• Title/Summary/Keyword: 기업 이러닝

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Text Mining-Based Emerging Trend Analysis for e-Learning Contents Targeting for CEO (텍스트마이닝을 통한 최고경영자 대상 이러닝 콘텐츠 트렌드 분석)

  • Kyung-Hoon Kim;Myungsin Chae;Byungtae Lee
    • Information Systems Review
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    • v.19 no.2
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    • pp.1-19
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    • 2017
  • Original scripts of e-learning lectures for the CEOs of corporation S were analyzed using topic analysis, which is a text mining method. Twenty-two topics were extracted based on the keywords chosen from five-year records that ranged from 2011 to 2015. Research analysis was then conducted on various issues. Promising topics were selected through evaluation and element analysis of the members of each topic. In management and economics, members demonstrated high satisfaction and interest toward topics in marketing strategy, human resource management, and communication. Philosophy, history of war, and history demonstrated high interest and satisfaction in the field of humanities, whereas mind health showed high interest and satisfaction in the field of in lifestyle. Studies were also conducted to identify topics on the proportion of content, but these studies failed to increase member satisfaction. In the field of IT, educational content responds sensitively to change of the times, but it may not increase the interest and satisfaction of members. The present study found that content production for CEOs should draw out deep implications for value innovation through technology application instead of simply ending the technical aspect of information delivery. Previous studies classified contents superficially based on the name of content program when analyzing the status of content operation. However, text mining can derive deep content and subject classification based on the contents of unstructured data script. This approach can examine current shortages and necessary fields if the service contents of the themes are displayed by year. This study was based on data obtained from influential e-learning companies in Korea. Obtaining practical results was difficult because data were not acquired from portal sites or social networking service. The content of e-learning trends of CEOs were analyzed. Data analysis was also conducted on the intellectual interests of CEOs in each field.

A Performance Comparison of Land-Based Floating Debris Detection Based on Deep Learning and Its Field Applications (딥러닝 기반 육상기인 부유쓰레기 탐지 모델 성능 비교 및 현장 적용성 평가)

  • Suho Bak;Seon Woong Jang;Heung-Min Kim;Tak-Young Kim;Geon Hui Ye
    • Korean Journal of Remote Sensing
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    • v.39 no.2
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    • pp.193-205
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    • 2023
  • A large amount of floating debris from land-based sources during heavy rainfall has negative social, economic, and environmental impacts, but there is a lack of monitoring systems for floating debris accumulation areas and amounts. With the recent development of artificial intelligence technology, there is a need to quickly and efficiently study large areas of water systems using drone imagery and deep learning-based object detection models. In this study, we acquired various images as well as drone images and trained with You Only Look Once (YOLO)v5s and the recently developed YOLO7 and YOLOv8s to compare the performance of each model to propose an efficient detection technique for land-based floating debris. The qualitative performance evaluation of each model showed that all three models are good at detecting floating debris under normal circumstances, but the YOLOv8s model missed or duplicated objects when the image was overexposed or the water surface was highly reflective of sunlight. The quantitative performance evaluation showed that YOLOv7 had the best performance with a mean Average Precision (intersection over union, IoU 0.5) of 0.940, which was better than YOLOv5s (0.922) and YOLOv8s (0.922). As a result of generating distortion in the color and high-frequency components to compare the performance of models according to data quality, the performance degradation of the YOLOv8s model was the most obvious, and the YOLOv7 model showed the lowest performance degradation. This study confirms that the YOLOv7 model is more robust than the YOLOv5s and YOLOv8s models in detecting land-based floating debris. The deep learning-based floating debris detection technique proposed in this study can identify the spatial distribution of floating debris by category, which can contribute to the planning of future cleanup work.

A Study on the Cognitive/Affective Personality and Experiential Factors Influencing on Smart Phone Users' Emotional Exhaustion and Education Performance (스마트폰 이용자의 정서적 소진과 학습 성과에 영향을 주는 인지·감성 성향과 사용 경험에 관한 연구)

  • Ming-Yuan Sun;Sundong Kwon;Yong-Young Kim
    • Information Systems Review
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    • v.18 no.4
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    • pp.69-88
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    • 2016
  • Nowadays, organizations have adopted Smart Work to efficiently manage tasks, such as electronic document approval, customer management, and site inspection, without spatial-temporal constraints. Smartphones, which are commonly used in Smart Work, enable individuals to perform their jobs anytime and anywhere, thus blurring the boundary between work and non-work. To solve the problem of blurred work/non-work boundaries, a construct of self-control and affective factors needs to be considered because business style is changed from command to autonomy in the Smart Work context. Moreover, employees can convey their emotions easily over smartphones. Recent marketing studies have analyzed consumers' behavior based on the combination of cognitive, affective, and behavioral components, and researchers of information systems are also interested in these factors. However, previous research has some limitations, such as not classifying factors into cognitive, affective, and behavioral as well as not covering all three factors. Therefore, we explore the roles of cognitive, affective, and behavioral components in emotional exhaustion and education performance, and conduct a survey on undergraduate and graduate students, who are the major users of smartphones. Findings show that when individuals improve their cognitive capability (self-control) and usage experience (smartphone communication and internet usage), they can decrease emotional exhaustion and increase education performance. In the role of affective capability, increasing education performance is partially accepted. These results imply that organizations should not focus on controlling the usage of smartphones but on promoting appropriate smartphone usage.

