• 제목/요약/키워드: Big data model

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빅데이터 분석을 활용한 지역 맞춤형 교육프로그램 선정 모형 개발 (A Study on Regional-customizededucation program selection model using big data analysis)

  • 김현성;김진숙
    • 문화기술의 융합
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    • 제9권2호
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    • pp.381-388
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    • 2023
  • 본 연구는 빅데이터 분석을 활용한 지역 맞춤형 교육프로그램 선정 모형 개발을 주요 목적으로 한다. 우선, 문헌 고찰을 통해 빅데이터 및 교육의 개념 및 특성 그리고 빅데이터 기술과 연구 활용 등의 이론을 분석하여, 이를 평생교육 빅데이터 활용을 위한 선결과제와 기초 연구자료로 제공한다. 아울러 교육 데이터 수집의 방법과 교육의 특성에 적정한 빅데이터 활용 방법을 제시하고 이를 활용한 지역 맞춤형 교육프로그램 선정 모형을 개발하였다. 지역 맞춤형 교육프로그램 선정 모형 개발은 총 6단계로 진행되었다. 본 연구에서 제시한 맞춤형 교육프로그램 모델은 실질적 활용 면에 있어, 국가승인통계인 '평생학습 개인 실태조사' 처럼 1년 후에 분석하지 않고 실시간으로 데이터가 제공되는 방식으로 활용 부분에 있어서도 선택적 분석이나 미래예측 등 자유도가 매우 높아 교육 분야에 빅데이터가 충분한 필요성과 가치가 있음을 알 수 있다. 뿐만 아니라 표본 모형에 사용되고 있는 모든 프로그램은 무료로 제공되고 있으며, 프로그래밍 특성상 커뮤니티 또한 활발하게 교류가 이루어지고 있어 추후 수정 및 보완 시에도 매우 용이하여 더욱 완성도 높은 교육프로그램 개발 모형을 개발할 수 있다.

Use of big data for estimation of impacts of meteorological variables on environmental radiation dose on Ulleung Island, Republic of Korea

  • Joo, Han Young;Kim, Jae Wook;Jeong, So Yun;Kim, Young Seo;Moon, Joo Hyun
    • Nuclear Engineering and Technology
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    • 제53권12호
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    • pp.4189-4200
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    • 2021
  • In this study, the relationship between the environmental radiation dose rate and meteorological variables was investigated with multiple regression analysis and big data of those variables. The environmental radiation dose rate and 36 different meteorological variables were measured on Ulleung Island, Republic of Korea, from 2011 to 2015. Not all meteorological variables were used in the regression analysis because the different meteorological variables significantly affect the environmental radiation dose rate during different periods, and the degree of influence changes with time. By applying the Pearson correlation analysis and stepwise selection methods to the big dataset, the major meteorological variables influencing the environmental radiation dose rate were identified, which were then used as the independent variables for the regression model. Subsequently, multiple regression models for the monthly datasets and dataset of the entire period were developed.

빅데이터 기술수용의 초기 특성 연구 - 기술이용자 및 기술활용자 측면의 조절효과를 중심으로 (A Study on Initial Characterization of Big Data Technology Acceptance - Moderating Role of Technology User & Technology Utilizer)

  • 김정선;송태민
    • 한국콘텐츠학회논문지
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    • 제14권9호
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    • pp.538-555
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    • 2014
  • 빅데이터와 관련 기술에 대하여 학계, 산업계, 공공의 관심이 크지만 아직까지 빅데이터 기술수용에 대하여 체계적으로 연구된 사례는 매우 드물다. 본 연구는 국내 초기 시장인 빅데이터 기술수용 연구를 위해 기술수용모델(TAM)을 중심 틀로 혁신확산이론(Innovation Diffusion Theory) 및 과업기술적합성(Task Technology Fit)이론을 통합적으로 활용하여 연구모형을 설정하였으며 빅데이터 기술 수용의 목적성을 기술수용모델의 조절변인으로 확장하였다. 연구결과 '주관적 규범'과 '과업기술적합성'이 TAM의 외생변인으로 가장 크게 영향을 가졌으며 기술기반의 새로운 서비스나 상품을 기획하고 개발하고자 하는 목적의 '기술활용자' 집단에게 '조직의 혁신성향'은 기술의 수용의도에 영향을 미치는 유의한 외생변인이나 단순히 기술을 이용하고자 하는 '기술이용자' 집단에게는 오히려 '주관적 규범'이 영향력을 가진 것으로 나타났다. 마지막으로 매개효과 검증에서도 유의한 차이점이 검증되었다.

