Global Network Alignment Method Using Node Similarity Based on Network Characteristics
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概要
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Various methods to compare given biological networks have been proposed to date. For an instance, MI-GRAAL[8] is one of such popular methods. However, the method uses only local structural information to calculate a similarity among nodes. Owing to this limitation, the resulted alignment may not reflect the global features of the given networks. In social network analysis certain measurements, so-called network characteristics are used to capture some features of nodes in graphs. And some of these reflect global features of nodes in networks. In this paper, we proposed a network alignment method using a node similarity based on network characteristics so that resulted alignment would reflect the global structural features more than the traditional method. We compared our proposed method with traditional network alignment method, MI-GRAAL, to demonstrate the effectiveness of our proposal. The experiment was carried out through protein-protein interactions (PPI) networks of yeast and human. The results showed that proposed method led to better alignment in view of topological quality than MI-GRAAL.
著者
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Nakamura Morikazu
Faculty Of Engineering University Of The Ryukyus
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Afuso Hitoshi
Graduate School Of The University Of The Ryukyus Information Engineering
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Okazaki Takeo
Faculty Of Engineering University Of The Ryukyus
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Nakamura Morikazu
Faculty of Information Engineering, University of the Ryukyus
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Afuso Hitoshi
Graduate School of Engineering and Science, University of the Ryukyus
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Okazaki Takeo
Faculty of Information Engineering, University of the Ryukyus
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- Global Network Alignment Method Using Node Similarity Based on Network Characteristics
- Global Network Alignment Method Using Node Similarity Based on Network Characteristics