On Bayesian mechanics: a physics of and by beliefs
暂无分享,去创建一个
Lancelot Da Costa | Magnus T. Koudahl | Beren Millidge | K. Friston | M. Ramstead | Brennan Klein | Conor Heins | D. A. R. Sakthivadivel
[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.