• 제목/요약/키워드: Offline and real-time learning

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IT 기업의 구성주의 교수학습환경 기반 실시간 온라인 실습 교육 효과 분석 (The Effects of Online Real-time Constuctivist Practical Trainings in an IT Company)

  • 안슬기;이명근
    • 공학교육연구
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    • 제27권2호
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    • pp.25-34
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    • 2024
  • Due to the Covid-19 pandemic, it seems to have been impossible to run offline training courses. To overcome this situation, online training courses has been emerged. Just moving the educational environment from offline to online instead of re-designing the curriculum, however, is not effective for trainees. To maximize educational effectiveness, it is necessary to re-design the curriculum based on constructivist appoach which gives trainees experience on skills and knowledge about their job. As for re-designing the curriculum into real-time online practical learning based on constructivism, learning satisfaction and work efficacy of trainees may have been increased. From these results, HRD professionals in an IT company should need to consider how to structure the curriculum when they design the real-time online practical learnings.

A Study on the Development of Adaptive Learning System through EEG-based Learning Achievement Prediction

  • Jinwoo, KIM;Hosung, WOO
    • 4차산업연구
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    • 제3권1호
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    • pp.13-20
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    • 2023
  • Purpose - By designing a PEF(Personalized Education Feedback) system for real-time prediction of learning achievement and motivation through real-time EEG analysis of learners, this system provides some modules of a personalized adaptive learning system. By applying these modules to e-learning and offline learning, they motivate learners and improve the quality of learning progress and effective learning outcomes can be achieved for immersive self-directed learning Research design, data, and methodology - EEG data were collected simultaneously as the English test was given to the experimenters, and the correlation between the correct answer result and the EEG data was learned with a machine learning algorithm and the predictive model was evaluated.. Result - In model performance evaluation, both artificial neural networks(ANNs) and support vector machines(SVMs) showed high accuracy of more than 91%. Conclusion - This research provides some modules of personalized adaptive learning systems that can more efficiently complete by designing a PEF system for real-time learning achievement prediction and learning motivation through an adaptive learning system based on real-time EEG analysis of learners. The implication of this initial research is to verify hypothetical situations for the development of an adaptive learning system through EEG analysis-based learning achievement prediction.

진화 알고리즘을 사용한 인간형 로봇의 동작 모방 학습 및 실시간 동작 생성 (Motion Imitation Learning and Real-time Movement Generation of Humanoid Using Evolutionary Algorithm)

  • 박가람;나성권;김창환;송재복
    • 제어로봇시스템학회논문지
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    • 제14권10호
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    • pp.1038-1046
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    • 2008
  • This paper presents a framework to generate human-like movements of a humanoid in real time using the movement primitive database of a human. The framework consists of two processes: 1) the offline motion imitation learning based on an Evolutionary Algorithm and 2) the online motion generation of a humanoid using the database updated bγ the motion imitation teaming. For the offline process, the initial database contains the kinetic characteristics of a human, since it is full of human's captured motions. The database then develops through the proposed framework of motion teaming based on an Evolutionary Algorithm, having the kinetic characteristics of a humanoid in aspect of minimal torque or joint jerk. The humanoid generates human-like movements far a given purpose in real time by linearly interpolating the primitive motions in the developed database. The movement of catching a ball was examined in simulation.

오프라인 강의식 수업에서 실시간 마이크로블로그 활용 학습활동 효과 사례분석 (A case study on the effect of real-time microblogging activities in offline lecture environments)

  • 임걸
    • 디지털콘텐츠학회 논문지
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    • 제12권2호
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    • pp.195-203
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    • 2011
  • 본 연구는 오프라인에서 실시되고 있는 강의식 수업이 학습내용 전달이라는 목적을 달성하기 위해 교수자와 학습자 및 학습자간의 원활한 의사소통의 기회가 구조적으로 제한되고 있는 점에 문제의식을 갖고 출발하였다. 이 같은 한계점을 보완하기 위해 강의식 수업 현장에서 마이크로블로그를 활용한 실시간 의사소통 환경을 조성하여 의사소통 증진 및 수업 촉진의 가능성이 검증되었다. 연구수행을 위해 K대학교 학생 14명이 8주간에 걸쳐 강의식 수업시간에 실시간으로 마이크로블로그 활동을 실시하였다. 그 결과 마이크로블로그에서 교류되는 온라인 콘텐츠를 통해 학습자들의 아이디어 생성 및 교환, 그리고 협력적 활동이 발견되었으며, 높은 수준의 수업 만족도를 바탕으로 수업에 적극적인 참여를 한 것으로 나타났다. 제언사항으로, 향후 온라인 콘텐츠를 활용한 학습효과를 제고시키기 위하여 수업집중도 향상, 콘텐츠 질관리, 그리고 온오프라인 병행수업전략 개발의 필요성이 제안되었다.

