI-Thinking can be educed from the STEAM learners, thereby improving their AI literacy, which in turn enables them to ask better questions to solve problems.https://www.mdpi.com/2227-7102/9/3/184STEAM educationSTEM educationsciencetechnologyengineeringartsmathematicsBayesianartificial intelligenceAI Thinkinghuman-centricexplainable AI
collection DOAJ
language English
format Article
sources DOAJ
author Meng-Leong How
Wei Loong David Hung
spellingShingle Meng-Leong How
Wei Loong David Hung
Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
Education Sciences
STEAM education
STEM education
science
technology
engineering
arts
mathematics
Bayesian
artificial intelligence
AI Thinking
human-centric
explainable AI
author_facet Meng-Leong How
Wei Loong David Hung
author_sort Meng-Leong How
title Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
title_short Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
title_full Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
title_fullStr Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
title_full_unstemmed Educing AI-Thinking in Science, Technology, Engineering, Arts, and Mathematics (STEAM) Education
title_sort educing ai-thinking in science, technology, engineering, arts, and mathematics (steam) education
publisher MDPI AG
series Education Sciences
issn 2227-7102
publishDate 2019-07-01
description In science, technology, engineering, arts, and mathematics (STEAM) education, artificial intelligence (AI) analytics are useful as educational scaffolds to educe (draw out) the students’ AI-Thinking skills in the form of AI-assisted human-centric reasoning for the development of knowledge and competencies. This paper demonstrates how STEAM learners, rather than computer scientists, can use AI to predictively simulate how concrete mixture inputs might affect the output of compressive strength under different conditions (e.g., lack of water and/or cement, or different concrete compressive strengths required for art creations). To help STEAM learners envision how AI can assist them in human-centric reasoning, two AI-based approaches will be illustrated: first, a Naïve Bayes approach for supervised machine-learning of the dataset, which assumes no direct relations between the mixture components; and second, a semi-supervised Bayesian approach to machine-learn the same dataset for possible relations between the mixture components. These AI-based approaches enable controlled experiments to be conducted in-silico, where selected parameters could be held constant, while others could be changed to simulate hypothetical “what-if” scenarios. In applying AI to think discursively, AI-Thinking can be educed from the STEAM learners, thereby improving their AI literacy, which in turn enables them to ask better questions to solve problems.
topic STEAM education
STEM education
science
technology
engineering
arts
mathematics
Bayesian
artificial intelligence
AI Thinking
human-centric
explainable AI
url https://www.mdpi.com/2227-7102/9/3/184
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