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Titlebook: Big Data Technologies and Applications; 10th EAI Internation Zeng Deze,Huan Huang,Naveen Chilamkurti Conference proceedings 2021 ICST Insti

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发表于 2025-3-21 18:23:34 | 显示全部楼层 |阅读模式
期刊全称Big Data Technologies and Applications
期刊简称10th EAI Internation
影响因子2023Zeng Deze,Huan Huang,Naveen Chilamkurti
视频video
学科分类Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engi
图书封面Titlebook: Big Data Technologies and Applications; 10th EAI Internation Zeng Deze,Huan Huang,Naveen Chilamkurti Conference proceedings 2021 ICST Insti
影响因子This book constitutes the refereed post-conference proceedings of the 10.th. International Conference on Big Data Technologies and Applications, BDTA 2020, and the 13.th. International Conference on Wireless Internet, WiCON 2020, held in December 2020. Due to COVID-19 pandemic the conference was held virtually.. The 9 full papers of BDTA 2020 were selected from 22 submissions and present all big data technologies, such as storage, search and management.. WiCON 2020 received 18 paper submissions and after the reviewing process 5 papers were accepted. The main topics include wireless and communicating networks, wireless communication security, green wireless network architectures and IoT based applications..
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https://doi.org/10.1007/978-3-319-53103-8different time nodes based on aggregate data and sequence data. The experimental results show that sequence data is more effective than aggregate data to predict learning results. The prediction AUC of RF model on sequence data is 0.77 at the lowest and 0.83 at the highest, the prediction AUC of CAR
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https://doi.org/10.1007/978-1-349-08039-7ditional sophisticated features, while also new techniques and tools are frequently introduced as a result of the undergoing research activities. Nevertheless, despite the large efforts and investments on research and innovation, the Big Data technologies introduce also a number of challenges to its
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The Vicinity of the Critical Point,or Machine (SVM) for improving performance of activity recognition. We also applied feature selection method to the collected data to decrease time complexity and increase the performance. Many experiments are conducted in this work to evaluate performance of the presented technique with human activ
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Constructing Knowledge Graph for Prognostics and Health Management of On-board Train Control System nabled training models, which reveal the distribution of the feature importance and quantitatively evaluate the fault correlation of all related features. The presented scheme is demonstrated by a big data platform with incremental field data sets from railway operation process. Case study results s
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Early Detecting the At-risk Students in Online Courses Based on Their Behavior Sequencesdifferent time nodes based on aggregate data and sequence data. The experimental results show that sequence data is more effective than aggregate data to predict learning results. The prediction AUC of RF model on sequence data is 0.77 at the lowest and 0.83 at the highest, the prediction AUC of CAR
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