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Optimal Nonlinear Prediction of Random Fields on Networks (2003)

Abstract
It is increasingly common to encounter time-varying random fields on networks (metabolic networks, sensor arrays, distributed computing, etc.). This paper considers the problem of optimal, nonlinear prediction of these fields, showing from an information-theoretic perspective that it is formally identical to the problem of finding minimal local sufficient statistics. I derive general properties of these statistics, show that they can be composed into global predictors, and explore their recursive estimation properties. For the special case of discrete-valued fields, I describe a convergent algorithm to identify the local predictors from empirical data, with minimal prior information about the

Publication details
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.84.7682
Source http://www.emis.de/journals/DMTCS/pdfpapers/dmAB0102.pdf
Contributors CiteSeerX
Repository CiteSeerX - Scientific Literature Digital Library and Search Engine (United States)
Keywords Networks, random fields, sufficient statistics, nonlinear prediction, information theory, recursive estimation Contents
Type text
Language English
Relation 10.1.1.14.5452, 10.1.1.122.7284, 10.1.1.22.3412, 10.1.1.118.640, 10.1.1.125.3339, 10.1.1.65.5852, 10.1.1.137.3012