• Title/Summary/Keyword: Real-Time Analytics

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IoT data analytics architecture for smart healthcare using RFID and WSN

  • Ogur, Nur Banu;Al-Hubaishi, Mohammed;Ceken, Celal
    • ETRI Journal
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    • v.44 no.1
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    • pp.135-146
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    • 2022
  • The importance of big data analytics has become apparent with the increasing volume of data on the Internet. The amount of data will increase even more with the widespread use of Internet of Things (IoT). One of the most important application areas of the IoT is healthcare. This study introduces new real-time data analytics architecture for an IoT-based smart healthcare system, which consists of a wireless sensor network and a radio-frequency identification technology in a vertical domain. The proposed platform also includes high-performance data analytics tools, such as Kafka, Spark, MongoDB, and NodeJS, in a horizontal domain. To investigate the performance of the system developed, a diagnosis of Wolff-Parkinson-White syndrome by logistic regression is discussed. The results show that the proposed IoT data analytics system can successfully process health data in real-time with an accuracy rate of 95% and it can handle large volumes of data. The developed system also communicates with a riverbed modeler using Transmission Control Protocol (TCP) to model any IoT-enabling technology. Therefore, the proposed architecture can be used as a time-saving experimental environment for any IoT-based system.

Factors Influencing the Continuous Watching and Paid Sponsorship Intentions of YouTube Real-Time Broadcast Viewers: Based on the S-O-R Framework (유튜브 실시간 방송 시청자의 지속시청 및 유료후원 의도에 영향을 미치는 요인: S-O-R 프레임워크를 기반으로)

  • Kwon, Ji Yoon;Yang, Seon Uk;Yang, Sung-Byung
    • Knowledge Management Research
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    • v.23 no.3
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    • pp.285-311
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    • 2022
  • In this study, based on the S-O-R framework, how individual's stimuli (i.e., video characteristics, YouTuber characteristics, real-time broadcasting characteristics of YouTube channel) form organisms (i.e., perceived usefulness, perceived pleasure, social presence), leading to viewers' responses (i.e., continuous watching intention, paid sponsorship intention) on real-time YouTube channels. For this purpose, a research model and hypotheses were constructed, and 369 questionnaire data collected from users of real-time broadcasting channel services on the YouTube platform were analyzed. Result findings confirmed that some video/YouTuber/real-time broadcasting characteristics significantly affect viewers' perceived usefulness/perceived pleasure/social presence, and further influence continuous watching/paid sponsorship intentions. Theoretical and practical implications of the findings are discussed in conclusion.

Fast Visualization Technique and Visual Analytics System for Real-time Analyzing Stream Data (실시간 스트림 데이터 분석을 위한 시각화 가속 기술 및 시각적 분석 시스템)

  • Jeong, Seongmin;Yeon, Hanbyul;Jeong, Daekyo;Yoo, Sangbong;Kim, Seokyeon;Jang, Yun
    • Journal of the Korea Computer Graphics Society
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    • v.22 no.4
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    • pp.21-30
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    • 2016
  • Risk management system should be able to support a decision making within a short time to analyze stream data in real time. Many analytical systems consist of CPU computation and disk based database. However, it is more problematic when existing system analyzes stream data in real time. Stream data has various production periods from 1ms to 1 hour, 1day. One sensor generates small data but tens of thousands sensors generate huge amount of data. If hundreds of thousands sensors generate 1GB data per second, CPU based system cannot analyze the data in real time. For this reason, it requires fast processing speed and scalability for analyze stream data. In this paper, we present a fast visualization technique that consists of hybrid database and GPU computation. In order to evaluate our technique, we demonstrate a visual analytics system that analyzes pipeline leak using sensor and tweet data.

