Title :
Latent Interest-Group Discovery and Management by Peer-to-Peer Online Social Networks
Author :
Jianping He ; Miller, David J. ; Kesidis, George
Author_Institution :
CS&E & EE Depts, Pennsylvania State Univ., University Park, PA, USA
Abstract :
We address management of latent, emerging interest groups (IGs), spanning both unsupervised, distributed IG discovery and any cast-query forwarding, in dynamic peer-to-peer(P2P) on-line social networks. The P2P network has at least one layer of super-peers (Diaspora pods) that support a group of ordinary peers/clients. There are a number of challenges here, including: i) semantic processing at scale to disambiguate word meanings in queries, ii) unsupervised estimation of the number of active IGs, iii) detection of IG churn and emergent IGs, iv)design of optimal query forwarding to maximize query resolution and minimize the required number of hops, while achieving practical local cache searching and network communications. In this preliminary study, we assume a common, fixed keyword lexicon for query formation and latent IG characterization. We propose unsupervised, dynamic, on-line clustering that mines the super-peers´ query caches in a distributed fashion. Customized Bayesian Information Criterion based model-order selection is employed, independently by each super-peer, to estimate the set of active IGs and to help achieve efficient query forwarding. The proposed method is numerically evaluated against both exhaustive cache search and a random walk strategy.
Keywords :
Bayes methods; cache storage; pattern clustering; peer-to-peer computing; query formulation; social networking (online); Diaspora pods; IG churn detection; active IG; any cast-query forwarding; customized Bayesian information criterion based model-order selection; dynamic P2P online social networks; fixed keyword lexicon; group management; interest groups; latent IG characterization; latent interest-group discovery; local cache searching; network communications; optimal query forwarding; peer-to-peer online social networks; peers/clients; query formation; query resolution; semantic processing; super-peers query caches; unsupervised distributed IG discovery; unsupervised dynamic online clustering; unsupervised estimation; word meanings; Clustering algorithms; Dictionaries; Measurement; Peer-to-peer computing; Privacy; Social network services; Vectors; Clustering; Latent Class Discovery; Online Social Networking; Peer-to-Peer;
Conference_Titel :
Social Computing (SocialCom), 2013 International Conference on
Conference_Location :
Alexandria, VA
DOI :
10.1109/SocialCom.2013.31