Scalable Blockchain Storage Model Based on DHT and IPFS

  • Chen, Lu;Zhang, Xin;Sun, Zhixin
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권7호
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    • pp.2286-2304
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    • 2022
  • Blockchain is a distributed ledger that combines technologies such as cryptography, consensus mechanism, peer-to-peer transmission, and time stamping. The rapid development of blockchain has attracted attention from all walks of life, but storage scalability issues have hindered the application of blockchain. In this paper, a scalable blockchain storage model based on Distributed Hash Table (DHT) and the InterPlanetary File System (IPFS) was proposed. This paper introduces the current research status of the scalable blockchain storage model, as well as the basic principles of DHT and the InterPlanetary File System. The model construction and workflow are explained in detail. At the same time, the DHT network construction mechanism, block heat identification mechanism, new node initialization mechanism, and block data read and write mechanism in the model are described in detail. Experimental results show that this model can reduce the storage burden of nodes, and at the same time, the blockchain network can accommodate more local blocks under the same block height.

New Medical Image Fusion Approach with Coding Based on SCD in Wireless Sensor Network

  • Zhang, De-gan;Wang, Xiang;Song, Xiao-dong
    • Journal of Electrical Engineering and Technology
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    • 제10권6호
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    • pp.2384-2392
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    • 2015
  • The technical development and practical applications of big-data for health is one hot topic under the banner of big-data. Big-data medical image fusion is one of key problems. A new fusion approach with coding based on Spherical Coordinate Domain (SCD) in Wireless Sensor Network (WSN) for big-data medical image is proposed in this paper. In this approach, the three high-frequency coefficients in wavelet domain of medical image are pre-processed. This pre-processing strategy can reduce the redundant ratio of big-data medical image. Firstly, the high-frequency coefficients are transformed to the spherical coordinate domain to reduce the correlation in the same scale. Then, a multi-scale model product (MSMP) is used to control the shrinkage function so as to make the small wavelet coefficients and some noise removed. The high-frequency parts in spherical coordinate domain are coded by improved SPIHT algorithm. Finally, based on the multi-scale edge of medical image, it can be fused and reconstructed. Experimental results indicate the novel approach is effective and very useful for transmission of big-data medical image(especially, in the wireless environment).

Big Accounting Data and Sustainable Business Growth: Evidence from Listed Firms in Thailand

  • PHORNLAPHATRACHAKORN, Kornchai;JANNOPAT, Saithip
    • The Journal of Asian Finance, Economics and Business
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    • 제8권12호
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    • pp.377-389
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    • 2021
  • This study aims at investigating the effects of big accounting data on the sustainable business growth of listed firms in Thailand. In addition, it examines the mediating effects of accounting information quality and decision-making effectiveness and the moderating effects of digital innovation on the research relationships. The study's useful samples are the 289 listed Thai companies. To examine the research relationships, the structural equation model and multiple regression analysis are used in this study. According to the results of this study, big accounting data has a significant effect on accounting information quality, decision-making effectiveness, and sustainable business growth. Next, accounting information quality significantly affects decision-making effectiveness and sustainable business growth. Similarly, decision-making effectiveness significantly affects sustainable business growth. Both accounting information quality and decision-making effectiveness mediate the big accounting data-sustainable business growth relationships. Lastly, digital innovation moderates the effects of accounting information quality and decision-making effectiveness on sustainable business growth. Accordingly, In conclusion, big accounting data has emerged as a key source of sustainable competitive advantage. As a result, to succeed in competitive environments, businesses must have a thorough understanding of big accounting data.

