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Getting Wiser from Multiple Data: Probabilistic Updating according to Jeffrey and Pearl

Authors :
Jacobs, Bart
Publication Year :
2024

Abstract

In probabilistic updating one transforms a prior distribution in the light of given evidence into a posterior distribution, via what is called conditioning, updating, belief revision or inference. This is the essence of learning, as Bayesian updating. It will be illustrated via a physical model involving (adapted) water flows through pipes with different diameters. Bayesian updating makes us wiser, in the sense that the posterior distribution makes the evidence more likely than the prior, since it incorporates the evidence. Things are less clear when one wishes to learn from multiple pieces of evidence / data. It turns out that there are (at least) two forms of updating for this, associated with Jeffrey and Pearl. The difference is not always clearly recognised. This paper provides an introduction and an overview in the setting of discrete probability theory. It starts from an elementary question, involving multiple pieces of evidence, that has been sent to a small group academic specialists. Their answers show considerable differences. This is used as motivation and starting point to introduce the two forms of updating, of Jeffrey and Pearl, for multiple inputs and to elaborate their properties. In the end the account is related to so-called variational free energy (VFE) update in the cognitive theory of predictive processing. It is shown that both Jeffrey and Pearl outperform VFE updating and that VFE updating need not decrease divergence - that is correct errors - as it is supposed to do.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.12700
Document Type :
Working Paper