On Bayesian mechanics: a physics of and by beliefs

The aim of this paper is to introduce a field of study that has emerged over the last decade called Bayesian mechanics. Bayesian mechanics is a probabilistic mechanics, comprising tools that enable us to model systems endowed with a particular partition (i.e., into particles), where the internal states (or the trajectories of internal states) of a particular system encode the parameters of beliefs about external states (or their trajectories). These tools allow us to write down mechanical theories for systems that look as if they are estimating posterior probability distributions over the causes of their sensory states. This provides a formal language for modelling the constraints, forces, potentials, and other quantities determining the dynamics of such systems, especially as they entail dynamics on a space of beliefs (i.e., on a statistical manifold). Here, we will review the state of the art in the literature on the free energy principle, distinguishing between three ways in which Bayesian mechanics has been applied to particular systems (i.e., path-tracking, mode-tracking, and mode-matching). We go on 1 ar X iv :2 20 5. 11 54 3v 3 [ co nd -m at .s ta tm ec h] 1 1 Ja n 20 23 to examine a duality between the free energy principle and the constrained maximum entropy principle, both of which lie at the heart of Bayesian mechanics, and discuss its

[1]  Lancelot Da Costa,et al.  Path integrals, particular kinds, and strange things , 2022, 2210.12761.

[2]  Y. Jimbo,et al.  Experimental validation of the free-energy principle with in vitro neural networks , 2022, bioRxiv.

[3]  N. Virgo,et al.  Embracing sensorimotor history: Time-synchronous and time-unrolled Markov blankets in the free-energy principle , 2022, Behavioral and Brain Sciences.

[4]  Mel Andrews Making reification concrete: A response to Bruineberg et al. , 2022, Behavioral and Brain Sciences.

[5]  Dalton A R Sakthivadivel,et al.  On the Map-Territory Fallacy Fallacy , 2022, 2208.06924.

[6]  Dalton A R Sakthivadivel,et al.  Weak Markov Blankets in High-Dimensional, Sparsely-Coupled Random Dynamical Systems , 2022, 2207.07620.

[7]  C. Buckley,et al.  Spin glass systems as collective active inference , 2022, IWAI.

[8]  Dalton A R Sakthivadivel,et al.  A Worked Example of the Bayesian Mechanics of Classical Objects , 2022, IWAI.

[9]  Lancelot Da Costa,et al.  Sparse coupling and Markov blankets: A comment on "How particular is the physics of the Free Energy Principle?" by Aguilera, Millidge, Tschantz and Buckley. , 2022, Physics of life reviews.

[10]  Dalton A R Sakthivadivel,et al.  Regarding flows under the free energy principle: A comment on "How particular is the physics of the free energy principle?" by Aguilera, Millidge, Tschantz, and Buckley. , 2022, Physics of life reviews.

[11]  Thomas Parr Inferential dynamics: Comment on: How particular is the physics of the free energy principle? by Aguilera et al. , 2022, Physics of life reviews.

[12]  K. Friston Very particular: Comment on "How particular is the physics of the free energy principle?" , 2022, Physics of Life Reviews.

[13]  Dalton A R Sakthivadivel,et al.  Towards a Geometry and Analysis for Bayesian Mechanics , 2022, 2204.11900.

[14]  M. Levin Technological Approach to Mind Everywhere: An Experimentally-Grounded Framework for Understanding Diverse Bodies and Minds , 2022, Frontiers in Systems Neuroscience.

[15]  A. Gambarotto,et al.  Teleology and the organism: Kant's controversial legacy for contemporary biology. , 2022, Studies in history and philosophy of science.

[16]  Lancelot Da Costa,et al.  Geometric Methods for Sampling, Optimisation, Inference and Adaptive Agents , 2022, ArXiv.

[17]  D. A. R. Sakthivadivel Entropy-Maximising Diffusions Satisfy a Parallel Transport Law , 2022, 2203.08119.

