• 제목/요약/키워드: learning intelligence

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가정환경 자극검사(HOME)와 학령전 아동의 발달 수준과의 관계 (The Relationship of HOME to Preschool Children's Developmental Levels)

  • 장영애;서용선
    • 아동학회지
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    • 제4권
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    • pp.1-10
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    • 1983
  • This study examined the characteristics of the relationship of home environment variables and preschool children's intelligence, learning readiness and socio-emotional developments. The subjects of this study were 63 children at age five and their mothers. Instruments included the children's intelligence test, preschool inventory for learning readiness, the socio-emtional rating scale and the inventory of HOME. The data of the present study were analyzed by the statistical methods of Pearson's product-moment correlation coefficient and step-wise multiple regression analysis. The kinds of HOME variables that significantly predict children's intelligence were "need gratification and avoidance of restriction" "quality of language environment" "play materials" "aspects of physical environment" "organization of stable and predictable environment". The variables that significantly predict children's socio-emotional developments were "breath of experience" "fostering maturity and independence" "developmental stimulation". All of the HOME variables were not significantly predict children's learning readiness. The kinds of HOME factors that significantly predict children's intelligence were factor II and factor III. Factor I predicted children's socio-emotional developments significantly. All of the HOME factors were not significantly predicted children's learning readiness.

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아동의 지능, 보존개념의 발달과 영어학습과의 관계분석 (Children's Intelligence, Concept of Conservation, and the Relations With Learning English)

  • 우남희;김현신
    • 아동학회지
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    • 제25권1호
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    • pp.1-12
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    • 2004
  • This study investigated the relations of children's age, intelligence, and the concept of conservation to their learning of English. Ten 4-year-old children from 1 child-care center and 13 7-year-old children from 1 elementary school were tested after completion of 8 sessions of experimental English classes. Children's intelligence was measured by K-WPPSI for 4-year olds and K-WISC for 7-year-olds. Children were tested for number and liquid conservations. A Korean teacher with 11 years of experience of teaching children at American elementary schools taught the 2 groups with the same subjects and methods. Data were analysed by independent samples t-test, Mann-Whitney U test, and Pearson's r. The results showed that children's age and the concept of conservation were related to English learning. No statistically significant relationship with IQ was found.

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과학·수학 영재의 다중지능, 자기조절학습능력 및 개인성향의 차이 (Differences among Sciences and Mathematics Gifted Students: Multiple Intelligence, Self-regulated Learning Ability, and Personal Traits)

  • 박미진;서혜애;김동화;김지나;남정희;이상원;김수진
    • 영재교육연구
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    • 제23권5호
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    • pp.697-713
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    • 2013
  • 본 연구는 2011년도 광역시 소재 대학교 부설 과학영재교육원의 수학 및 과학영역별 중학교 1, 2학년 89명을 대상으로 영재의 특성을 조사하는 데 목적을 두었다. 이를 위해 다중지능, 자기조절학습능력, 개인성향 조사지를 실시하였으며, 교과영역별 특징을 분석하였다. 먼저 과학영재와 수학영재 모두 자기이해지능이 강점지능으로 나타났으며 논리수학지능이 약점지능으로 나타났다. 과학영역별로 물리영재와 지구과학영재는 공간지능이 강점지능으로 나타난 반면 화학영재와 생물영재는 자기이해지능이 강점지능으로 나타났다. 자기조절학습능력의 경우, 수학영재와 과학영재는 선행연구결과의 일반학생의 자기조절학습능력보다 높게 나타났으며 교과영역에 상관없이 인지전략과 동기전략이 높은 경향을 보였다. 과학영재와 수학영재의 개인성향은 교과영역에 상관없이 개별 특성이 다양하여 광범하게 분포하는 것으로 나타났다. 특히 특정지능에서 강점을 보인 학생들 사이에서도 자기조절학습능력 및 개인성향에서 서로 다른 특성을 보였다. 결론적으로 수학영재는 자기이해지능이, 과학영재에서 물리와 지구과학은 공간지능이, 생물과 화학은 자기이해지능이 강점지능으로 나타나는 특징이외에는 교과영역에 따른 차이보다는 개인별 다중지능, 자기조절학습능력 및 개인성향에서 뚜렷한 차이가 있는 것으로 고찰되었다.

