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SINBAD automation of scientific discovery: From factor analysis to theory synthesis
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SINBAD automation of scientific discovery: From factor analysis to theory synthesis
Olcay Kurşun1 and Oleg V. Favorov2 
| (1) |
School of Computer Science, University of Central Florida, P.O. Box 162362, Orlando, FL, 32816-2362, USA ( |
| (2) |
Department of Biomedical Engineering, University of North Carolina, CB #7575, Chapel Hill, NC, 27599-7575, USA ( |
Abstract Modern science is turning to progressively more complex and data-rich subjects, which challenges the existing methods of data
analysis and interpretation. Consequently, there is a pressing need for development of ever more powerful methods of extracting
order from complex data and for automation of all steps of the scientific process. Virtual Scientist is a set of computational procedures that automate the method of inductive inference to derive a theory from observational
data dominated by nonlinear regularities. The procedures utilize SINBAD – a novel computational method of nonlinear factor
analysis that is based on the principle of maximization of mutual information among non-overlapping sources, yielding higher-order
features of the data that reveal hidden causal factors controlling the observed phenomena. The procedures build a theory of
the studied subject by finding inferentially useful hidden factors, learning interdependencies among its variables, reconstructing
its functional organization, and describing it by a concise graph of inferential relations among its variables. The graph
is a quantitative model of the studied subject, capable of performing elaborate deductive inferences and explaining behaviors
of the observed variables by behaviors of other such variables and discovered hidden factors. The set of Virtual Scientist procedures is a powerful analytical and theory-building tool designed to be used in research of complex scientific problems
characterized by multivariate and nonlinear relations.
Bayesian networks - blind source separation - causal relations - concept acquisition - curse of dimensionality - IMAX - knowledge representation - nonlinear factor analysis - Virtual Scientist
This revised version was published online in June 2006 with corrections to the Cover Date.
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