[18]  E. Thompson,et al.  Laying down a forking path: Tensions between enaction and the free energy principle , 2022, Philosophy and the Mind Sciences.

[19]  Lancelot Da Costa,et al.  The free energy principle made simpler but not too simple , 2022, 2201.06387.

[20]  Michael Levin,et al.  Neurons as hierarchies of quantum reference frames , 2022, Biosyst..

[21]  M. Ramstead,et al.  The Emperor's New Markov Blankets , 2021, Behavioral and Brain Sciences.

[22]  K. Friston,et al.  A free energy principle for generic quantum systems. , 2021, Progress in biophysics and molecular biology.

[23]  D. A. R. Sakthivadivel A CONSTRAINT GEOMETRY FOR INFERENCE AND INTEGRATION , 2022 .

[24]  Toby St Clere Smithe,et al.  Compositional Active Inference I: Bayesian Lenses. Statistical Games , 2021, 2109.04461.

[25]  Kai Ueltzhöffer,et al.  Stochastic Chaos and Markov Blankets , 2021, Entropy.

[26]  Michael L. Anderson,et al.  The Markov blanket trick: On the scope of the free energy principle and active inference. , 2021, Physics of life reviews.

[27]  Kai Ueltzhöffer,et al.  A Drive towards Thermodynamic Efficiency for Dissipative Structures in Chemical Reaction Networks , 2021, Entropy.

[28]  M. Colombo,et al.  Non-equilibrium thermodynamics and the free energy principle in biology , 2021, Biology & Philosophy.

[29]  Grigorios A. Pavliotis,et al.  Bayesian mechanics for stationary processes , 2021, Proceedings of the Royal Society A.

[30]  Beren Millidge,et al.  How particular is the physics of the free energy principle? , 2021, Physics of life reviews.

[31]  Mel Andrews,et al.  The math is not the territory: navigating the free energy principle , 2021, Biology & Philosophy.

[32]  R. Kanai,et al.  A Technical Critique of Some Parts of the Free Energy Principle , 2021, Entropy.

[33]  Thomas van Es,et al.  Living models or life modelled? On the use of models in the free energy principle , 2020, Adapt. Behav..

[34]  Beren Millidge,et al.  Whence the Expected Free Energy? , 2020, Neural Computation.

[35]  Karl J. Friston,et al.  Some Interesting Observations on the Free Energy Principle , 2020, Entropy.

[36]  Kai Ueltzhoffer On the thermodynamics of prediction under dissipative adaptation , 2020, 2009.04006.

[37]  Karl J. Friston,et al.  Is the Free-Energy Principle a Formal Theory of Semantics? From Variational Density Dynamics to Neural and Phenotypic Representations , 2020, Entropy.

[38]  Beren Millidge,et al.  On the Relationship Between Active Inference and Control as Inference , 2020, IWAI.

[39]  M. Levin,et al.  Scale‐Free Biology: Integrating Evolutionary and Developmental Thinking , 2020, BioEssays : news and reviews in molecular, cellular and developmental biology.

[40]  Karl J. Friston,et al.  Sentience and the Origins of Consciousness: From Cartesian Duality to Markovian Monism , 2020, Entropy.

[41]  R. Kanai,et al.  A technical critique of the free energy principle as presented in "Life as we know it" and related works , 2020, 2001.06408.

[42]  Karl J. Friston,et al.  A tale of two densities: active inference is enactive inference , 2019, Adapt. Behav..

[43]  Karl J. Friston,et al.  Markov blankets, information geometry and stochastic thermodynamics , 2019, Philosophical Transactions of the Royal Society A.

[44]  M. Levin The Computational Boundary of a “Self”: Developmental Bioelectricity Drives Multicellularity and Scale-Free Cognition , 2019, Front. Psychol..

[45]  Karl J. Friston,et al.  Variational ecology and the physics of sentient systems , 2019, Physics of life reviews.

