• 제목/요약/키워드: big data growth

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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.

Identifying Barriers to Big Data Analytics: Design-Reality Gap Analysis in Saudi Higher Education

  • AlMobark, Bandar Abdullah
    • International Journal of Computer Science & Network Security
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    • 제21권9호
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    • pp.261-266
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    • 2021
  • The spread of cloud computing, digital computing, and the popular social media platforms have led to increased growth of data. That growth of data results in what is known as big data (BD), which seen as one of the most strategic resources. The analysis of these BD has allowed generating value from massive raw data that helps in making effective decisions and providing quality of service. With Vision 2030, Saudi Arabia seeks to invest in BD technologies, but many challenges and barriers have led to delays in adopting BD. This research paper aims to search in the state of Big Data Analytics (BDA) in Saudi higher education sector, identify the barriers by reviewing the literature, and then to apply the design-reality gap model to assess these barriers that prevent effective use of big data and highlights priority areas for action to accelerate the application of BD to comply with Vision 2030.

Growth Characteristics of Polyporales Mushrooms for the Mycelial Mat Formation

  • Bae, Bin;Kim, Minseek;Kim, Sinil;Ro, Hyeon-Su
    • Mycobiology
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    • 제49권3호
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    • pp.280-284
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    • 2021
  • Mushroom strains of Polyporales from the genera Coriolus, Trametes, Pycnoporus, Ganoderma, and Formitella were explored in terms of mycelial growth characteristics for the application of mushroom mycelia as alternative sources of materials replacing fossil fuel-based materials. Among the 64 strains of Polyporales, G. lucidum LBS5496GL was selected as the best candidate because it showed fast mycelial growth with high mycelial strength in both the sawdust-based solid medium and the potato dextrose liquid plate medium. Some of the Polyporales in this study have shown good mycelial growth, however, they mostly formed mycelial mat of weak physical strength. The higher physical strength of mycelial mat by G. lucidum LBS5496GL was attributed to its thick hyphae with the diameter of 13 mm as revealed by scanning electron microscopic analysis whereas the hyphae of others exhibited less than 2 mm. Glycerol and skim milk supported the best mycelial growth of LBS5496GL as a carbon and a nitrogen source, respectively.

농작물 생육환경정보와 생체정보 분석을 위한 빅데이터 모델 (Big Data Model for Analyzing Plant Growth Environment Informations and Biometric Informations)

  • 이종열;문창배;김병만
    • 한국산업정보학회논문지
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    • 제25권6호
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    • pp.15-23
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    • 2020
  • 기후 변화에 대응하기 위한 농업분야의 연구활동이 활발하게 이루어지고 있는 가운데 4차 산업혁명에 맞춰 정보통신기술을 활용한 스마트농업이 새로운 트랜드가 되었다. 이에 따라 다양한 노지 환경과 토양 조건에서 농작물의 스트레스를 모니터링하여 생육 이상 징후를 미리 식별하고 대응하려는 연구가 진행되고 있다. 다양한 센서를 거쳐 실시간으로 수집되는 데이터들을 인공지능 기법이나 빅데이터 기술을 활용하여 분석하려는 시도도 있다. 본 논문은 빅데이터 분석을 위해 기존 관계형 데이터베이스를 이용하여 농작물의 생육환경정보와 생체정보 분석에 효과적인 빅데이터 모델을 제안한다. 모델의 성능은 데이터 양에 따른 쿼리에 대한 응답 시간으로 측정하였다. 그 결과 최대 23.8%의 시간 단축 효과가 있음을 확인할 수 있었다.

빅데이터 분류 기법에 따른 벤처 기업의 성장 단계별 차이 분석 (The Difference Analysis between Maturity Stages of Venture Firms by Classification Techniques of Big Data)

  • 정병호
    • 디지털산업정보학회논문지
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    • 제15권4호
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    • pp.197-212
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    • 2019
  • The purpose of this study is to identify the maturity stages of venture firms through classification analysis, which is widely used as a big data technique. Venture companies should develop a competitive advantage in the market. And the maturity stage of a company can be classified into five stages. I will analyze a difference in the growth stage of venture firms between the survey response and the statistical classification methods. The firm growth level distinguished five stages and was divided into the period of start-up and declines. A classification method of big data uses popularly k-mean cluster analysis, hierarchical cluster analysis, artificial neural network, and decision tree analysis. I used variables that asset increase, capital increase, sales increase, operating profit increase, R&D investment increase, operation period and retirement number. The research results, each big data analysis technique showed a large difference of samples sized in the group. In particular, the decision tree and neural networks' methods were classified as three groups rather than five groups. The groups size of all classification analysis was all different by the big data analysis methods. Furthermore, according to the variables' selection and the sample size may be dissimilar results. Also, each classed group showed a number of competitive differences. The research implication is that an analysts need to interpret statistics through management theory in order to interpret classification of big data results correctly. In addition, the choice of classification analysis should be determined by considering not only management theory but also practical experience. Finally, the growth of venture firms needs to be examined by time-series analysis and closely monitored by individual firms. And, future research will need to include significant variables of the company's maturity stages.

