Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things

With the popularization of Internet of Things (IOT) technology, a large number of multi-source heterogeneous data are constantly generated and collected by cloud platforms, which indicates that the problem of large data in IOT has become increasingly prominent, especially for massive tags and inform...

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Main Authors: Ying Gao, Lingxi Ran
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8801822/
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author Ying Gao
Lingxi Ran
author_facet Ying Gao
Lingxi Ran
author_sort Ying Gao
collection DOAJ
description With the popularization of Internet of Things (IOT) technology, a large number of multi-source heterogeneous data are constantly generated and collected by cloud platforms, which indicates that the problem of large data in IOT has become increasingly prominent, especially for massive tags and information in IOT which is urgent to use appropriate data mining algorithms to mine the value of these data. A collaborative filtering recommendation algorithm based on multi-information source fusion (CFR-MIF) is proposed where a feature vector and time weight function are introduced to improve the accuracy of top-N recommendation. It can conveniently and effectively process the IoT data, and furthermore integrate, manage and store the massive data collected from different industries and data formats. Besides, It also provides data mining services in the whole IoT realizing prediction and decision-making, which reverses control these sensor networks, so as to control the movement and development process of objective in the Internet of Things. The experimental results based on DeviceLens 1M data set show that the proposed algorithm greatly improves the accuracy of recommendation results, recall rate and F1 value compared with other advanced algorithms.
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spelling doaj.art-caa467f894174dac97d43728aad19e772022-12-21T19:47:37ZengIEEEIEEE Access2169-35362019-01-01712358312359110.1109/ACCESS.2019.29352248801822Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of ThingsYing Gao0Lingxi Ran1https://orcid.org/0000-0001-8582-273XZhou Enlai School of Government, Nankai University, Tianjin, ChinaElectrical Engineering Department, Shandong University, Shandong, ChinaWith the popularization of Internet of Things (IOT) technology, a large number of multi-source heterogeneous data are constantly generated and collected by cloud platforms, which indicates that the problem of large data in IOT has become increasingly prominent, especially for massive tags and information in IOT which is urgent to use appropriate data mining algorithms to mine the value of these data. A collaborative filtering recommendation algorithm based on multi-information source fusion (CFR-MIF) is proposed where a feature vector and time weight function are introduced to improve the accuracy of top-N recommendation. It can conveniently and effectively process the IoT data, and furthermore integrate, manage and store the massive data collected from different industries and data formats. Besides, It also provides data mining services in the whole IoT realizing prediction and decision-making, which reverses control these sensor networks, so as to control the movement and development process of objective in the Internet of Things. The experimental results based on DeviceLens 1M data set show that the proposed algorithm greatly improves the accuracy of recommendation results, recall rate and F1 value compared with other advanced algorithms.https://ieeexplore.ieee.org/document/8801822/Collaborative filtering recommendationinformation fusiontime factorIOT
spellingShingle Ying Gao
Lingxi Ran
Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
IEEE Access
Collaborative filtering recommendation
information fusion
time factor
IOT
title Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
title_full Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
title_fullStr Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
title_full_unstemmed Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
title_short Collaborative Filtering Recommendation Algorithm for Heterogeneous Data Mining in the Internet of Things
title_sort collaborative filtering recommendation algorithm for heterogeneous data mining in the internet of things
topic Collaborative filtering recommendation
information fusion
time factor
IOT
url https://ieeexplore.ieee.org/document/8801822/
work_keys_str_mv AT yinggao collaborativefilteringrecommendationalgorithmforheterogeneousdataminingintheinternetofthings
AT lingxiran collaborativefilteringrecommendationalgorithmforheterogeneousdataminingintheinternetofthings