[46]  Jules Hedges,et al.  Bayesian open games , 2019, ArXiv.

[47]  Karl J. Friston,et al.  Generalised free energy and active inference , 2018, Biological Cybernetics.

[48]  Kate Jeffery,et al.  On the Statistical Mechanics of Life: Schrödinger Revisited , 2019, Entropy.

[49]  Karl J. Friston A free energy principle for a particular physics , 2019, 1906.10184.

[50]  Sergey Levine,et al.  Reinforcement Learning and Control as Probabilistic Inference: Tutorial and Review , 2018, ArXiv.

[51]  C. Gray The Lazy Universe: An Introduction to the Principle of Least Action , 2018 .

[52]  Karl J. Friston,et al.  Answering Schrödinger's question: A free-energy formulation , 2017, Physics of life reviews.

[53]  Michael D. Kirchhoff Hierarchical Markov blankets and adaptive active inference: Comment on "Answering Schrödinger's question: A free-energy formulation" by Maxwell James Désormeau Ramstead et al. , 2018, Physics of life reviews.

[54]  Karl J. Friston,et al.  Towards a Neuronal Gauge Theory , 2016, PLoS biology.

[55]  M. Nour Surfing Uncertainty: Prediction, Action, and the Embodied Mind. , 2017, British Journal of Psychiatry.

[56]  J. Hohwy The self-evidencing brain , 2016 .

[57]  Karl J. Friston,et al.  Towards a Neuronal Gauge Theory , 2016, PLoS biology.

[58]  David M. Blei,et al.  Variational Inference: A Review for Statisticians , 2016, ArXiv.

[59]  Jeremy L. England Dissipative adaptation in driven self-assembly. , 2015, Nature nanotechnology.

[60]  Karl J. Friston,et al.  Knowing one's place: a free-energy approach to pattern regulation , 2015, Journal of The Royal Society Interface.

[61]  J. DiFrisco Élan Vital Revisited: Bergson and the Thermodynamic Paradigm , 2015 .

[62]  Robert Marsland,et al.  Statistical Physics of Adaptation , 2014, 1412.1875.

[63]  Raphael van Riel,et al.  Michael Weisberg: Simulation and Similarity. Using Models to Understand the World , 2013 .

[64]  Karl J. Friston Life as we know it , 2013, Journal of The Royal Society Interface.

[65]  K. Dill,et al.  Principles of maximum entropy and maximum caliber in statistical physics , 2013 .

[66]  Jeremy L. England,et al.  Statistical physics of self-replication. , 2012, The Journal of chemical physics.

[67]  Karl J. Friston,et al.  A Free Energy Principle for Biological Systems. , 2012, Entropy.

[68]  F. Opitz Information geometry and its applications , 2012, 2012 9th European Radar Conference.

[69]  H. B. Barlow,et al.  Possible Principles Underlying the Transformations of Sensory Messages , 2012 .

[70]  Marc Toussaint,et al.  On Stochastic Optimal Control and Reinforcement Learning by Approximate Inference , 2012, Robotics: Science and Systems.

[71]  U. Seifert Stochastic thermodynamics, fluctuation theorems and molecular machines , 2012, Reports on progress in physics. Physical Society.

[72]  Susanne Still,et al.  The thermodynamics of prediction , 2012, Physical review letters.

[73]  Karl J. Friston,et al.  Computational psychiatry , 2012, Trends in Cognitive Sciences.

[74]  M. Polettini Nonequilibrium thermodynamics as a gauge theory , 2011, 1110.0608.

[75]  Rosemary J. Harris,et al.  Large Deviation Approach to Nonequilibrium Systems , 2011, 1110.5216.

[76]  David M. Kaplan,et al.  The Explanatory Force of Dynamical and Mathematical Models in Neuroscience: A Mechanistic Perspective* , 2011, Philosophy of Science.

[77]  Karl J. Friston,et al.  Bayesian state estimation using generalized coordinates , 2011, Defense + Commercial Sensing.

