TL;DR
This paper introduces a dynamic Markov blanket detection algorithm based on the free energy principle, enabling unsupervised identification and classification of macroscopic objects and their governing laws from microscopic dynamics.
Contribution
It develops a novel variational Bayesian method for dynamic object detection and classification in complex systems, advancing macroscopic physics discovery.
Findings
Successfully labeled components of Newton's cradle
Identified physical laws in a simulated cell
Demonstrated object tracking in dynamic systems
Abstract
The free energy principle (FEP), along with the associated constructs of Markov blankets and ontological potentials, have recently been presented as the core components of a generalized modeling method capable of mathematically describing arbitrary objects that persist in random dynamical systems; that is, a mathematical theory of ``every'' ``thing''. Here, we leverage the FEP to develop a mathematical physics approach to the identification of objects, object types, and the macroscopic, object-type-specific rules that govern their behavior. We take a generative modeling approach and use variational Bayesian expectation maximization to develop a dynamic Markov blanket detection algorithm that is capable of identifying and classifying macroscopic objects, given partial observation of microscopic dynamics. This unsupervised algorithm uses Bayesian attention to explicitly label observable…
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Taxonomy
MethodsSoftmax · Emirates Airlines Office in Dubai · Attention Is All You Need
