Hypernetwork link prediction method based on the SCL-CMM model

An effective method for the internal interaction within modeling reality systems is provided by graphs; however, they have been unable to effectively display and capture the high-order heterogeneity that widely exists between multiple entities. Hypergraphs have been recognized for their ability to s...

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Main Authors: REN Yuyuan, MA Hong, LIU Shuxin, WANG Kai
Format: Article
Language:English
Published: POSTS&TELECOM PRESS Co., LTD 2024-06-01
Series:网络与信息安全学报
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Online Access:http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2024039
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author REN Yuyuan
MA Hong
LIU Shuxin
WANG Kai
author_facet REN Yuyuan
MA Hong
LIU Shuxin
WANG Kai
author_sort REN Yuyuan
collection DOAJ
description An effective method for the internal interaction within modeling reality systems is provided by graphs; however, they have been unable to effectively display and capture the high-order heterogeneity that widely exists between multiple entities. Hypergraphs have been recognized for their ability to surpass the limitations imposed by low-order relationships. Hypernetwork link prediction, which involves predicting unknown hyperlinks based on the observed hypergraph structure, has increasingly become a hot topic in network science due to its capacity to fully describe the association patterns of complex systems. Existing methods typically design reasoning models for the entire topology, often overlooking the implicit aggregation characteristics within the network, which leads to an incomplete prediction of hyperlink categories. To address these issues, a coordination matrix minimization model based on hypergraph spectral clustering parser (SCL-CMM) was proposed. Initially, higher-order hypernetworks were mapped into heterogeneous hypergraphs with certain semantics. Subsequently, the spectral clustering parser was employed to extract the structural features of hyperlinks. The original hypergraph was reconstructed into multiple homoprotonic graphs, and the distribution of potential hyperlinks was inferred within the observation space of the subgraph, rather than the entire adjacency space, in order to restore the complete hypernetwork structure. This method federated learned the structural characteristics and aggregation attributes of hypernetworks to model the high-order nonlinear behavior of each subgraph, thereby solving the problems of single category and low precision in heterogeneous hypergraphs link prediction. Extensive comparative experiments were conducted on nine real datasets, demonstrating that this method significantly outperformed existing methods in terms of AUC score and recall rate.
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institution Kabale University
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series 网络与信息安全学报
spelling doaj-art-2efa77d93f7b4005ba3df9f2aa8e5b362025-01-15T03:17:16ZengPOSTS&TELECOM PRESS Co., LTD网络与信息安全学报2096-109X2024-06-0110526567188800Hypernetwork link prediction method based on the SCL-CMM modelREN YuyuanMA HongLIU ShuxinWANG KaiAn effective method for the internal interaction within modeling reality systems is provided by graphs; however, they have been unable to effectively display and capture the high-order heterogeneity that widely exists between multiple entities. Hypergraphs have been recognized for their ability to surpass the limitations imposed by low-order relationships. Hypernetwork link prediction, which involves predicting unknown hyperlinks based on the observed hypergraph structure, has increasingly become a hot topic in network science due to its capacity to fully describe the association patterns of complex systems. Existing methods typically design reasoning models for the entire topology, often overlooking the implicit aggregation characteristics within the network, which leads to an incomplete prediction of hyperlink categories. To address these issues, a coordination matrix minimization model based on hypergraph spectral clustering parser (SCL-CMM) was proposed. Initially, higher-order hypernetworks were mapped into heterogeneous hypergraphs with certain semantics. Subsequently, the spectral clustering parser was employed to extract the structural features of hyperlinks. The original hypergraph was reconstructed into multiple homoprotonic graphs, and the distribution of potential hyperlinks was inferred within the observation space of the subgraph, rather than the entire adjacency space, in order to restore the complete hypernetwork structure. This method federated learned the structural characteristics and aggregation attributes of hypernetworks to model the high-order nonlinear behavior of each subgraph, thereby solving the problems of single category and low precision in heterogeneous hypergraphs link prediction. Extensive comparative experiments were conducted on nine real datasets, demonstrating that this method significantly outperformed existing methods in terms of AUC score and recall rate.http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2024039link predictionhypergraphhypernetworktopologyclustering
spellingShingle REN Yuyuan
MA Hong
LIU Shuxin
WANG Kai
Hypernetwork link prediction method based on the SCL-CMM model
网络与信息安全学报
link prediction
hypergraph
hypernetwork
topology
clustering
title Hypernetwork link prediction method based on the SCL-CMM model
title_full Hypernetwork link prediction method based on the SCL-CMM model
title_fullStr Hypernetwork link prediction method based on the SCL-CMM model
title_full_unstemmed Hypernetwork link prediction method based on the SCL-CMM model
title_short Hypernetwork link prediction method based on the SCL-CMM model
title_sort hypernetwork link prediction method based on the scl cmm model
topic link prediction
hypergraph
hypernetwork
topology
clustering
url http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2024039
work_keys_str_mv AT renyuyuan hypernetworklinkpredictionmethodbasedonthesclcmmmodel
AT mahong hypernetworklinkpredictionmethodbasedonthesclcmmmodel
AT liushuxin hypernetworklinkpredictionmethodbasedonthesclcmmmodel
AT wangkai hypernetworklinkpredictionmethodbasedonthesclcmmmodel