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Research on Data Mining Models for the Internet of Things (IoT)

Research on Data Mining Models for the Internet of Things (IoT). Shen Bin#, Liu Yuan*, Wang Xiaoyi* #Ningbo Institute of Technology, Zhejiang University Ningbo, China *College of Management, Zhejiang University Hangzhou, China tsingbin@zju.edu.cn. 報告人 : 謝侃呈. Abstract.

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Research on Data Mining Models for the Internet of Things (IoT)

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  1. Research on Data Mining Models for the Internet of Things (IoT) Shen Bin#, Liu Yuan*, Wang Xiaoyi* #Ningbo Institute of Technology, Zhejiang University Ningbo, China *College of Management, Zhejiang University Hangzhou, China tsingbin@zju.edu.cn 報告人:謝侃呈

  2. Abstract • multi-layer data mining model, distributed data mining model, Grid based data mining model and data mining model from multi-technology integration perspective. • data collection layer • data management layer • event processing layer • data mining service layer

  3. Abstract • Grid based data mining model allows Grid framework to realize the functions of data mining. • Data mining model from multitechnology integration perspective describes the corresponding framework for the future Internet.

  4. INTRODUCTION • In a supermarket, there are about 700,000 RFID tag. So for a RFID data stream of supermarket • if the supermarket has readers that scan the items every second, about 12.6 GB RFID data will be produced per second, and the data will reach 544TB per day.

  5. Data collection from smart objects of IoT • Identification and addressing of smart objects • Data abstraction and compression. • Data archive, index, scalability and access control for IoT data. • Data warehouse and its query language for multidimensional analysis. • Interoperability and semantic intelligibility for heterogeneous data of IoT. • Time-series level and event level data aggregation. • Privacy and protection problem in data management of IoT.

  6. CONCLUSIONS • we propose four data mining models for the Internet of Things • multi-layer data mining model • distributed data mining model • mining model • data mining model from multitechnology • Distributed data mining model can well solve the problem arose from depositing data at different sites

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