Data anomaly detection and Data fusion based on Incremental Principal Component Analysis in Fog Computing

  • Yu, Xue-Yong;Guo, Xin-Hui
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제14권10호
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    • pp.3989-4006
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    • 2020
  • The intelligent agriculture monitoring is based on the perception and analysis of environmental data, which enables the monitoring of the production environment and the control of environmental regulation equipment. As the scale of the application continues to expand, a large amount of data will be generated from the perception layer and uploaded to the cloud service, which will bring challenges of insufficient bandwidth and processing capacity. A fog-based offline and real-time hybrid data analysis architecture was proposed in this paper, which combines offline and real-time analysis to enable real-time data processing on resource-constrained IoT devices. Furthermore, we propose a data process-ing algorithm based on the incremental principal component analysis, which can achieve data dimensionality reduction and update of principal components. We also introduce the concept of Squared Prediction Error (SPE) value and realize the abnormal detection of data through the combination of SPE value and data fusion algorithm. To ensure the accuracy and effectiveness of the algorithm, we design a regular-SPE hybrid model update strategy, which enables the principal component to be updated on demand when data anomalies are found. In addition, this strategy can significantly reduce resource consumption growth due to the data analysis architectures. Practical datasets-based simulations have confirmed that the proposed algorithm can perform data fusion and exception processing in real-time on resource-constrained devices; Our model update strategy can reduce the overall system resource consumption while ensuring the accuracy of the algorithm.

실시간 양방향 소통을 통한 이러닝 학습 지원 플랫폼의 구축 (Development of e-learning support platform through real-time two-way communication)

  • 김은미;최종원
    • 한국산학기술학회논문지
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    • 제20권7호
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    • pp.249-254
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    • 2019
  • 인공지능(AI), 사물인터넷(IoT), 빅데이터 등 4차 산업혁명에 따른 지능 정보기술의 발전과 함께 교육 분야도 이러닝(e-Learning)을 중심으로 빠르게 재편되며 '에듀테크' 개념이 확산되고 있다. 현재 선행업체들이 온라인 교육 서비스를 실시하고 있으나 실시간으로 이루어지는 양방향 커뮤니케이션이 어렵다. 또한, 오프라인 수업의 경우 학생의 수가 많고, 시간이 한정되어 있을 뿐 만 아니라 질문할 기회를 갖지 못하는 경우가 많다. 본 논문은 이러한 문제들을 해결하기 위해 오프라인이 가지는 즉문즉답의 효율성과 온라인에서의 개방성이라는 장점을 접목하여 온라인과 오프라인상에서의 질문을 자유롭게 할 수 있는 실시간 양방향 학습 질문 및 답변 운영 시스템을 개발한다. 개발된 시스템은 실시간 개인별 맞춤형 교육 시스템으로서 답변자가 질문자의 상황을 실시간으로 확인하고 질문자의 요청에 맞는 맞춤형 답변을 제공함으로써 한 번의 연결로 질문을 해결할 수 있다. 또한 시스템의 이용 시간을 초단위로 측정하여 관리함으로써 질문자와 답변자가 효율적으로 시스템을 활용하게 할 수 있다.

Adaptive Recommendation System for Health Screening based on Machine Learning

  • Kim, Namyun;Kim, Sung-Dong
    • International journal of advanced smart convergence
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    • 제9권2호
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    • pp.1-7
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    • 2020
  • As the demand for health screening increases, there is a need for efficient design of screening items. We build machine learning models for health screening and recommend screening items to provide personalized health care service. When offline, a synthetic data set is generated based on guidelines and clinical results from institutions, and a machine learning model for each screening item is generated. When online, the recommendation server provides a recommendation list of screening items in real time using the customer's health condition and machine learning models. As a result of the performance analysis, the accuracy of the learning model was close to 100%, and server response time was less than 1 second to serve 1,000 users simultaneously. This paper provides an adaptive and automatic recommendation in response to changes in the new screening environment.

