Cross-domain entity identity association analysis and prediction based on representation learning

Cross-domain identity association of network entities is a significant research challenge and a vital issue of practical value in relationship discovery and service recommendation between things in the Internet of things, cyberspace resources surveying mapping, threat tracking, and intelligent recom...

Full description

Saved in:
Bibliographic Details
Main Authors: Mingcheng Gao, Ruiheng Wang, Lu Wang, Yang Xin, Hongliang Zhu
Format: Article
Language:English
Published: Wiley 2022-11-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1177/15501329221135060
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832559286656434176
author Mingcheng Gao
Ruiheng Wang
Lu Wang
Yang Xin
Hongliang Zhu
author_facet Mingcheng Gao
Ruiheng Wang
Lu Wang
Yang Xin
Hongliang Zhu
author_sort Mingcheng Gao
collection DOAJ
description Cross-domain identity association of network entities is a significant research challenge and a vital issue of practical value in relationship discovery and service recommendation between things in the Internet of things, cyberspace resources surveying mapping, threat tracking, and intelligent recommendation. This task usually adds additional difficulty to the research in practical applications due to the need to link across multiple platforms. The existing entity identity association methods in cross-domain networks mainly use the attribute information, generated content, and network structure information of network user entities but do not fully use the inherent strong positioning characteristics of active nodes in the network. In this article, we analyzed the structural characteristics of existing relational networks. We found that the hub node has the role of identity association positioning, and the importance of identity association reflected by different nodes is different. Moreover, we creatively designed a network representation learning method. We proposed a supervised learning identity association model combined with a representation learning method. Experiments on the public data set show that using the identity association method proposed in this article, the ranking accuracy of user entity association similarity is about 30% and 25% higher than the existing two typical methods.
format Article
id doaj-art-73e00e98025848f1bd0dac42ec1e6356
institution Kabale University
issn 1550-1477
language English
publishDate 2022-11-01
publisher Wiley
record_format Article
series International Journal of Distributed Sensor Networks
spelling doaj-art-73e00e98025848f1bd0dac42ec1e63562025-02-03T01:30:25ZengWileyInternational Journal of Distributed Sensor Networks1550-14772022-11-011810.1177/15501329221135060Cross-domain entity identity association analysis and prediction based on representation learningMingcheng Gao0Ruiheng Wang1Lu Wang2Yang Xin3Hongliang Zhu4National Engineering Research Center of Disaster Backup and Recovery, Beijing, ChinaNational Engineering Research Center of Disaster Backup and Recovery, Beijing, ChinaNational Engineering Research Center of Disaster Backup and Recovery, Beijing, ChinaNational Engineering Research Center of Disaster Backup and Recovery, Beijing, ChinaNational Engineering Research Center of Disaster Backup and Recovery, Beijing, ChinaCross-domain identity association of network entities is a significant research challenge and a vital issue of practical value in relationship discovery and service recommendation between things in the Internet of things, cyberspace resources surveying mapping, threat tracking, and intelligent recommendation. This task usually adds additional difficulty to the research in practical applications due to the need to link across multiple platforms. The existing entity identity association methods in cross-domain networks mainly use the attribute information, generated content, and network structure information of network user entities but do not fully use the inherent strong positioning characteristics of active nodes in the network. In this article, we analyzed the structural characteristics of existing relational networks. We found that the hub node has the role of identity association positioning, and the importance of identity association reflected by different nodes is different. Moreover, we creatively designed a network representation learning method. We proposed a supervised learning identity association model combined with a representation learning method. Experiments on the public data set show that using the identity association method proposed in this article, the ranking accuracy of user entity association similarity is about 30% and 25% higher than the existing two typical methods.https://doi.org/10.1177/15501329221135060
spellingShingle Mingcheng Gao
Ruiheng Wang
Lu Wang
Yang Xin
Hongliang Zhu
Cross-domain entity identity association analysis and prediction based on representation learning
International Journal of Distributed Sensor Networks
title Cross-domain entity identity association analysis and prediction based on representation learning
title_full Cross-domain entity identity association analysis and prediction based on representation learning
title_fullStr Cross-domain entity identity association analysis and prediction based on representation learning
title_full_unstemmed Cross-domain entity identity association analysis and prediction based on representation learning
title_short Cross-domain entity identity association analysis and prediction based on representation learning
title_sort cross domain entity identity association analysis and prediction based on representation learning
url https://doi.org/10.1177/15501329221135060
work_keys_str_mv AT mingchenggao crossdomainentityidentityassociationanalysisandpredictionbasedonrepresentationlearning
AT ruihengwang crossdomainentityidentityassociationanalysisandpredictionbasedonrepresentationlearning
AT luwang crossdomainentityidentityassociationanalysisandpredictionbasedonrepresentationlearning
AT yangxin crossdomainentityidentityassociationanalysisandpredictionbasedonrepresentationlearning
AT hongliangzhu crossdomainentityidentityassociationanalysisandpredictionbasedonrepresentationlearning