Khalid Abdulla, Andrew Wirth, et al.
ICIAfS 2014
The inner product measures how closely two feature vectors are related. It is an important primitive for many popular data mining tasks, for example, clustering, classification, correlation computation, and decision tree construction. If the entire data set is available at a single site, then computing the inner product matrix and identifying the top (in terms of magnitude) entries is trivial. However, in many real-world scenarios, data Is distributed across many locations and transmitting the data to a central server would be quite communication Intensive and not scalable. This paper presents an approximate local algorithm for Identifying top-l Inner products among pairs of feature vectors in a large asynchronous distributed environment such as a peer-to-peer (P2P) network. We develop a probabilistic algorithm for this purpose using order statistics and the Hoeffding bound. We present experimental results to show the effectiveness and scalability of the algorithm. Finally, we demonstrate an application of this technique for Interest-based community formation in a P2P environment. © 2008 IEEE.
Khalid Abdulla, Andrew Wirth, et al.
ICIAfS 2014
Zohar Feldman, Avishai Mandelbaum
WSC 2010
Apostol Natsev, Alexander Haubold, et al.
MMSP 2007
S.M. Sadjadi, S. Chen, et al.
TAPIA 2009