Efficient ensemble for graph neural networks그래프 신경망을 위한 효율적인 앙상블

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Graph Neural Networks (GNN) have been proven effective in non-euclidean data such as social networks, biology networks, and chemistry networks. There are various ways to further improve network performance. Numerous papers have found that enlarging model size is not a viable solution in improving the model’s performance due to over-smoothing. Feasible methods to improve performance were therefore considered, with the Ensemble method put forth as the most appropriate approach. We therefore decided to conduct experiments using the Ensemble method, and as an extension, applied BatchEnsemble, an Ensemble method of greater efficiency, to graph-structured datasets and neural networks to observe its effectiveness in such contexts. In this paper, BatchEnsemble is proven to achieve better performance than the Ensemble with GNNs. For credibility, we tested the performance of both Ensemble and BatchEnsemble on node classification (Cora, CiteSeer, and PubMed) and graph classification tasks (MUTAG, PROTEINS, and COLLAB) using three iconic GNNs: Graph Convolutional Network, Graph Isomorphism Network, and Graph Attention Network. The BatchEnsemble yielded better accuracy and uncertainty measures than the Ensemble method on both node and graph classification tasks; both training and inference times were faster in the BatchEnsemble setting.
Advisors
Lee, Juhoresearcher이주호researcher
Description
한국과학기술원 :김재철AI대학원,
Publisher
한국과학기술원
Issue Date
2023
Identifier
325007
Language
eng
Description

학위논문(석사) - 한국과학기술원 : 김재철AI대학원, 2023.2,[iv, 38 p. :]

Keywords

Ensemble▼aBatchEnsemble▼aGraph neural networks; 앙상블▼a배치앙상블▼a그래프 신경망

URI
http://hdl.handle.net/10203/308201
Link
http://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=1032314&flag=dissertation
Appears in Collection
AI-Theses_Master(석사논문)
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