[78]  Karl J. Friston,et al.  Action and behavior: a free-energy formulation , 2010, Biological Cybernetics.

[79]  Karl J. Friston The free-energy principle: a unified brain theory? , 2010, Nature Reviews Neuroscience.

[80]  M. Atiyah,et al.  Geometry and physics , 2010, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.

[81]  Karl J. Friston,et al.  Generalised Filtering , 2010 .

[82]  A. Chemero Radical Embodied Cognitive Science , 2009 .

[83]  Jie Sun,et al.  Constructing Generalized Synchronization Manifolds by Manifold Equation , 2008, SIAM J. Appl. Dyn. Syst..

[84]  Maximilian Kreuzer,et al.  Geometry, Topology and Physics I , 2009 .

[85]  Harold J. Morowitz,et al.  Energy flow and the organization of life , 2007, Complex..

[86]  Sang Joon Kim,et al.  A Mathematical Theory of Communication , 2006 .

[87]  Karl J. Friston,et al.  A theory of cortical responses , 2005, Philosophical Transactions of the Royal Society B: Biological Sciences.

[88]  P. Fishbane,et al.  Physics for scientists and engineers : with modern physics , 2005 .

[89]  C. Villani,et al.  ON THE TREND TO EQUILIBRIUM FOR THE FOKKER-PLANCK EQUATION : AN INTERPLAY BETWEEN PHYSICS AND FUNCTIONAL ANALYSIS , 2004 .

[90]  David J. C. MacKay,et al.  Information Theory, Inference, and Learning Algorithms , 2004, IEEE Transactions on Information Theory.

[91]  Hagai Attias,et al.  Planning by Probabilistic Inference , 2003, AISTATS.

[92]  V. Rubakov Classical Theory of Gauge Fields , 2002 .

[93]  G. Edelman,et al.  Degeneracy and complexity in biological systems , 2001, Proceedings of the National Academy of Sciences of the United States of America.

[94]  W. C. Kerr,et al.  Generalized phase space version of Langevin equations and associated Fokker-Planck equations , 2000 .

[95]  T. Gelder,et al.  The dynamical hypothesis in cognitive science , 1998, Behavioral and Brain Sciences.

[96]  T. Gelder,et al.  It's about time: an overview of the dynamical approach to cognition , 1996 .

[97]  E. Witten String theory dynamics in various dimensions , 1995, hep-th/9503124.

[98]  R. Peierls,et al.  The observational foundations of physics , 1994 .

[99]  John C. Baez,et al.  Gauge Fields, Knots and Gravity , 1994 .

[100]  Kai Cieliebak,et al.  Symplectic Geometry , 1992, New Spaces in Physics.

[101]  Ivan Kadar,et al.  Signal Processing, Sensor Fusion, and Target Recognition , 1992 .

[102]  Rodney W. Johnson,et al.  Axiomatic derivation of the principle of maximum entropy and the principle of minimum cross-entropy , 1980, IEEE Trans. Inf. Theory.

[103]  E. T. Jaynes,et al.  Where do we Stand on Maximum Entropy , 1979 .

[104]  I. Prigogine Time, Structure, and Fluctuations , 1978, Science.

[105]  H. Barlow Inductive Inference, Coding, Perception, and Language , 1974, Perception.

[106]  A. Alexandrova The British Journal for the Philosophy of Science , 1965, Nature.

[107]  R. Rosen THE REPRESENTATION OF BIOLOGICAL SYSTEMS FROM THE STANDPOINT OF THE THEORY OF CATEGORIES , 1958 .

[108]  Robert Rosen,et al.  A relational theory of biological systems II , 1958 .

[109]  E. Jaynes Information Theory and Statistical Mechanics , 1957 .

[110]  E. Schrödinger What is life? : the physical aspect of the living cell , 1944 .

[111]  A. B. BASSET,et al.  The Principle of Least Action , 1903, Nature.