A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data

Big data technology has been developed rapidly in recent years. The performance improvement mechanism of targeted poverty alleviation is studied through the big data technology to further promote the comprehensive application of big data technology in poverty alleviation and development. Using the d...

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Published in:Wireless Communications and Mobile Computing
Main Author: Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
Format: Article
Language:English
Published: Hindawi Limited 2021
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85110051233&doi=10.1155%2f2021%2f5536579&partnerID=40&md5=a5ec19cd43a5ac3d61a3e626307740b3
id 2-s2.0-85110051233
spelling 2-s2.0-85110051233
Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
2021
Wireless Communications and Mobile Computing
2021

10.1155/2021/5536579
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85110051233&doi=10.1155%2f2021%2f5536579&partnerID=40&md5=a5ec19cd43a5ac3d61a3e626307740b3
Big data technology has been developed rapidly in recent years. The performance improvement mechanism of targeted poverty alleviation is studied through the big data technology to further promote the comprehensive application of big data technology in poverty alleviation and development. Using the data mining knowledge to accurately identify the poor population under the framework of big data, compared with the traditional identification method, it is obviously more accurate and persuasive, which is also helpful to find out the real causes of poverty and assist the poor residents in the future. In the current targeted poverty alleviation work, the identification of poor households and the matching of assistance measures are mainly through the visiting of village cadres and the establishment of documents. Traditional methods are time-consuming, laborious, and difficult to manage. It always omits lots of useful family information. Therefore, new technologies need to be introduced to realize intelligent identification of poverty-stricken households and reduce labor costs. In this paper, we introduce a novel DBSCAN clustering algorithm via the edge computing-based deep neural network model for targeted poverty alleviation. First, we deploy an edge computing-based deep neural network model. Then, in this constructed model, we execute data mining for the poverty-stricken family. In this paper, the DBSCAN clustering algorithm is used to excavate the poverty features of the poor households and complete the intelligent identification of the poor households. In view of the current situation of high-dimensional and large-volume poverty alleviation data, the algorithm uses the relative density difference of grid to divide the data space into regions with different densities and adopts the DBSCAN algorithm to cluster the above result, which improves the accuracy of DBSCAN. This avoids the need for DBSCAN to traverse all data when searching for density connections. Finally, the proposed method is utilized for analyzing and mining the poverty alleviation data. The average accuracy is more than 96%. The average F-measure, NMI, and PRE values exceed 90%. The results show that it provides decision support for precise matching and intelligent pairing of village cadres in poverty alleviation work. © 2021 Hui Liu et al.
Hindawi Limited
15308669
English
Article
All Open Access; Gold Open Access
author Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
spellingShingle Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
author_facet Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
author_sort Liu H.; Liu Y.; Qin Z.; Zhang R.; Zhang Z.; Mu L.
title A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
title_short A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
title_full A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
title_fullStr A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
title_full_unstemmed A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
title_sort A Novel DBSCAN Clustering Algorithm via Edge Computing-Based Deep Neural Network Model for Targeted Poverty Alleviation Big Data
publishDate 2021
container_title Wireless Communications and Mobile Computing
container_volume 2021
container_issue
doi_str_mv 10.1155/2021/5536579
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85110051233&doi=10.1155%2f2021%2f5536579&partnerID=40&md5=a5ec19cd43a5ac3d61a3e626307740b3
description Big data technology has been developed rapidly in recent years. The performance improvement mechanism of targeted poverty alleviation is studied through the big data technology to further promote the comprehensive application of big data technology in poverty alleviation and development. Using the data mining knowledge to accurately identify the poor population under the framework of big data, compared with the traditional identification method, it is obviously more accurate and persuasive, which is also helpful to find out the real causes of poverty and assist the poor residents in the future. In the current targeted poverty alleviation work, the identification of poor households and the matching of assistance measures are mainly through the visiting of village cadres and the establishment of documents. Traditional methods are time-consuming, laborious, and difficult to manage. It always omits lots of useful family information. Therefore, new technologies need to be introduced to realize intelligent identification of poverty-stricken households and reduce labor costs. In this paper, we introduce a novel DBSCAN clustering algorithm via the edge computing-based deep neural network model for targeted poverty alleviation. First, we deploy an edge computing-based deep neural network model. Then, in this constructed model, we execute data mining for the poverty-stricken family. In this paper, the DBSCAN clustering algorithm is used to excavate the poverty features of the poor households and complete the intelligent identification of the poor households. In view of the current situation of high-dimensional and large-volume poverty alleviation data, the algorithm uses the relative density difference of grid to divide the data space into regions with different densities and adopts the DBSCAN algorithm to cluster the above result, which improves the accuracy of DBSCAN. This avoids the need for DBSCAN to traverse all data when searching for density connections. Finally, the proposed method is utilized for analyzing and mining the poverty alleviation data. The average accuracy is more than 96%. The average F-measure, NMI, and PRE values exceed 90%. The results show that it provides decision support for precise matching and intelligent pairing of village cadres in poverty alleviation work. © 2021 Hui Liu et al.
publisher Hindawi Limited
issn 15308669
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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