플립 러닝과 메이커 교육 기반 인공지능 융합교양교과목 설계 방향 탐색 : 학습자 요구 분석을 중심으로 (Exploring the Design of Artificial Intelligence Convergence Liberal Arts Curriculum Based on Flipped Learning and Maker Education: Focusing on Learner Needs Assessment)

  • 김성애
    • 실천공학교육논문지
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    • 제13권2호
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    • pp.221-232
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    • 2021
  • 본 연구는 코로나 19로 인하여 발생한 비대면 수업 환경에서 학습자들의 요구 분석을 토대로 플립 러닝과 메이커 교육 기반 인공지능 융합 교양 교과목의 설계 방향을 탐색하는데 그 목적이 있다. 이를 위해 메이커 교육 기반 인공지능융합 교양 교과목을 수강한 학생들과 수강하지 않은 학생들을 대상으로 플립 러닝에 대한 학생들의 인식과 함께 학습자의 교육 요구도를 조사하였다. 이를 바탕으로 Borich 교육 요구도와 The Locus for Focus Model 모델을 활용하여 교과목 내용 요소에 대한 우선 순위를 분석함으로써 교과목 설계를 위한 기초 자료로 활용하였다. 연구 결과는 다음과 같다. 첫째, 메이커 교육 기반의 인공지능 교양 교과목 내용 요소는 총 9개 영역으로 구성되었으며 플립 러닝을 활용하는 수업으로 설계되었다. 둘째, 교육 요구가 가장 높은 영역은 '인공지능 이론', '인공지능 프로그래밍 실습', '피지컬 컴퓨팅 이론', '피지컬 컴퓨팅 실습'이, 차 순위는 '융합프로젝트', '3D 프린팅 이론', '3D 프린팅 실습'으로 결정되었다. 셋째, 플립 러닝을 활용하여 메이커 교육 기반 인공지능융합 교양 교과목을 운영하는 것은 수강 경험의 유무와 상관없이 대부분 긍정적인 응답이었으며 수강 경험이 있는 학생들의 경우에는 만족도가 매우 높았다. 이를 바탕으로 플립러닝과 메이커교육을 활용한 인공지능 기반의 융합 교양 교과목이 설계되었다. 이는 학생들의 요구를 반영하여 교양 교육에서 인공지능 융합 교육의 기초를 마련하고 대학생의 인공지능 소양 함양의 기회를 제공한다는데 의의가 있다.

Q-learning 알고리즘이 성능 향상을 위한 CEE(CrossEntropyError)적용 (Applying CEE (CrossEntropyError) to improve performance of Q-Learning algorithm)

  • 강현구;서동성;이병석;강민수
    • 한국인공지능학회지
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    • 제5권1호
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    • pp.1-9
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    • 2017
  • Recently, the Q-Learning algorithm, which is one kind of reinforcement learning, is mainly used to implement artificial intelligence system in combination with deep learning. Many research is going on to improve the performance of Q-Learning. Therefore, purpose of theory try to improve the performance of Q-Learning algorithm. This Theory apply Cross Entropy Error to the loss function of Q-Learning algorithm. Since the mean squared error used in Q-Learning is difficult to measure the exact error rate, the Cross Entropy Error, known to be highly accurate, is applied to the loss function. Experimental results show that the success rate of the Mean Squared Error used in the existing reinforcement learning was about 12% and the Cross Entropy Error used in the deep learning was about 36%. The success rate was shown.

강화학습을 이용한 지능형 게임캐릭터의 제어 (Control of Intelligent Characters using Reinforcement Learning)

  • 신용우
    • 인터넷정보학회논문지
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    • 제8권5호
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    • pp.91-97
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    • 2007
  • 과거에는 게임프로그램 제작이 단순히 3D, 온라인게임, 엔진프로그래밍 또는 게임프로그래밍으로 분류하여 제작하였다. 그러나 이제는 게임프로그래밍의 종류가 세분화되었고, 기존에 없던 인공지능 게임프로그래머의 역할이 게임을 좀 더 재미있게 할 수 있는 시점이라 하겠다. 본 논문에서는 강화학습 알고리즘을 이용하여, 보상 값을 받아 게임캐릭터가 학습하여 지능적인 움직임을 나타나게 하였다. 구현된 게임캐릭터가 지능적으로 잘 움직이는지 확인하기 위해, 슈팅게임을 제작하여 적 캐릭터와 전투를 하게 하였다. 실험결과 임의로 움직이는 캐릭터보다 월등히 방어함을 알 수 있었다.

