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A study on AI Education in Graduate School through IPA

대학원 인공지능교육의 방향 탐색: IPA를 활용하여

  • Yoo, Jungah (College of Engineering, Yonsei University)
  • Received : 2019.12.11
  • Accepted : 2019.12.21
  • Published : 2019.12.31

Abstract

As interest in artificial intelligence increases, each university has been establishing a special graduate school with artificial intelligence major, and recently, the Korea government has established various support policies for artificial intelligence education. However, each university has a lot of difficulties because it has little experience in operating graduate education with the latest field of artificial intelligence and it is not easy to find experts. In this study, the response of graduate school students majoring in artificial intelligence was analyzed using IPA technique, and the direction of education of graduate school artificial intelligence major was searched. Among the 40 items surveyed by IPA, 12 items such as systematization of artificial intelligence curriculum, progress of class considering learning level, improvement of academic relations with guidance professors were extracted as items to be improved first. On the other hand, 8 items such as assistant capacity, and relationship with colleagues were overloaded, and twelve items such as instructor's lecture competency, appropriateness of educational contents, learner's artificial intelligence skills and knowledge, and attitude acquisition were to be maintained. In addition, eight items such as convergence education curriculum and diversity of education methods were all low in importance and performance. It is suggested that AI graduate school should be divided into two tracks(technical specialization, convergence expansion) by educational goal, and each track should be conducted by level-specific educational contents and methods suitable for student level. The curriculum should be elaborate and systematic to acquire AI knowledge, skills, and attitudes, and should have an individualized guidance system centered on excellent faculty members.

인공지능에 대한 관심이 높아짐에 따라 각 대학에서는 인공지능을 전공으로 하는 특수대학원을 설립하고 있으며, 최근에는 정부에서도 인공지능교육에 대한 다양한 지원정책을 수립하고 있다. 그러나 각 대학은 인공지능이라는 최신분야를 전공으로 대학원교육을 진행하는 것에 대한 경험이 부족하고 전문가를 찾기도 쉽지 않아 여러 가지 어려움을 겪고 있다. 이에 이 연구에서는 인공지능을 전공으로 하는 대학원 석사과정 학생들의 반응을 IPA기법을 활용하여 분석하고, 대학원 인공지능전공의 교육방향을 탐색하였다. IPA로 조사한 40개의 항목 중, 인공지능 교육과정의 체계성, 학습수준을 고려한 수업진행, 지도교수와의 학문적 관계개선 등 12개 항목은 우선적으로 개선되어야 하는 항목으로 추출되었다. 이에 비해 조교의 역량, 동료와의 관계 등 8개 항목은 과잉으로 투입되고 있는 부분으로 나타났고, 교수자의 강의역량, 교육내용의 적절성, 학습자의 인공지능 기술, 지식, 태도의 습득 등 12개 항목은 중요도와 실행도가 모두 높은 잘 유지해야 하는 항목으로 나타났다. 이 외에 융복합 교육과정, 교육방법의 다양성 등 8개 항목은 우선순위가 낮은 항목으로 나타났다. 분석결과를 종합하여 대학원 인공지능교육의 방향을 제시하였다. 대학원 인공지능교육은 교육목표에 따라 두개의 트랙(기술특화, 융합확장)으로 구분하여 운영하고, 각 트랙은 학생수준에 적합한 수준별 교육내용과 방법으로 진행되어야 한다. 그리고 대학원 인공지능교육은 전문적인 인공지능지식, 기술, 태도 습득을 위한 정교하고 체계적인 교육과정으로 운영되어야 하고, 학문적 전문성이 있는 우수한 교수진을 중심으로 학생들의 개별화지도 체계를 구성해야 함을 제안하였다.