Iowa Liquor Sales Data Predictive Analysis Using Spark

  • Ankita Paul;Shuvadeep Kundu;Jongwook Woo
    • Asia pacific journal of information systems
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    • 제31권2호
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    • pp.185-196
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    • 2021
  • The paper aims to analyze and predict sales of liquor in the state of Iowa by applying machine learning algorithms to models built for prediction. We have taken recourse of Azure ML and Spark ML for our predictive analysis, which is legacy machine learning (ML) systems and Big Data ML, respectively. We have worked on the Iowa liquor sales dataset comprising of records from 2012 to 2019 in 24 columns and approximately 1.8 million rows. We have concluded by comparing the models with different algorithms applied and their accuracy in predicting the sales using both Azure ML and Spark ML. We find that the Linear Regression model has the highest precision and Decision Forest Regression has the fastest computing time with the sample data set using the legacy Azure ML systems. Decision Tree Regression model in Spark ML has the highest accuracy with the quickest computing time for the entire data set using the Big Data Spark systems.

Predictive Analysis of Financial Fraud Detection using Azure and Spark ML

  • Priyanka Purushu;Niklas Melcher;Bhagyashree Bhagwat;Jongwook Woo
    • Asia pacific journal of information systems
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    • 제28권4호
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    • pp.308-319
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    • 2018
  • This paper aims at providing valuable insights on Financial Fraud Detection on a mobile money transactional activity. We have predicted and classified the transaction as normal or fraud with a small sample and massive data set using Azure and Spark ML, which are traditional systems and Big Data respectively. Experimenting with sample dataset in Azure, we found that the Decision Forest model is the most accurate to proceed in terms of the recall value. For the massive data set using Spark ML, it is found that the Random Forest classifier algorithm of the classification model proves to be the best algorithm. It is presented that the Spark cluster gets much faster to build and evaluate models as adding more servers to the cluster with the same accuracy, which proves that the large scale data set can be predictable using Big Data platform. Finally, we reached a recall score with 0.73, which implies a satisfying prediction quality in predicting fraudulent transactions.

Offline-to-Online Service and Big Data Analysis for End-to-end Freight Management System

  • Selvaraj, Suganya;Kim, Hanjun;Choi, Eunmi
    • Journal of Information Processing Systems
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    • 제16권2호
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    • pp.377-393
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    • 2020
  • Freight management systems require a new business model for rapid decision making to improve their business processes by dynamically analyzing the previous experience data. Moreover, the amount of data generated by daily business activities to be analyzed for making better decisions is enormous. Online-to-offline or offline-to-online (O2O) is an electronic commerce (e-commerce) model used to combine the online and physical services. Data analysis is usually performed offline. In the present paper, to extend its benefits to online and to efficiently apply the big data analysis to the freight management system, we suggested a system architecture based on O2O services. We analyzed and extracted the useful knowledge from the real-time freight data for the period 2014-2017 aiming at further business development. The proposed system was deemed useful for truck management companies as it allowed dynamically obtaining the big data analysis results based on O2O services, which were used to optimize logistic freight, improve customer services, predict customer expectation, reduce costs and overhead by improving profit margins, and perform load balancing.

비전공자를 위한 AI기초통계 교육의 고찰 (A Study on AI basic statistics Education for Non-majors)

  • 유진아
    • 통합자연과학논문집
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    • 제14권4호
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    • pp.176-182
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    • 2021
  • We live in the age of artificial intelligence, and big data and artificial intelligence education are no longer just for majors, but are required to be able to handle non-majors as well. Software and artificial intelligence education for non-majors is not just a general education, it creates talents who can understand and utilize them, and the quality of education is increasingly important. Through such education, we can nurture creative talents who can create and use new values by fusion with various fields of computing technology. Since 2015, many universities have been implementing software-oriented colleges and AI-oriented colleges to foster software-oriented human resources. However, it is not easy to provide AI basic statistics education of big data analysis deception to non-majors. Therefore, we would like to present a big data education model for non-majors in big data analysis so that big data analysis can be directly applied.