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AuthorLingping, Kong
AuthorOjha, Varun
AuthorGao, Ruobin
AuthorSuganthan, Ponnuthurai Nagaratnam
AuthorSnášel, Václav
Available date2025-01-19T10:05:06Z
Publication Date2023
Publication NameInformation Sciences
ResourceScopus
Identifierhttp://dx.doi.org/10.1016/j.ins.2023.119108
ISSN200255
URIhttp://hdl.handle.net/10576/62227
AbstractTransformer architectures have been applied to graph-specific data such as protein structure and shopper lists, and they perform accurately on graph/node classification and prediction tasks. Researchers have proved that the attention matrix in Transformers has low-rank properties, and the self-attention plays a scoring role in the aggregation function of the Transformers. However, it can not solve the issues such as heterophily and over-smoothing. The low-rank properties and the limitations of Transformers inspire this work to propose a Global Representation (GR) based attention mechanism to alleviate the two heterophily and over-smoothing issues. First, this GRbased model integrates geometric information of the nodes of interest that conveys the structural properties of the graph. Unlike a typical Transformer where a node feature forms a Key, we propose to use GR to construct the Key, which discovers the relation between the nodes and the structural representation of the graph. Next, we present various compositions of GR emanating from nodes of interest and 𝛼-hop neighbors. Then, we explore this attention property with an extensive experimental test to assess the performance and the possible direction of improvements for future works. Additionally, we provide mathematical proof showing the efficient feature update in our proposed method. Finally, we verify and validate the performance of the model on eight benchmark datasets that show the effectiveness of the proposed method.
SponsorOpen Access funding provided by the Qatar National Library ; This work was supported by The Ministry of Education, Youth and Sports of the Czech Republic under project META MO-COP; DST/INT/Czech/P-12/2019 .
Languageen
PublisherElsevier
SubjectGlobal representation vector
Graph representation
Graph transformer
Low-rank attention
TitleLow-rank and global-representation-key-based attention for graph transformer
TypeArticle
Volume Number642
dc.accessType Full Text


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