Decoupling, Sparsity, Randomization, and Objective Bayesian Inference

Cybernetics and Human Knowing 15 (2):49-68. (2008)
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Abstract

Decoupling is a general principle that allows us to separate simple components in a complex system. In statistics, decoupling is often expressed as independence, no association, or zero covariance relations. These relations are sharp statistical hypotheses, that can be tested using the FBST - Full Bayesian Significance Test. Decoupling relations can also be introduced by some techniques of Design of Statistical Experiments, DSEs, like randomization. This article discusses the concepts of decoupling, randomization and sparsely connected statistical models in the epistemological framework of cognitive constructivism

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Julio Michael Stern
University of São Paulo

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