Empirical Comparison of the Effects of Online and Offline Recommendation Duration on Purchasing Decisions: Case of Korea Food E-commerce Company

  • Qinglong Li;Jaeho Jeong;Dongeon Kim;Xinzhe Li;Ilyoung Choi;Jaekyeong Kim
    • Asia pacific journal of information systems
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    • v.34 no.1
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    • pp.226-247
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    • 2024
  • Most studies on recommender systems to evaluate recommendation performances focus on offline evaluation methods utilizing past customer transaction records. However, evaluating recommendation performance through real-world stimulation becomes challenging. Moreover, such methods cannot evaluate the duration of the recommendation effect. This study measures the personalized recommendation (stimulus) effect when the product recommendation to customers leads to actual purchases and evaluates the duration of the stimulus personalized recommendation effect leading to purchases. The results revealed a 4.58% improvement in recommendation performance in the online environment compared with that in the offline environment. Furthermore, there is little difference in recommendation performance in offline experiments by period, whereas the recommendation performance declines with time in online experiments.

Design and Implementation of a Real -Time Analytics System for Network Packet Trend Analysis (네트워크 패킷 트랜드 분석을 위한 실시간 스트림 데이터 분석 시스템 설계 및 구현)

  • Park, Seoeun
    • Proceedings of the Korea Information Processing Society Conference
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    • 2016.04a
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    • pp.72-75
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    • 2016
  • 스마트폰, 센서, 소셜미디어, 웹 서비스 등으로부터 발생되는 데이터의 폭증으로 인하여 빅데이터의 분석 및 활용에 대한 요구가 커져가고 있다. 특히 스마트 기기의 발달과 사용자 이용 패턴의 변화로 인하여 스트림 데이터는 끊임없이 발생되고 있지만, 기존의 하둡을 이용한 분석 시스템은 응답시간이 지연되어 빠르게 결과를 조회할 수 없는 단점으로 인하여 데이터를 실시간으로 분석하여 바로 활용할 수 있는 시스템에 대한 요구가 점점 더 증가하면서 람다 아키텍쳐가 등장하였다. 람다 아키텍쳐는 데이터 처리 과정을 배치 레이어와 스피트 레이어로 나누고, 스피드 레이어에서는 배치 결과가 나오기 전까지 스트림으로 유입되는 데이터를 실시간으로 분석하여 가장 최근의 데이터를 빠르게 조회 할 수 있도록 결과를 제공한다. 본 논문에서는 람다 아키텍쳐를 활용하여 연속적으로 유입되는 대용량의 스트림 데이터를 효과적으로 처리하여 실시간 분석과 동시에 배치 분석을 제공하는 데이터 처리 시스템을 설계하고 구현한다.

From Machine Learning Algorithms to Superior Customer Experience: Business Implications of Machine Learning-Driven Data Analytics in the Hospitality Industry

  • Egor Cherenkov;Vlad Benga;Minwoo Lee;Neil Nandwani;Kenan Raguin;Marie Clementine Sueur;Guohao Sun
    • Journal of Smart Tourism
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    • v.4 no.2
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    • pp.5-14
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    • 2024
  • This study explores the transformative potential of machine learning (ML) and ML-driven data analytics in the hospitality industry. It provides a comprehensive overview of this emerging method, from explaining ML's origins to introducing the evolution of ML-driven data analytics in the hospitality industry. The present study emphasizes the shift embodied in ML, moving from explicit programming towards a self-learning, adaptive approach refined over time through big data. Meanwhile, social media analytics has progressed from simplistic metrics deriving nuanced qualitative insights into consumer behavior as an industry-specific example. Additionally, this study explores innovative applications of these innovative technologies in the hospitality sector, whether in demand forecasting, personalized marketing, predictive maintenance, etc. The study also emphasizes the integration of ML and social media analytics, discussing the implications like enhanced customer personalization, real-time decision-making capabilities, optimized marketing campaigns, and improved fraud detection. In conclusion, ML-driven hospitality data analytics have become indispensable in the strategic and operation machinery of contemporary hospitality businesses. It projects these technologies' continued significance in propelling data-centric advancements across the industry.

