Similarity-Based Content Retrieval in Self-Organizing Peer-to-Peer Networks

Takuya Yamaguchi

Graduate School of Science and Engineering, University in Saitama, Japan.

Andrii Zhygmanovskyi

Graduate School of Science and Engineering, University in Saitama, Japan.

Noriko Matsumoto

Graduate School of Science and Engineering, University in Saitama, Japan.

Norihiko Yoshida

Graduate School of Science and Engineering, University in Saitama, Japan.

*Author to whom correspondence should be addressed.


Abstract

This paper presents dynamic reorganization of peer-to-peer networks to make query routing and content retrieval efficient. The reorganization is conducted which use content similarity information. Unlike other related studies using semantic proximity, the method proposed in this paper relies on folksonomy, which gained wide use in figuring out content similarity in various social networks. The proposed method is designed primarily for flooding-based unstructured P2P networks, however it also can be applied to structured P2P networks such as Tapestry. Simulation-based experiments confirm the effectiveness of the proposed method.

Keywords: P2P, network reorganization, content similarity, folksonomy.


How to Cite

Yamaguchi, Takuya, Andrii Zhygmanovskyi, Noriko Matsumoto, and Norihiko Yoshida. 2014. “Similarity-Based Content Retrieval in Self-Organizing Peer-to-Peer Networks”. Journal of Advances in Mathematics and Computer Science 5 (4):456-70. https://doi.org/10.9734/BJMCS/2015/14177.

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