• Title/Summary/Keyword: End-to-end learning

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A Study on the Effects of Learning Motivation Factors of the Cyber Home Study Contents using Structural Equation Model on Learning Satisfaction and Activation (구조방정식 모형을 이용한 사이버가정학습 콘텐츠의 학습동기요인이 학습만족과 활성화에 미치는 영향에 관한 연구)

  • Yang, Seung-Gu;Baek, Hyeon-Gi
    • Journal of Digital Convergence
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    • v.6 no.2
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    • pp.145-155
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    • 2008
  • The purpose of this research is to investigate the effects of the Cyber Home Learning Motivation Factors on its satisfaction and activation through surveying the actual conditions among the students present at a cyber home learning class. For this study, samples were collected around the end of a term from the students(300 in pilot test and 248 in main test) who were taking Cyber Home Lecture at high school level. Structural equation model by AMOS 5.0 was used to analyze the data. The result of our analysis is summarized as follows. First, the cyber home learning satisfaction has a positive effect on the cyber home learning activation. Second, the 4 factors of the cyber home learning motivation: relevancy, self-confidence and satisfaction has a positive effect on the cyber home learning satisfaction. But the factor 'attention' has no positive effect on the cyber home learning satisfaction. Therefore, the Good Cyber Home Learning Contents should provide the information quality which meets 3 conditions: relevancy, self-confidence and satisfaction.

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Effects of Simulation and Problem-Based Learning Courses on Student Critical Thinking, Problem Solving Abilities and Learning (간호학생의 비판적 사고성향, 문제해결능력과 학습에 대한 PBL과 S-PBL의 효과)

  • Son, Young-Ju;Song, Young-A
    • The Journal of Korean Academic Society of Nursing Education
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    • v.18 no.1
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    • pp.43-52
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    • 2012
  • Purpose: The purpose of the study was to discover long-term effects of Problem-based learning (PBL) and Simulation Problem-based learning (S-PBL) on critical thinking, problem solving abilities, learning attitude, motivation, and learning satisfaction among nursing students at Cheju Halla College. These students were taking problem based learning and simulation as a problem based learning method with an integrated curriculum. Methods: This study used a pretest-posttest with repeated measure design. Data was collected using convenience sampling from the beginning of the 1st semester to the end of the 2nd year when the PBL and S-PBL were completed by those who were enrolled in the integrated nursing curriculum. One-hundred eighty-three surveys were collected and analyzed during the repeat data collection. Results: There we restatistically significant differences of critical thinking, problem solving abilities, learning attitude, motivation and satisfaction post PBL and S-PBL. Conclusion: This study contributes to our understanding of outcomes from the PBL and S-PBL approach. The students undertaking PBL and S-PBL demonstrated that they developed a more positive attitude about their educational experience. In addition, students' tendency to think critically and problem solve improved through the use of the PBL and S-PBL approach.

Design and Implementation of ELAS in AI education (Experiential K-12 AI education Learning Assessment System)

  • Moon, Seok-Jae;Lee, Kibbm
    • International Journal of Advanced Culture Technology
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    • v.10 no.2
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    • pp.62-68
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    • 2022
  • Evaluation as learning is important for the learner competency test, and the applicable method is studied. Assessment is the role of diagnosing the current learner's status and facilitating learning through appropriate feedback. The system is insufficient to enable process-oriented evaluation in small educational institute. Focusing on becoming familiar with the AI through experience can end up simply learning how to use the tools or just playing with them rather than achieving ultimate goals of AI education. In a previous study, the experience way of AI education with PLAY model was proposed, but the assessment stage is insufficient. In this paper, we propose ELAS (Experiential K-12 AI education Learning Assessment System) for small educational institute. In order to apply the Assessment factor in in this system, the AI-factor is selected by researching the goals of the current SW education and AI education. The proposed system consists of 4 modules as Assessment-factor agent, Self-assessment agent, Question-bank agent and Assessment -analysis agent. Self-assessment learning is a powerful mechanism for improving learning for students. ELAS is extended with the experiential way of AI education model of previous study, and the teacher designs the assessment through the ELAS system. ELAS enables teachers of small institutes to automate analysis and manage data accumulation following their learning purpose. With this, it is possible to adjust the learning difficulty in curriculum design to make better for your purpose.