The Study on the Successful Operation for the Company's e-Learning (기업 이러닝의 성공적 실천 방안에 관한 연구 : K사를 중심으로)

  • Yoon, Young-Han;Park, Hak-Bum;Kwon, Sun-Dong
    • Journal of Information Technology Applications and Management
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    • v.14 no.1
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    • pp.145-160
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    • 2007
  • The knowledge based economy requires more and more people to learn new knowledge and skills in a timely and effective manner. These needs and new technology such as computer and Internet are fueling a transition in e-learning. We did the case study of K company, which is leading the business to business e-learning in Korea. We investigated prior studies about e-learning and deduced the major variables composed of learner, tutor, infrastructure, contents, and practice. And then we suggested the successful way of doing the operation for the company's e-learning. We hope that this research will help the companies that have introduced or consider the adoption of e-learning.

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Consensus of Corporate e-Learning System Stakeholders Regarding the Satisfaction of End-Users (기업 이러닝시스템 성과에 대한 이해관계자 인식 부합 관점의 연구)

  • Kim, Jae-Sik;Yang, Hee-Dong;Um, Hye-Mi;Kim, Jae-Kyoung
    • Asia pacific journal of information systems
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    • v.15 no.4
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    • pp.27-60
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    • 2005
  • The purpose of this study is to call attention to the consensus of stakeholders of corporate e-Learning system for the sake of its success. We identified the critical success factors(contents, technical features, management, and organizational support) as major components of corporate e-Learning systems and questioned whether stakeholders' consensus on the importance of these components facilitates the successful implementation of these components. We also questioned whether the influence of these components on user satisfaction could be moderated by contextual factors. Based on empirical testing of 18 e-Learning user companies, we verified that the consensus of stakeholders regarding the importance of content, technological features, and organizational support has a positive influence on the perceived quality of these factors in their e-Learning systems, which in turn is positively related to user satisfaction. The learning subjects and learning style did significantly moderate the influences of these perceived qualities on user satisfaction.

사물인터넷 환경에서의 기계학습

  • Im, Jae-Hyeon;Park, Yun-Gi;Gwon, Jin-Man;Seo, Jeong-Uk
    • Information and Communications Magazine
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    • v.33 no.5
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    • pp.48-54
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    • 2016
  • 우리는 물리적인 현실 세계와 디지털의 가상 세계에서 매일 끊임없이 데이터를 양산해내고 있다. 구글, 아마존, MS, IBM 등의 유수 기업들은 이미 데이터를 수집하고 분석하여 특정 사용자나 불특정 다수에게 다양한 서비스를 제공하면서 새로운 형태의 이윤을 창출하고 있다. 가까운 미래에 사물인터넷(Internet of Things)이 본격적으로 활성화된다면 사람뿐만 아니라 모든 사물들이 인터넷을 통해 데이터를 양산하고 서로 교환하는 그야말로 데이터 빅뱅의 시대가 도래할 것으로 예상된다. 이러한 변혁의 시대에 우리는 사물인터넷을 통해 수집되는 수많은 데이터를 어떻게 활용할 것인지에 대해 진지하게 고민하고 연구할 필요가 있다. 본고에서는 사물인터넷을 통해 수집된 데이터를 효과적으로 활용하기 위해 필요한 핵심기술 중 하나인 기계학습(Machine Learning)에 대해 기본 개념, 종류, 평가방법 등을 설명하고 기계학습 알고리즘 중 딥 러닝(Deep Learning)에 대한 기술 동향을 살펴본 후, 사물인터넷에서 기계학습 프레임워크에 대해 간략히 소개한다.

