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Shift Aggregate Extract Networks: Deep Hierarchical Decompositions for Graph Learning


แนวคิดหลัก
Introducing an architecture based on deep hierarchical decompositions to learn effective representations of large graphs.
บทคัดย่อ

The article introduces a novel architecture, Shift Aggregate Extract Networks, for learning graph representations using deep hierarchical decompositions. It extends classic R-decompositions to enable nested part-of-part relations and deals with high variability in social network graphs. The approach outperforms current state-of-the-art methods on large social network datasets and is competitive on small benchmark datasets. The paper also discusses the importance of structured data representations in various domains and the challenges posed by scaling up to large networks.

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สถิติ
Published: 10 April 2018 Average vertices: 39.06 (PROTEINS) Average max degree: 73.62 (COLLAB) Size before compression: 337 MB (COLLAB) Size after compression: 119 MB (COLLAB)
คำพูด
"Our framework extends classic R-decompositions used in kernel methods, enabling nested part-of-part relations." "Deep hierarchical decompositions are also amenable to domain compression, reducing space and time complexity." "We show empirically that our approach outperforms current state-of-the-art graph classification methods."

ข้อมูลเชิงลึกที่สำคัญจาก

by Francesco Or... ที่ arxiv.org 03-19-2024

https://arxiv.org/pdf/1703.05537.pdf
Shift Aggregate Extract Networks

สอบถามเพิ่มเติม

How does the SAEN method compare to traditional graph kernel approaches?

SAEN (Shift Aggregate Extract Networks) introduces an architecture based on deep hierarchical decompositions to learn effective representations of large graphs. Unlike traditional graph kernel approaches that rely on counting matches between common substructures, SAEN uses neural networks and a hierarchy of parts for representation learning. This allows SAEN to deal with high degree variability in social network graphs more effectively than traditional methods. Additionally, SAEN can outperform state-of-the-art graph classification methods on large social network datasets while remaining competitive on smaller chemobiological benchmark datasets.

What are the implications of domain compression on memory usage and runtime efficiency?

Domain compression in SAEN leverages symmetries in hierarchical decompositions to reduce memory usage and improve runtime efficiency without losing information. By collapsing equivalent objects and compressing matrices, domain compression significantly reduces the size of data structures used during computation. This results in lower memory requirements and faster processing times, making it beneficial for handling large-scale datasets efficiently.

How can the concept of deep hierarchical decompositions be applied to other fields beyond graph representation learning?

The concept of deep hierarchical decompositions can be applied to various fields beyond graph representation learning where structured data representations are common. For example: In natural language processing, hierarchically decomposing sentences or documents could help capture complex linguistic structures. In image recognition, applying deep hierarchical decomposition could aid in understanding visual features at different levels of abstraction. In bioinformatics, using hierarchical decomposition could enhance the analysis of biological sequences or molecular structures by capturing nested relationships. Overall, incorporating deep hierarchical decompositions into different domains can lead to more robust models capable of capturing intricate patterns within complex data structures.
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