The Exoscope versus operating microscope in microvascular surgery: A simulation non-inferiority trial

  • Pafitanis, Georgios;Hadjiandreou, Michalis;Alamri, Alexander;Uff, Christopher;Walsh, Daniel;Myers, Simon
    • Archives of Plastic Surgery
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    • v.47 no.3
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    • pp.242-249
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    • 2020
  • Background The Exoscope is a novel high-definition digital camera system. There is limited evidence signifying the use of exoscopic devices in microsurgery. This trial objectively assesses the effects of the use of the Exoscope as an alternative to the standard operating microscope (OM) on the performance of experts in a simulated microvascular anastomosis. Methods Modus V Exoscope and OM were used by expert microsurgeons to perform standardized tasks. Hand-motion analyzer measured the total pathlength (TP), total movements (TM), total time (TT), and quality of end-product anastomosis. A clinical margin of TT was performed to prove non-inferiority. An expert performed consecutive microvascular anastomoses to provide the exoscopic learning curve until reached plateau in TT. Results Ten micro sutures and 10 anastomoses were performed. Analysis demonstrated statistically significant differences in performing micro sutures for TP, TM, and TT. There was statistical significance in TM and TT, however, marginal non-significant difference in TP regarding microvascular anastomoses performance. The intimal suture line analysis demonstrated no statistically significant differences. Non-inferiority results based on clinical inferiority margin (Δ) of TT=10 minutes demonstrated an absolute difference of 0.07 minutes between OM and Exoscope cohorts. A 51%, 58%, and 46% improvement or reduction was achieved in TT, TM, TP, respectively, during the exoscopic microvascular anastomosis learning curve. Conclusions This study demonstrated that experts' Exoscope anastomoses appear non-inferior to the OM anastomoses. Exoscopic microvascular anastomosis was more time consuming but end-product (patency) in not clinically inferior. Experts' "warm-up" learning curve is steep but swift and may prove to reach clinical equality.

An MILP Approach to a Nonlinear Pattern Classification of Data (혼합정수 선형계획법 기반의 비선형 패턴 분류 기법)

  • Kim, Kwangsoo;Ryoo, Hong Seo
    • Journal of Korean Institute of Industrial Engineers
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    • v.32 no.2
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    • pp.74-81
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    • 2006
  • In this paper, we deal with the separation of data by concurrently determined, piecewise nonlinear discriminant functions. Toward the end, we develop a new $l_1$-distance norm error metric and cast the problem as a mixed 0-1 integer and linear programming (MILP) model. Given a finite number of discriminant functions as an input, the proposed model considers the synergy as well as the individual role of the functions involved and implements a simplest nonlinear decision surface that best separates the data on hand. Hence, exploiting powerful MILP solvers, the model efficiently analyzes any given data set for its piecewise nonlinear separability. The classification of four sets of artificial data demonstrates the aforementioned strength of the proposed model. Classification results on five machine learning benchmark databases prove that the data separation via the proposed MILP model is an effective supervised learning methodology that compares quite favorably to well-established learning methodologies.

Teaching Switching Converter Design Using Problem-Based Learning with Simulation of Characterization Modeling

  • Wang, Shun-Chung;Chen, Yih-Chien;Su, Juing-Huei
    • Journal of Power Electronics
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    • v.10 no.6
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    • pp.595-603
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    • 2010
  • In this paper, teaching in a "switching converter (SC) design" course using problem-based learning (PBL) with dynamicbehavior- model simulation, given at Lunghwa University of Science and Technology (LHU), Taiwan, is proposed. The devised methodology encourages students to design and implement the SCs and regulate the controller's parameters in frequency domain by using 'sisitool' ('bode') in the MATLAB toolbox. The environment of PBL with converter characterization modeling and simulation reforms the learning outcome greatly and speeds up the teaching-learning process. To qualify and evaluate the learning achievements, a hands-on project cooperated with the continuous assessment approach is performed to modulate the teaching pace and learning direction in good time. Results from surveys conducted in the end of the course provided valuable opinions and suggestions for assessing and improving the learning effect of the proposed course successively. Positive feedbacks from the examinations, homework, questionnaires, and the answers to the lecturer's quizzes during class indicated that the presented pedagogy supplied more helpfulness to students in comparisons with conventional teaching paradigm, their learning accomplishments were better than expected as well.