A Computational Intelligence Based Online Data Imputation Method: An Application For Banking

  • Nishanth, Kancherla Jonah;Ravi, Vadlamani
    • Journal of Information Processing Systems
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    • 제9권4호
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    • pp.633-650
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    • 2013
  • All the imputation techniques proposed so far in literature for data imputation are offline techniques as they require a number of iterations to learn the characteristics of data during training and they also consume a lot of computational time. Hence, these techniques are not suitable for applications that require the imputation to be performed on demand and near real-time. The paper proposes a computational intelligence based architecture for online data imputation and extended versions of an existing offline data imputation method as well. The proposed online imputation technique has 2 stages. In stage 1, Evolving Clustering Method (ECM) is used to replace the missing values with cluster centers, as part of the local learning strategy. Stage 2 refines the resultant approximate values using a General Regression Neural Network (GRNN) as part of the global approximation strategy. We also propose extended versions of an existing offline imputation technique. The offline imputation techniques employ K-Means or K-Medoids and Multi Layer Perceptron (MLP)or GRNN in Stage-1and Stage-2respectively. Several experiments were conducted on 8benchmark datasets and 4 bank related datasets to assess the effectiveness of the proposed online and offline imputation techniques. In terms of Mean Absolute Percentage Error (MAPE), the results indicate that the difference between the proposed best offline imputation method viz., K-Medoids+GRNN and the proposed online imputation method viz., ECM+GRNN is statistically insignificant at a 1% level of significance. Consequently, the proposed online technique, being less expensive and faster, can be employed for imputation instead of the existing and proposed offline imputation techniques. This is the significant outcome of the study. Furthermore, GRNN in stage-2 uniformly reduced MAPE values in both offline and online imputation methods on all datasets.

4차 산업혁명 시대 예술·과학 융합 교육프로그램 설계 : 콘텐츠를 활용한 STEAM을 중심으로 (Art Science Convergence Curriculum Design in the 4th Industrial Revolution Era : Focusing on STEAM with Contents)

  • 박성원;이혜원
    • Journal of Information Technology Applications and Management
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    • 제28권1호
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    • pp.53-61
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    • 2021
  • The year 2020 was a time when the coronavirus infections-19 (COVID-19) caused various changes in society. In particular, the fields that have been conducted face-to-face have been greatly confused by the transition to an online non-face-to-face method, and this is the case with the field of education. There are two main advantages of offline education. The first is that we can improve our understanding through communication with teachers, and the second is that we can develop social skills through interaction with friends. But as online classes progressed due to corona 19, interaction could not be achieved. As a result, the motivation for learning has been reduced due to difficulties in real-time feedback, and the participation rate has been significantly lowered, especially in lower grades, raising concerns about the learning gap that will occur after corona 19. However, there are some cases in which online classes were conducted as effectively as offline classes by utilizing various contents. What they have in common is the use of content. Teachers generally improved the quality of education by linking interesting sights and videos that enhance learning comprehension. The provided video conveys learning-related content into stories, enabling intuitive observation. Many students were already enjoying these videos through VOD (Video on Demand) such as TV and YouTube, they were able to connect their easy access to content and interest in learning. Appropriate use of video content has rather increased the learning effect and should continue after corona 19. Therefore, it is necessary to study methodologies that apply video content efficiently to education. This study looked at the steps that needed content application through the development of education programs, and observed its meaning. Students were curious about the content, motivated to learn and participated in learning on their own. Intuitive learning, conducted through appreciation, play and content production, provided an opportunity to learn on their own in everyday life.

팀기반학습 기반 건축시공 하이브리드 교육과정 도입방안 (Introduction of Team-Based Learning Based Building Construction Hybrid Curriculum)

  • 김재엽
    • 한국건축시공학회:학술대회논문집
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    • 한국건축시공학회 2023년도 봄 학술논문 발표대회
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    • pp.351-352
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    • 2023
  • In order to respond to changes in the industrial environment such as the 4th industrial revolution, university education also needs active educational innovation efforts. This study proposed a construction construction hybrid curriculum that can actively utilize online education in the direction of educational innovation in domestic universities. The hybrid curriculum was based on online learning through lecture videos used in team-based learning. The hybrid curriculum additionally allows learners to choose their learning methods. In a hybrid class, learners can choose the class participation method they want from offline classroom or online real-time. Hybrid classes are considered to strengthen learners' options and take a step forward in learner-centered education.

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