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혈액암 인자 유효성 검증과 분류를 위한 진단 예측 알고리즘 성능 비교 분석 (Comparative Analysis of Diagnostic Prediction Algorithm Performance for Blood Cancer Factor Validation and Classification)

  • 정재승;주현수;조치현
    • 한국멀티미디어학회논문지
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    • 제25권10호
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    • pp.1512-1523
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    • 2022
  • Artificial intelligence application in digital health care has been increasing with its development of artificial intelligence. The convergence of the healthcare industry and information and communication technology makes the diagnosis of diseases more simple and comprehensible. From the perspective of medical services, its practice as an initial test and a reference indicator may become widely applicable. Therefore, analyzing the factors that are the basis for existing diagnosis protocols also helps suggest directions using artificial intelligence beyond previous regression and statistical analyses. This paper conducts essential diagnostic prediction learning based on the analysis of blood cancer factors reported previously. Blood cancer diagnosis predictions based on artificial intelligence contribute to successfully achieve more than 90% accuracy and validation of blood cancer factors as an alternative auxiliary approach.

생성형 인공지능을 활용한 사례 기반 간호 교육 프로그램 개발 (Development of a case-based nursing education program using generative artificial intelligence)

  • 안정희;박혜옥
    • 한국간호교육학회지
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    • 제29권3호
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    • pp.234-246
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    • 2023
  • Purpose: This study aimed to develop a case-based nursing education program using generative artificial intelligence and to assess its usability and applicability in nursing curriculums. Methods: The program was developed by following the five steps of the ADDIE model: analysis, design, development, implementation, and evaluation. A panel of five nursing professors served as experts to implement and evaluate the program. Results: Utilizing ChatGPT, six program modules were designed and developed based on experiential learning theory. The experts' evaluations confirmed that the program was suitable for case-based learning, highly usable, and applicable to nursing education. Conclusion: Generative artificial intelligence was identified as a valuable tool for enhancing the effectiveness of case-based learning. This study provides insights and future directions for integrating generative artificial intelligence into nursing education. Further research should be attempted to implement and evaluate this program with nursing students.

Artificial intelligence, machine learning, and deep learning in women's health nursing

  • Jeong, Geum Hee
    • 여성건강간호학회지
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    • 제26권1호
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    • pp.5-9
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    • 2020
  • Artificial intelligence (AI), which includes machine learning and deep learning has been introduced to nursing care in recent years. The present study reviews the following topics: the concepts of AI, machine learning, and deep learning; examples of AI-based nursing research; the necessity of education on AI in nursing schools; and the areas of nursing care where AI is useful. AI refers to an intelligent system consisting not of a human, but a machine. Machine learning refers to computers' ability to learn without being explicitly programmed. Deep learning is a subset of machine learning that uses artificial neural networks consisting of multiple hidden layers. It is suggested that the educational curriculum should include big data, the concept of AI, algorithms and models of machine learning, the model of deep learning, and coding practice. The standard curriculum should be organized by the nursing society. An example of an area of nursing care where AI is useful is prenatal nursing interventions based on pregnant women's nursing records and AI-based prediction of the risk of delivery according to pregnant women's age. Nurses should be able to cope with the rapidly developing environment of nursing care influenced by AI and should understand how to apply AI in their field. It is time for Korean nurses to take steps to become familiar with AI in their research, education, and practice.

인공지능: 미래의사의 역할을 대체할 것인가 (Artificial Intelligence: Will It Replace Human Medical Doctors?)

  • 최윤섭
    • 의학교육논단
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    • 제18권2호
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    • pp.47-50
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    • 2016
  • Development of artificial intelligence is expected to revolutionize today's medicine. In fact, medicine was one of the areas to which advances in artificial intelligence technology were first applied. Recently, state-of-the-art artificial intelligence, especially deep learning technology, has been actively utilized to treat cancer patients and analyze medical image data. Application of artificial intelligence has the potential to fundamentally change various aspects of medicine, including the role of human doctors, the clinical decision-making process, and even overall healthcare systems. Facing such fundamental changes is unavoidable, and we need to prepare to effectively integrate artificial intelligence into our medical system. We should re-define the role of human doctors, and accordingly, medical education should also be altered. In this article, we will discuss the current status of artificial intelligence in medicine and how we can prepare for such changes.