DocumentCode :
14369
Title :
Prediction of Partially Observed Dynamical Processes Over Networks via Dictionary Learning
Author :
Forero, Pedro A. ; Rajawat, Ketan ; Giannakis, Georgios
Author_Institution :
Maritime Syst. Div., SPAWAR Syst. Center Pacific, San Diego, CA, USA
Volume :
62
Issue :
13
fYear :
2014
fDate :
1-Jul-14
Firstpage :
3305
Lastpage :
3320
Abstract :
Prediction of dynamical processes evolving over network graphs is a basic task encountered in various areas of science and engineering. The prediction challenge is exacerbated when only partial network observations are available, that is when only measurements from a subset of nodes are available. To tackle this challenge, the present work introduces a joint topology- and data-driven approach for network-wide prediction able to handle partially observed network data. First, the known network structure and historical data are leveraged to design a dictionary for representing the network process. The novel approach draws from semi-supervised learning to enable learning the dictionary with only partial network observations. Once the dictionary is learned, network-wide prediction becomes possible via a regularized least-squares estimate which exploits the parsimony encapsulated in the design of the dictionary. Second, an online network-wide prediction algorithm is developed to jointly extrapolate the process over the network and update the dictionary accordingly. This algorithm is able to handle large training datasets at a fixed computational cost. More important, the online algorithm takes into account the temporal correlation of the underlying process, and thereby improves prediction accuracy. The performance of the novel algorithms is illustrated for prediction of real Internet traffic. There, the proposed approaches are shown to outperform competitive alternatives.
Keywords :
Internet; dictionaries; extrapolation; learning (artificial intelligence); least squares approximations; telecommunication traffic; Internet traffic; dictionary learning; link load prediction; network graphs; online learning; online network-wide prediction algorithm; partial network observations; partially observed dynamical processes; prediction accuracy; regularized least-squares estimate; semisupervised learning; temporal correlation; Correlation; Dictionaries; Network topology; Prediction algorithms; Signal processing algorithms; Training data; Vectors; Dictionary learning; estimation over networks; online learning; semi-supervised learning;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2014.2325798
Filename :
6819085
Link To Document :
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