빅데이터 산업 활성화 전략 연구 (Characterizing Business Strategy in a New Ecosystem of Big Data)

  • 유순덕;최광돈;신선영
    • 디지털융복합연구
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    • 제12권4호
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    • pp.1-9
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    • 2014
  • 본 연구는 빅데이터 생태계의 개념 및 구성요소의 역할과 책임을 파악하여 빅데이터 산업이 활성화되기 위해서 필요한 전략을 도출하였다. 빅데이터 생태계의 구성요소는 거버넌스, 데이터 보유자, 서비스 이용자, 서비스 제공자, 인프라 제공자로 5개 구분하였다. 5개의 구성요소 간 역할과 책임을 통해 총 11개의 활성화 전략을 도출하였다. 또한 빅데이터 산업 활성화를 위해 선행연구자들이 주장한 내용을 요약 정리하여 총 12개의 활성화 방안을 제시하였다. 빅데이터 구성요소 간 활성화방안과 선행연구자들이 주장한 내용을 결합하여 본 연구에서 총 13개의 빅데이터 산업의 활성화 전략을 제시하였다. 본 연구에서 제시한 빅데이터 산업 활성화 전략이 빅데이터 사업 및 정책방향과 계획 수립의 기본자료로 활용되기 위하여 빅데이터 산업 활성화에 긍정적인 영향을 제공할 것으로 기대한다.

A Big Data-Driven Business Data Analysis System: Applications of Artificial Intelligence Techniques in Problem Solving

  • Donggeun Kim;Sangjin Kim;Juyong Ko;Jai Woo Lee
    • 한국빅데이터학회지
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    • 제8권1호
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    • pp.35-47
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    • 2023
  • It is crucial to develop effective and efficient big data analytics methods for problem-solving in the field of business in order to improve the performance of data analytics and reduce costs and risks in the analysis of customer data. In this study, a big data-driven data analysis system using artificial intelligence techniques is designed to increase the accuracy of big data analytics along with the rapid growth of the field of data science. We present a key direction for big data analysis systems through missing value imputation, outlier detection, feature extraction, utilization of explainable artificial intelligence techniques, and exploratory data analysis. Our objective is not only to develop big data analysis techniques with complex structures of business data but also to bridge the gap between the theoretical ideas in artificial intelligence methods and the analysis of real-world data in the field of business.

Predicting required licensed spectrum for the future considering big data growth

  • Shayea, Ibraheem;Rahman, Tharek Abd.;Azmi, Marwan Hadri;Han, Chua Tien;Arsad, Arsany
    • ETRI Journal
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    • 제41권2호
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    • pp.224-234
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    • 2019
  • This paper proposes a new spectrum forecasting (SF) model to estimate the spectrum demands for future mobile broadband (MBB) services. The model requires five main input metrics, that is, the current available spectrum, site number growth, mobile data traffic growth, average network utilization, and spectrum efficiency growth. Using the proposed SF model, the future MBB spectrum demand for Malaysia in 2020 is forecasted based on the input market data of four major mobile telecommunication operators represented by A-D, which account for approximately 95% of the local mobile market share. Statistical data to generate the five input metrics were obtained from prominent agencies, such as the Malaysian Communications and Multimedia Commission, OpenSignal, Analysys Mason, GSMA, and Huawei. Our forecasting results indicate that by 2020, Malaysia would require approximately 307 MHz of additional spectrum to fulfill the enormous increase in mobile broadband data demands.

기술, 조직, 환경 관점에서 기업의 경영품질 향상을 위한 빅데이터 활용의 핵심요인에 관한 연구 (The Key Factors of Big Data Utilization for Improvement of Management Quality of Companies in terms of Technology, Organization and Environment)

  • 신수행;이상준
    • 한국IT서비스학회지
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    • 제18권1호
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    • pp.91-112
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    • 2019
  • The IoT environment has led to explosive growth of existing enterprise data, and how to utilize such big data is becoming an important issue in the management field. In this paper, major factors affecting the decisions of companies to utilize big data have been studied. And also, the effect of big data utilization on the management quality is studied empirically. During this process, we have studied the difference according to the award of Korean national quality award. As a result of the study, we confirmed that the five factors such as cost from technology, organization and environment perspective, compatibility, company size, chief officer support, and competitor pressure are key factors influencing big data utilization. Also, it was confirmed that the use of big data for management activities has an important influence on the six management quality factors based on MBNQA, and that the management quality level of Korean national quality award companies is relatively high. This paper provides practical implications for companies' use of big data because it demonstrates for the first time that big data utilization has an impact on management quality improvement.

분석지의 확장을 위한 소셜 빅데이터 활용연구 - 국내 '빅데이터' 수요공급 예측 - (a Study on Using Social Big Data for Expanding Analytical Knowledge - Domestic Big Data supply-demand expectation -)

  • 김정선;권은주;송태민
    • 지식경영연구
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    • 제15권3호
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    • pp.169-188
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    • 2014
  • Big data seems to change knowledge management system and method of enterprises to large extent. Further, the type of method for utilization of unstructured data including image, v ideo, sensor data a nd text may determine the decision on expansion of knowledge management of the enterprise or government. This paper, in this light, attempts to figure out the prediction model of demands and supply for big data market of Korea trough data mining decision making tree by utilizing text bit data generated for 3 years on web and SNS for expansion of form for knowledge management. The results indicate that the market focused on H/W and storage leading by the government is big data market of Korea. Further, the demanders of big data have been found to put important on attribute factors including interest, quickness and economics. Meanwhile, innovation and growth have been found to be the attribute factors onto which the supplier puts importance. The results of this research show that the factors affect acceptance of big data technology differ for supplier and demander. This article may provide basic method for study on expansion of analysis form of enterprise and connection with its management activities.

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