Real time predictive analytic system design and implementation using Bigdata-log (빅데이터 로그를 이용한 실시간 예측분석시스템 설계 및 구현)

  • Lee, Sang-jun;Lee, Dong-hoon
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.25 no.6
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    • pp.1399-1410
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    • 2015
  • Gartner is requiring companies to considerably change their survival paradigms insisting that companies need to understand and provide again the upcoming era of data competition. With the revealing of successful business cases through statistic algorithm-based predictive analytics, also, the conversion into preemptive countermeasure through predictive analysis from follow-up action through data analysis in the past is becoming a necessity of leading enterprises. This trend is influencing security analysis and log analysis and in reality, the cases regarding the application of the big data analysis framework to large-scale log analysis and intelligent and long-term security analysis are being reported file by file. But all the functions and techniques required for a big data log analysis system cannot be accommodated in a Hadoop-based big data platform, so independent platform-based big data log analysis products are still being provided to the market. This paper aims to suggest a framework, which is equipped with a real-time and non-real-time predictive analysis engine for these independent big data log analysis systems and can cope with cyber attack preemptively.

Design and Implementation of a Big Data Analytics Framework based on Cargo DTG Data for Crackdown on Overloaded Trucks

  • Kim, Bum-Soo
    • Journal of the Korea Society of Computer and Information
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    • v.24 no.12
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    • pp.67-74
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    • 2019
  • In this paper, we design and implement an analytics platform based on bulk cargo DTG data for crackdown on overloaded trucks. DTG(digital tachograph) is a device that stores the driving record in real time; that is, it is a device that records the vehicle driving related data such as GPS, speed, RPM, braking, and moving distance of the vehicle in one second unit. The fast processing of DTG data is essential for finding vehicle driving patterns and analytics. In particular, a big data analytics platform is required for preprocessing and converting large amounts of DTG data. In this paper, we implement a big data analytics framework based on cargo DTG data using Spark, which is an open source-based big data framework for crackdown on overloaded trucks. As the result of implementation, our proposed platform converts real large cargo DTG data sets into GIS data, and these are visualized by a map. It also recommends crackdown points.

A Study on the Calculation and Provision of Accruals-Quality by Big Data Real-Time Predictive Analysis Program

  • Shin, YeounOuk
    • International journal of advanced smart convergence
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    • v.8 no.3
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    • pp.193-200
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    • 2019
  • Accruals-Quality(AQ) is an important proxy for evaluating the quality of accounting information disclosures. High-quality accounting information will provide high predictability and precision in the disclosure of earnings and will increase the response to stock prices. And high Accruals-Quality, such as mitigating heterogeneity in accounting information interpretation, provides information usefulness in capital markets. The purpose of this study is to suggest how AQ, which represents the quality of accounting information disclosure, is transformed into digitized data in real-time in combination with IT information technology and provided to financial analyst's information environment in real-time. And AQ is a framework for predictive analysis through big data log analysis system. This real-time information from AQ will help financial analysts to increase their activity and reduce information asymmetry. In addition, AQ, which is provided in real time through IT information technology, can be used as an important basis for decision-making by users of capital market information, and is expected to contribute in providing companies with incentives to voluntarily improve the quality of accounting information disclosure.

A study on the MD&A Disclosure Quality in real-time calculated and provided By Programming Technology

  • Shin, YeounOuk
    • International Journal of Internet, Broadcasting and Communication
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    • v.11 no.3
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    • pp.41-48
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    • 2019
  • The Management Discussion and Analysis(MD&A) provides investors with an opportunity to gain insight into the company from a manager's perspective and enables short-term and long-term analysis of the business. And MD&A is an important channel through which companies and investors can communicate, providing a useful source of information for analyzing financialstatements. MD&A is measured by the quality of disclosure and there are many previous studies on the usefulness of disclosure information. Therefore, it is very important for the financial analyst who is the representative information user group in the capital market that MD&A Disclosure Quality is measured in real-time in combination with IT information technology and provided timely to financial analyst. In this study, we propose a method that real-time data is converted to digitalized data by combining MD&A disclosure with IT information technology and provided to financial analyst's information environment in real-time. The real-time information provided by MD&A can help the financial analysts' activities and reduce information asymmetry.