An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments

With the recent emergence of wireless sensor networks (WSNs) in the cloud computing environment, it is now possible to monitor and gather physical information via lots of sensor nodes to meet the requirements of cloud services. Generally, those sensor nodes collect data and send data to sink node wh...

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Main Authors: Xiong Luo, Ji Liu, Dandan Zhang, Weiping Wang, Yueqin Zhu
Format: Article
Language:English
Published: MDPI AG 2016-07-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/18/7/274
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spelling doaj-1ff90fc4eff5416bb2c17e5aebc155df2020-11-24T20:57:43ZengMDPI AGEntropy1099-43002016-07-0118727410.3390/e18070274e18070274An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network EnvironmentsXiong Luo0Ji Liu1Dandan Zhang2Weiping Wang3Yueqin Zhu4School of Computer and Communication Engineering, University of Science and Technology Beijing (USTB), Beijing 100083, ChinaSchool of Computer and Communication Engineering, University of Science and Technology Beijing (USTB), Beijing 100083, ChinaSchool of Computer and Communication Engineering, University of Science and Technology Beijing (USTB), Beijing 100083, ChinaSchool of Computer and Communication Engineering, University of Science and Technology Beijing (USTB), Beijing 100083, ChinaDevelopment and Research Center, China Geological Survey, Beijing 100037, ChinaWith the recent emergence of wireless sensor networks (WSNs) in the cloud computing environment, it is now possible to monitor and gather physical information via lots of sensor nodes to meet the requirements of cloud services. Generally, those sensor nodes collect data and send data to sink node where end-users can query all the information and achieve cloud applications. Currently, one of the main disadvantages in the sensor nodes is that they are with limited physical performance relating to less memory for storage and less source of power. Therefore, in order to avoid such limitation, it is necessary to develop an efficient data prediction method in WSN. To serve this purpose, by reducing the redundant data transmission between sensor nodes and sink node while maintaining the required acceptable errors, this article proposes an entropy-based learning scheme for data prediction through the use of kernel least mean square (KLMS) algorithm. The proposed scheme called E-KLMS develops a mechanism to maintain the predicted data synchronous at both sides. Specifically, the kernel-based method is able to adjust the coefficients adaptively in accordance with every input, which will achieve a better performance with smaller prediction errors, while employing information entropy to remove these data which may cause relatively large errors. E-KLMS can effectively solve the tradeoff problem between prediction accuracy and computational efforts while greatly simplifying the training structure compared with some other data prediction approaches. What’s more, the kernel-based method and entropy technique could ensure the prediction effect by both improving the accuracy and reducing errors. Experiments with some real data sets have been carried out to validate the efficiency and effectiveness of E-KLMS learning scheme, and the experiment results show advantages of the our method in prediction accuracy and computational time.http://www.mdpi.com/1099-4300/18/7/274kernel least mean square (KLMS)information entropydata predictionlearning
collection DOAJ
language English
format Article
sources DOAJ
author Xiong Luo
Ji Liu
Dandan Zhang
Weiping Wang
Yueqin Zhu
spellingShingle Xiong Luo
Ji Liu
Dandan Zhang
Weiping Wang
Yueqin Zhu
An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
Entropy
kernel least mean square (KLMS)
information entropy
data prediction
learning
author_facet Xiong Luo
Ji Liu
Dandan Zhang
Weiping Wang
Yueqin Zhu
author_sort Xiong Luo
title An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
title_short An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
title_full An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
title_fullStr An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
title_full_unstemmed An Entropy-Based Kernel Learning Scheme toward Efficient Data Prediction in Cloud-Assisted Network Environments
title_sort entropy-based kernel learning scheme toward efficient data prediction in cloud-assisted network environments
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2016-07-01
description With the recent emergence of wireless sensor networks (WSNs) in the cloud computing environment, it is now possible to monitor and gather physical information via lots of sensor nodes to meet the requirements of cloud services. Generally, those sensor nodes collect data and send data to sink node where end-users can query all the information and achieve cloud applications. Currently, one of the main disadvantages in the sensor nodes is that they are with limited physical performance relating to less memory for storage and less source of power. Therefore, in order to avoid such limitation, it is necessary to develop an efficient data prediction method in WSN. To serve this purpose, by reducing the redundant data transmission between sensor nodes and sink node while maintaining the required acceptable errors, this article proposes an entropy-based learning scheme for data prediction through the use of kernel least mean square (KLMS) algorithm. The proposed scheme called E-KLMS develops a mechanism to maintain the predicted data synchronous at both sides. Specifically, the kernel-based method is able to adjust the coefficients adaptively in accordance with every input, which will achieve a better performance with smaller prediction errors, while employing information entropy to remove these data which may cause relatively large errors. E-KLMS can effectively solve the tradeoff problem between prediction accuracy and computational efforts while greatly simplifying the training structure compared with some other data prediction approaches. What’s more, the kernel-based method and entropy technique could ensure the prediction effect by both improving the accuracy and reducing errors. Experiments with some real data sets have been carried out to validate the efficiency and effectiveness of E-KLMS learning scheme, and the experiment results show advantages of the our method in prediction accuracy and computational time.
topic kernel least mean square (KLMS)
information entropy
data prediction
learning
url http://www.mdpi.com/1099-4300/18/7/274
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