Dynamic heterogeneous network representation learning method based on Hawkes process

Existing methods for heterogeneous network representation learning mainly focus on static networks, overlooking the significant impact of temporal attributes on node representations. However, real heterogeneous information networks are very dynamic, and even minor changes in nodes and edges can affe...

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Main Authors: CHEN Lei, DENG Kun, LIU Xingyan
Format: Article
Language:zho
Published: Beijing Xintong Media Co., Ltd 2024-08-01
Series:Dianxin kexue
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Online Access:http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024195/
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author CHEN Lei
DENG Kun
LIU Xingyan
author_facet CHEN Lei
DENG Kun
LIU Xingyan
author_sort CHEN Lei
collection DOAJ
description Existing methods for heterogeneous network representation learning mainly focus on static networks, overlooking the significant impact of temporal attributes on node representations. However, real heterogeneous information networks are very dynamic, and even minor changes in nodes and edges can affect the entire structure and semantics. In this context, a dynamic heterogeneous network representation learning method based on Hawkes process was proposed. Firstly, the vector representation of nodes was obtained by utilizing the relational rotation encoding method and attention mechanism, where the attention coefficients of adjacent nodes were learned. Secondly, the optimal weighted combination of different meta-paths was learned to better captures the structural and semantic information of the network. Finally, leveraging the time decay effect, time features were introduced into node representations through the formation of neighborhood sequences, resulting in the ultimate embedding representation of nodes. Experimental results on various benchmark datasets indicate that the proposed method significantly outperforms baseline methods. In node classification tasks, Macro-F1 average is increased by 0.15% to 3.45%, and NMI value in node clustering tasks is improved by 1.08% to 3.57%.
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series Dianxin kexue
spelling doaj-art-2f4cbaf7f5724715845e7f95b552c1a12025-01-15T03:33:52ZzhoBeijing Xintong Media Co., LtdDianxin kexue1000-08012024-08-0140789369875895Dynamic heterogeneous network representation learning method based on Hawkes processCHEN LeiDENG KunLIU XingyanExisting methods for heterogeneous network representation learning mainly focus on static networks, overlooking the significant impact of temporal attributes on node representations. However, real heterogeneous information networks are very dynamic, and even minor changes in nodes and edges can affect the entire structure and semantics. In this context, a dynamic heterogeneous network representation learning method based on Hawkes process was proposed. Firstly, the vector representation of nodes was obtained by utilizing the relational rotation encoding method and attention mechanism, where the attention coefficients of adjacent nodes were learned. Secondly, the optimal weighted combination of different meta-paths was learned to better captures the structural and semantic information of the network. Finally, leveraging the time decay effect, time features were introduced into node representations through the formation of neighborhood sequences, resulting in the ultimate embedding representation of nodes. Experimental results on various benchmark datasets indicate that the proposed method significantly outperforms baseline methods. In node classification tasks, Macro-F1 average is increased by 0.15% to 3.45%, and NMI value in node clustering tasks is improved by 1.08% to 3.57%.http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024195/network representation learningdynamic heterogeneous information networkattention mechanismmeta-pathHawkes process
spellingShingle CHEN Lei
DENG Kun
LIU Xingyan
Dynamic heterogeneous network representation learning method based on Hawkes process
Dianxin kexue
network representation learning
dynamic heterogeneous information network
attention mechanism
meta-path
Hawkes process
title Dynamic heterogeneous network representation learning method based on Hawkes process
title_full Dynamic heterogeneous network representation learning method based on Hawkes process
title_fullStr Dynamic heterogeneous network representation learning method based on Hawkes process
title_full_unstemmed Dynamic heterogeneous network representation learning method based on Hawkes process
title_short Dynamic heterogeneous network representation learning method based on Hawkes process
title_sort dynamic heterogeneous network representation learning method based on hawkes process
topic network representation learning
dynamic heterogeneous information network
attention mechanism
meta-path
Hawkes process
url http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024195/
work_keys_str_mv AT chenlei dynamicheterogeneousnetworkrepresentationlearningmethodbasedonhawkesprocess
AT dengkun dynamicheterogeneousnetworkrepresentationlearningmethodbasedonhawkesprocess
AT liuxingyan dynamicheterogeneousnetworkrepresentationlearningmethodbasedonhawkesprocess