Keywords

References

  1. Minsoo Seul (2016). Current Status and Future Developments of Machine Learning Artificial Intelligence in Law Focusing the Cusp of Machine Learning in U.S. and Discourses over Legal Profession and Law School Education. The Justice, 156(2016. 10), 269-302.
  2. David Chrisinger (2019). The solution lies in education: artificial intelligence & the skills gap. On The Horizon, 27(1), 1-4. https://doi.org/10.1108/OTH-03-2019-096
  3. Soohwan Kim, Seonghun Kim, Hyeoncheol Kim (2019). Analysis of International Educational Trends and Learning Tools for Artificial Intelligence Education. Proceeding of The Korean Association of Computer Education, 23(2), 25-28.
  4. Chidong Lee (2019). Moon declares S. Korea's AI-gov't vision, with 'AI national strategy' in the making. Yonhap News article(28. Oct. 2019).
  5. Yongmin Kim (2019). A Study on the Policy and Implications of AI Human Resource Development in Major Countries. Brief (KHIDI issue paper), 276, 2-20.
  6. Kapsu Kim, Youngki Park (2017). A Development and Application of the Teaching and Learning Model of Artificial Intelligence Education for Elementary Students. Journal of The Korean Association of Information Education, 21(1), 139-149.
  7. Uchen Jun (2017). A Study on the Current Status of Artificial Intelligence Education in Each Countries. Journal of Internet Computing and Services, 18(1), 13-18. https://doi.org/10.7472/jksii.2017.18.2.13
  8. Jinsu Kim, Namje Park (2019). Development of a board game-based gamification learning model for training on the principles of artificial intelligence learning in elementary courses. Journal of The Korean Association of Information Education, 23(3), 229-235. https://doi.org/10.14352/jkaie.2019.23.3.229
  9. Youngho Lee (2019). An Analysis of the Influence of Block-type Programming Language-Based Artificial Intelligence Education on the Learner's Attitude in Artificial Intelligence. Journal of The Korean Association of Information Education, 23(2), 189-196. https://doi.org/10.14352/jkaie.2019.23.2.189
  10. Sijing, L. & Lan, W. (2018). Artificial Intelligence Education Ethical Problems and Solutions. 2018 13th International Conference on Computer Science & Education (ICCSE), Colombo, 1-5.
  11. China Institute for Science and Technology Policy at Tsinghua University (2018). China AI Development Report 2018.
  12. Information & Telecommunication Technology Promotion Center, Information and Communication Industry Promotion Center (2016). Survey on Awareness and Response Strategy of Artificial Intelligence, KOSEN-Trend Report, www.kosen21.org
  13. Jonghyang. Park, Namin. Shin (2017). Students' perceptions of Artificial Intelligence Technology and Artificial Intelligence Teachers. The Journal of Korean Teacher Education, 34(2), 169-192. https://doi.org/10.24211/TJKTE.2017.34.2.169
  14. Miyoung Ryu, Seonkwan Han (2017). Image of Artificial Intelligence of Elementary Students by using Semantic Differential Scale. Journal of The Korean Association of Information Education, 21(5), 1-9. https://doi.org/10.14352/jkaie.21.1.1
  15. Miyoung Ryu, Seonkwan Han (2018). The Educational Perception on Artificial Intelligence by Elementary School Teachers. Journal of The Korean Association of Information Education, 22(3), 317-324. https://doi.org/10.14352/jkaie.2018.22.3.317
  16. Sein Shin, Minsu Ha, Junki Lee (2017). High School Students’ Perception of Artificial Intelligence: Focusing on Conceptual Understanding, Emotion and Risk Perception. Journal of Learner-Centered Curriculum and Instruction, 17(21), 289-312.
  17. Michael Tran Duong, Andreas M. Rauschecker, Jeffrey D. Rudie, Po-Hao Chen, Tessa S. Cook, R. Nick Bryan, and Suyash Mohan (2019). Artificial intelligence for precision education in radiology. Br J Radiol, 92(1103). 1-11.
  18. Jinwook Lee, Jinyoung Kim (2016). Importance-Performance Analysis on University Students' Recognition of NCS Vocational Competency. The Journal of Vocational Education Research, 35(5), 75-96.
  19. Wanseop Kim (2019). Exploring the direction of granular basic-software education considering the major of college students. Journal of The Korean Association of Information Education, 23(4), 329-341. https://doi.org/10.14352/jkaie.2019.23.4.329
  20. Soonshik Suh, Yuha Goh (2016). Teachers' Perception of and Usage of SMART Education. Journal of The Korean Association of Information Education, 20(2), 139-150. https://doi.org/10.14352/jkaie.20.2.139
  21. Jiyeon Lee (2019). A Perception and Need Analysis using Importance-Performance Analysis (IPA) on the NCS-based Education of Colleges. A Master's Thesis, Gachon University Graduate School of Education.
  22. Keeho Lee, Heungdeug Hong (2018). A Study on the Effectiveness of University Education Characterization Policy: College Policy Based on the Importance -Performance Analysis. The Journal of Convergence Society and Public Policy, 12(3), 97-131. https://doi.org/10.37582/CSPP.2018.12.3.97
  23. Eugene Lim, Bokyung Kim, Yuna Hong, seyoung Kim (2018). Analysis of Perception and Needs on Teaching Competencies of Faculty Using Importance- Performance Analysis. Journal of Educational Innovation Research, 28(2), 45-72. https://doi.org/10.21024/pnuedi.28.2.201806.45
  24. Martilla, J. A., James, J. C. (1977). Importance-Performance Analysis for Developing Effective Marketing Strategies. Journal of Marketing, 41(1), 77-79. https://doi.org/10.1177/002224297704100112
  25. Junhee Lee (2012). Analysis of the Factors Influencing Quality Assurance of Smart Learning using IPA. Journal of The Korean Association of Information Education, 16(1), 81-89.
  26. Haeyoung Kim, Seunghwa Na, Yonggyu Shin, Joonghyun Cho (2019). A Study on The Operational Activation of the Facilities in the Rural Development Project: A Focus on the IPA on The Project Selection Factor and The Operation of a Business. Journal Of The Korean Society Of Rural Planning, 25(1), 89-97.
  27. Wonyoung Choi, Haekyung Kim (2014). The effects on academic achievement and satisfaction of the reciprocal peer tutoring in university calculus. Journal of Koreaa Society Math Education, 53(2), 263-274.
  28. Chungil, Hwang, Hoyong Kim (2011). An Analysis Study on Students' Questioning Behaviors Process and Hinderance Factors in University Class. Asian Journal of Education, 12(3), 55-74. https://doi.org/10.15753/AJE.2011.12.3.003
  29. Jongho Shin, Eunbyul Cho, Eunjoo Boo, Ahrong Beik, Suyeon Jo, Mira Kang (2016). The Characteristics of Learner Experience in Convergence Education. The Korean Journal of Educational Psychology, 30(1), 111-135. https://doi.org/10.17286/KJEP.2016.30.1.05
  30. Youngwoo Kim (2019). Interviews on Learner’s Interest in Learning of Lifelong Education Center in University. Journal of the Korea Entertainment Industry Association, 13(2), 145-154.

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