• Title/Summary/Keyword: Machine Learning Education

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Building a Model(s) to Examine the Interdependency of Content Knowledge and Reasoning as Resources for Learning

  • Cikmaz, Ali;Hwang, Jihyun;Hand, Brian
    • Research in Mathematical Education
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    • v.25 no.2
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    • pp.135-158
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    • 2022
  • This study aimed to building models to understand the relationships between reasoning resources and content knowledge. We applied Support Vector Machine and linear models to the data including fifth graders' scores in the Cornel Critical Thinking Test and the Iowa Assessments, demographic information, and learning science approach (a student-centered approach to learning called the Science Writing Heuristic [SWH] or traditional). The SWH model showing the relationships between critical thinking domains and academic achievement at grade 5 was developed, and its validity was tested across different learning environments. We also evaluated the stability of the model by applying the SWH models to the data of the grade levels. The findings can help mathematics educators understand how critical thinking and achievement relate to each other. Furthermore, the findings suggested that reasoning in mathematics classrooms can promote performance on standardized tests.

Effect of block-based Machine Learning Education Using Numerical Data on Computational Thinking of Elementary School Students (숫자 데이터를 활용한 블록 기반의 머신러닝 교육이 초등학생 컴퓨팅 사고력에 미치는 효과)

  • Moon, Woojong;Lee, Junho;Kim, Bongchul;Seo, Youngho;Kim, Jungah;OH, Jeongcheol;Kim, Yongmin;Kim, Jonghoon
    • Journal of The Korean Association of Information Education
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    • v.25 no.2
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    • pp.367-375
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    • 2021
  • This study developed and applied an artificial intelligence education program as an educational method for increasing computational thinking of elementary school students and verified its effectiveness. The educational program was designed based on the results of a demand analysis conducted using Google survey of 100 elementary school teachers in advance according to the ADDIE(Analysis-Design-Development-Implementation-Evaluation) model. Among Machine Learning for Kids, we use scratch for block-based programming and develop and apply textbooks to improve computational thinking in the programming process of learning the principles of artificial intelligence and solving problems directly by utilizing numerical data. The degree of change in computational thinking was analyzed through pre- and post-test results using beaver challenge, and the analysis showed that this study had a positive impact on improving computational thinking of elementary school students.

Development of Artificial Intelligence Education Contents based on TensorFlow for Reinforcement of SW Convergence Gifted Teacher Competency (SW융합영재 담당교원 역량 강화를 위한 텐서플로우 기반 인공지능 교육 콘텐츠 개발)

  • Jang, Eunsill;Kim, Jaehyoun
    • Journal of Internet Computing and Services
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    • v.20 no.6
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    • pp.167-177
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    • 2019
  • The enhancement of national competitiveness in future society is the discovery and training of excellent SW convergence gifted. In order to cultivate these SW convergence gifted, reinforcing competence of teachers in charge should be made first. Therefore, in this paper, artificial intelligence education contents, one of the core technologies of the 4th Industrial Revolution era, were developed to reinforcing competence of SW convergence gifted teachers. After setting the direction of artificial intelligence education content, we constructed educational content suitable for secondary SW convergence gifted education, and designed and developed it in detail. The composition of artificial intelligence education content consists of machine learning and tensor flow understanding, linear regression machine learning implementation for numerical prediction, and multiple linear regression-based price prediction machine learning implementations. The developed educational contents were verified by experts with qualitative aspects. In the future, we expect that the educational content of artificial intelligence proposed in this paper will be useful for strengthening the ability of SW convergence gifted teachers.

Development of Elementary Machine Learning Education Program to Solve Daily Life Problems Using Sound Data (소리 데이터를 기반으로 일상생활 문제를 해결하는 초등 머신러닝 교육 프로그램 개발)

  • Moon, Woojong;Ko, Seunghwan;Lee, Junho;Kim, Jonghoon
    • Journal of The Korean Association of Information Education
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    • v.25 no.5
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    • pp.705-712
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    • 2021
  • This study aims to develop artificial intelligence education programs that can be easily applied in elementary schools according to the trend of the times called artificial intelligence. The training program designed the purpose and direction based on the analysis results of the needs of 70 elementary school teachers according to the steps of the ADDIE model. According to the survey, elementary school students developed a machine learning education program to set sound data as the theme of the most accessible in their daily lives and to learn the principles of artificial intelligence in solving problems using sound data in real life. These days, when the need for artificial intelligence education emerges, elementary machine learning education programs that solve daily life problems based on sound data developed in this study will lay the foundation for elementary artificial intelligence education.

Development of Convergence Education Program for 'Understanding of Molecular Structure' using Machine Learning Educational Platform (머신러닝 교육 플랫폼 활용 '분자 구조의 이해'를 위한 융합교육 프로그램 개발)

  • Yi, Soyul;Lee, Youngjun
    • Journal of The Korean Association of Information Education
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    • v.25 no.6
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    • pp.961-972
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    • 2021
  • In this study, an educational program was developed so that artificial intelligence could be used as a transdisciplinary convergence education with other disciplines. The main educational content is designed for 8 hours using machine learning to help students understand the molecular structure dealt with in high school chemistry. The program developed in this study calculated the I-CVI (Item Content Validity Index) value through expert review, and as a result, none of the items were rejected with a score of .80 or higher. Because the program of this study combines the content elements of the chemistry subject and the information (artificial intelligence) subject academically, it is expected that the learner will be able to increase the convergence talent literacy. In addition, since it is not required to secure a additional number of hours for this educational program, the burden on teachers may be low.