Neural Theorem Prover with Word Embedding for Efficient Automatic Annotation (효율적인 자동 주석을 위한 단어 임베딩 인공 신경 정리 증명계 구축)

  • Yang, Wonsuk;Park, Hancheol;Park, Jong C.
    • Journal of KIISE
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    • v.44 no.4
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    • pp.399-410
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    • 2017
  • We present a system that automatically annotates unverified Web sentences with information from credible sources. The system turns to neural theorem proving for an annotating task for cancer related Wikipedia data (1,486 propositions) with Korean National Cancer Center data (19,304 propositions). By switching the recursive module in a neural theorem prover to a word embedding module, we overcome the fundamental problem of tremendous learning time. Within the identical environment, the original neural theorem prover was estimated to spend 233.9 days of learning time. In contrast, the revised neural theorem prover took only 102.1 minutes of learning time. We demonstrated that a neural theorem prover, which encodes a proposition in a tensor, includes a classic theorem prover for exact match and enables end-to-end differentiable logic for analogous words.

A Study on Instructors and Learners Perceptions of Technology Convergence College for Distance Education in the COVID-19 Situation (COVID-19 상황에서 원격수업에 대한 기술융합 공업계 대학의 교수자와 학습자 인식 고찰)

  • Moon, Byung-Koo;Jie, Myoung-Seok;Shin, Jun-Yong
    • Journal of Convergence for Information Technology
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    • v.11 no.10
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    • pp.171-181
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    • 2021
  • This study tried to derive improvement measures by identifying the perceptions of industrial college instructors and learners in the technology convergence sector, where various technologies are combined, as distance education at colleges are prolonged due to COVID-19 and difficulties for instructors and learners continue. To this end, an online survey was conducted on automobile professors and students at the end of the second semester of 2020. As a result of the survey analysis, it was found that professors and students had similar perceptions about the advantages of online classes, such as freedom of time and space, repeatable learning, and recycling. In terms of difficulties, it was found that students felt a decrease in learning immersion due to a lack of sense of presence, and both professors and students felt the difficulty of interaction relatively large. This study is meaningful in that it prepares suggestions and basic data on college policy support for online education at industrial colleges during and after COVID-19.

Development of Observation Measure for Analyzing the Teaching and Learning Activities in Ubiquitous-Based Learning Class (유비쿼터스 기반 수업활동 분석을 위한 관찰도구 개발)

  • Lee, Young-Min;Lee, Soo-Young
    • 한국정보교육학회:학술대회논문집
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    • 2011.01a
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    • pp.119-124
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    • 2011
  • The purpose of the paper was to develop an observation measure for analyzing the teaching and learning activities in ubiquitous-based learning. To develop the measure, we reviewed the literature related to the measure and identified the valid observation domain and indicators. In the procedure, we did a pilot study for validating the measure and its indicators, and in the end, finalized it. The observation measure consists of: types of instruction, teaching and learning strategies, learning activities, use of technology, evaluation process, and wrap-up. In addition, we added the qualitative domain, which needs for monitoring and writing more specific teaching and learning activities in ubiquitous-based learning.

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Comparison of Teaching about Breast Cancer via Mobile or Traditional Learning Methods in Gynecology Residents

  • Alipour, Sadaf;Moini, Ashraf;Jafari-Adli, Shahrzad;Gharaie, Nooshin;Mansouri, Khorshid
    • Asian Pacific Journal of Cancer Prevention
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    • v.13 no.9
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    • pp.4593-4595
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    • 2012
  • Introduction: Mobile learning enables users to interact with educational resources while in variable locations. Medical students in residency positions need to assimilate considerable knowledge besides their practical training and we therefore aimed to evaluate the impact of using short message service via cell phone as a learning tool in residents of Obstetrics and Gynecology in our hospital. Methods: We sent short messages including data about breast cancer to the cell phones of 25 residents of gynecology and obstetrics and asked them to study a well-designed booklet containing another set of information about the disease in the same period. The rate of learning derived from the two methods was compared by pre- and post-tests and self-satisfaction assessed by a relevant questionnaire at the end of the program. Results: The mobile learning method had a significantly better effect on learning and created more interest in the subject. Conclusion: Learning via receiving SMS can be an effective and appealing method of knowledge acquisition in higher levels of education.