A Comparative Study of Statistical Techniques and Machine Learning Models for Efficient Leased Line Resource Usage Prediction (효율적인 전용회선 자원 사용량 예측을 위한 통계적 기법과 기계학습 모델 비교 연구)

  • Lee, In-Gyu;Song, Mi-Hwa
    • Proceedings of the Korea Information Processing Society Conference
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    • 2021.05a
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    • pp.474-476
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    • 2021
  • 전용회선은 두 지역을 독점적으로 사용하는 구조이기 때문에 안정된 품질수준과 보안성이 확보되어 교환 회선의 급격한 증가에도 불구하고 지속적으로 많이 사용하는 회선 방식이다. 하지만 비용이 상대적으로 고가이기 때문에 네트워크 전용회선의 자원을 적절히 배치하고 활용하여 최적의 상태를 유지하는 것이 중요한 요소이다. 이에 본 연구에서는 기업 네트워크에서 사용하는 전용회선의 실제 사용률 데이터를 기반으로 다양한 시계열 데이터 예측 모델을 적용하고 성능을 평가하였다. 일반적으로 통계적인 방법으로 많이 사용하는 평활화 모형 및 ARIMA 모형과 요즘 많은 연구가 되고 있는 인공신경망에 기반한 딥러닝의 대표적인 모델들을 적용하여 각각의 예측에 대한 성능을 측정하고 비교하였다.

Twitter Sentiment Analysis for Natural Language Processing (자연어 처리를 위한 트위터 감정 분석)

  • Li, Ang;Joe, Inwhee
    • Proceedings of the Korea Information Processing Society Conference
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    • 2022.11a
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    • pp.457-458
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    • 2022
  • 인터넷 시대에 소셜 미디어는 사람들의 삶에 완전히 침투했다. 많은 사용자 기반을 보유한 성숙한 온라인 플랫폼 중 하나인 Twitter를 통해 사용자는 최신 뉴스, 삶의 경험 및 흥미로운 삶의 이야기를 독립적으로 게시할 수 있다. 하지만 때론 부정적인 뉘앙스를 풍기며 기업이나 개인의 브랜드에 영향을 미치며 이익을 훼손하는 경우가 있기 때문에 욕설을 식별해 트위터 발신을 차단할 필요가 있다. 이 기사의 가장 큰 혁신은 Twitter 데이터를 사용하여 다양한 방법을 동시에 비교한다는 것입니다. 더 많은 데이터를 처리할수록 딥 러닝을 시도하면 좋은 결과를 얻을 수 있다. Transformer 분류기를 통합하여 최상의 결과를 얻었다

Application and Performance Analysis of Double Pruning Method for Deep Neural Networks (심층신경망의 더블 프루닝 기법의 적용 및 성능 분석에 관한 연구)

  • Lee, Seon-Woo;Yang, Ho-Jun;Oh, Seung-Yeon;Lee, Mun-Hyung;Kwon, Jang-Woo
    • Journal of Convergence for Information Technology
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    • v.10 no.8
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    • pp.23-34
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    • 2020
  • Recently, the artificial intelligence deep learning field has been hard to commercialize due to the high computing power and the price problem of computing resources. In this paper, we apply a double pruning techniques to evaluate the performance of the in-depth neural network and various datasets. Double pruning combines basic Network-slimming and Parameter-prunning. Our proposed technique has the advantage of reducing the parameters that are not important to the existing learning and improving the speed without compromising the learning accuracy. After training various datasets, the pruning ratio was increased to reduce the size of the model.We confirmed that MobileNet-V3 showed the highest performance as a result of NetScore performance analysis. We confirmed that the performance after pruning was the highest in MobileNet-V3 consisting of depthwise seperable convolution neural networks in the Cifar 10 dataset, and VGGNet and ResNet in traditional convolutional neural networks also increased significantly.

Atrous Residual U-Net for Semantic Segmentation in Street Scenes based on Deep Learning (딥러닝 기반 거리 영상의 Semantic Segmentation을 위한 Atrous Residual U-Net)

  • Shin, SeokYong;Lee, SangHun;Han, HyunHo
    • Journal of Convergence for Information Technology
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    • v.11 no.10
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    • pp.45-52
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    • 2021
  • In this paper, we proposed an Atrous Residual U-Net (AR-UNet) to improve the segmentation accuracy of semantic segmentation method based on U-Net. The U-Net is mainly used in fields such as medical image analysis, autonomous vehicles, and remote sensing images. The conventional U-Net lacks extracted features due to the small number of convolution layers in the encoder part. The extracted features are essential for classifying object categories, and if they are insufficient, it causes a problem of lowering the segmentation accuracy. Therefore, to improve this problem, we proposed the AR-UNet using residual learning and ASPP in the encoder. Residual learning improves feature extraction ability and is effective in preventing feature loss and vanishing gradient problems caused by continuous convolutions. In addition, ASPP enables additional feature extraction without reducing the resolution of the feature map. Experiments verified the effectiveness of the AR-UNet with Cityscapes dataset. The experimental results showed that the AR-UNet showed improved segmentation results compared to the conventional U-Net. In this way, AR-UNet can contribute to the advancement of many applications where accuracy is important.