Design of Artificial Intelligence Education Program based on Design-based Research

  • Yu, Won Jin;Jang, Jun Hyeok;Ahn, Joong Min;Park, Dae Ryoon;Yoo, In Hwan;Bae, Young Kwon;Kim, Woo Yeol
    • International journal of advanced smart convergence
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    • v.8 no.4
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    • pp.113-120
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    • 2019
  • Recently, the artificial intelligence(AI) is used in various environments in life, and research on this is being actively conducted in education. In this paper, we designed a Design-Based Research(DBR)-based AI programming education program and analyzed the application of the program for the improvement of understanding of AI in elementary school. In the artificial intelligence education program in elementary school, we should considerthat itshould be used in conjunction with software education through programming activities, rather than creating interest through simple AI experiences. The designed education program reflects the collaborative problem-solving procedures following the DBR process of analysis - design - execution - redesign, allowing the real-world problem-solving activities using AI experiences and block-type programming language. This paper also examined the examples of education programs to improve understanding of AI by using Machine Learning for Kids and to draw implications for developing and operating such a program.

Non-linearity Mitigation Method of Particulate Matter using Machine Learning Clustering Algorithms (기계학습 군집 알고리즘을 이용한 미세먼지 비선형성 완화방안)

  • Lee, Sang-gwon;Cho, Kyoung-woo;Oh, Chang-heon
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2019.05a
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    • pp.341-343
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    • 2019
  • As the generation of high concentration particulate matter increases, much attention is focused on the prediction of particulate matter. Particulate matter refers to particulate matter less than $10{\mu}m$ diameter in the atmosphere and is affected by weather changes such as temperature, relative humidity and wind speed. Therefore, various studies have been conducted to analyze the correlation with weather information for particulate matter prediction. However, the nonlinear time series distribution of particulate matter increases the complexity of the prediction model and can lead to inaccurate predictions. In this paper, we try to mitigate the nonlinear characteristics of particulate matter by using cluster algorithm and classification algorithm of machine learning. The machine learning algorithms used are agglomerative clustering, density-based spatial clustering of applications with noise(DBSCAN).

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A Reconstruction of Classification for Iris Species Using Euclidean Distance Based on a Machine Learning (머신러닝 기반 유클리드 거리를 이용한 붓꽃 품종 분류 재구성)

  • Nam, Soo-Tai;Shin, Seong-Yoon;Jin, Chan-Yong
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.24 no.2
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    • pp.225-230
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    • 2020
  • Machine learning is an algorithm which learns a computer based on the data so that the computer can identify the trend of the data and predict the output of new input data. Machine learning can be classified into supervised learning, unsupervised learning, and reinforcement learning. Supervised learning is a way of learning a machine with given label of data. In other words, a method of inferring a function of the system through a pair of data and a label is used to predict a result using a function inferred about new input data. If the predicted value is continuous, regression analysis is used. If the predicted value is discrete, it is used as a classification. A result of analysis, no. 8 (5, 3.4, setosa), 27 (5, 3.4, setosa), 41 (5, 3.5, setosa), 44 (5, 3.5, setosa) and 40 (5.1, 3.4, setosa) in Table 3 were classified as the most similar Iris flower. Therefore, theoretical practical are suggested.

Applying advanced machine learning techniques in the early prediction of graduate ability of university students

  • Pham, Nga;Tiep, Pham Van;Trang, Tran Thu;Nguyen, Hoai-Nam;Choi, Gyoo-Seok;Nguyen, Ha-Nam
    • International Journal of Internet, Broadcasting and Communication
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    • v.14 no.3
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    • pp.285-291
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    • 2022
  • The number of people enrolling in universities is rising due to the simplicity of applying and the benefit of earning a bachelor's degree. However, the on-time graduation rate has declined since plenty of students fail to complete their courses and take longer to get their diplomas. Even though there are various reasons leading to the aforementioned problem, it is crucial to emphasize the cause originating from the management and care of learners. In fact, understanding students' difficult situations and offering timely Number of Test data and advice would help prevent college dropouts or graduate delays. In this study, we present a machine learning-based method for early detection at-risk students, using data obtained from graduates of the Faculty of Information Technology, Dainam University, Vietnam. We experiment with several fundamental machine learning methods before implementing the parameter optimization techniques. In comparison to the other strategies, Random Forest and Grid Search (RF&GS) and Random Forest and Random Search (RF&RS) provided more accurate predictions for identifying at-risk students.

Development of Machine Learning Education Program for Elementary Students Using Localized Public Data (지역화 공공데이터 기반 초등학생 머신러닝 교육 프로그램 개발)

  • Kim, Bongchul;Kim, Bomsol;Ko, Eunjeong;Moon, Woojong;Oh, Jeongcheol;Kim, Jonghoon
    • Journal of The Korean Association of Information Education
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    • v.25 no.5
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    • pp.751-759
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    • 2021
  • This study developed an artificial intelligence education program using localized public data as an educational method for improving computing thinking skills of elementary school students. According to the ADDIE model, the program design was carried out based on the results of pre-requisite analysis for elementary school students, and textbooks and education programs were developed. Based on localized public data, the training program was constructed to learn the principles of artificial intelligence using machine learning for kids and scratches and to solve problems and improve computational thinking through abstracting public data for purpose. It is necessary to put this training program into the field through further research and verify the change in students' computational thinking as a result.