13 research outputs found
Formation of Precessing Jets by Tilted Black-hole Discs in 3D General Relativistic MHD Simulations
Gas falling into a black hole (BH) from large distances is unaware of BH spin
direction, and misalignment between the accretion disc and BH spin is expected
to be common. However, the physics of tilted discs (e.g., angular momentum
transport and jet formation) is poorly understood. Using our new
GPU-accelerated code H-AMR, we performed 3D general relativistic
magnetohydrodynamic simulations of tilted thick accretion discs around rapidly
spinning BHs, at the highest resolution to date. We explored the limit where
disc thermal pressure dominates magnetic pressure, and showed for the first
time that, for different magnetic field strengths on the BH, these flows launch
magnetized relativistic jets propagating along the rotation axis of the tilted
disc (rather than of the BH). If strong large-scale magnetic flux reaches the
BH, it bends the inner few gravitational radii of the disc and jets into
partial alignment with the BH spin. On longer time scales, the simulated
disc-jet system as a whole undergoes Lense-Thirring precession and approaches
alignment, demonstrating for the first time that jets can be used as probes of
disc precession. When the disc turbulence is well-resolved, our isolated discs
spread out, causing both the alignment and precession to slow down.Comment: MNRAS Letters, accepted. Animations available at
https://www.youtube.com/playlist?list=PL39mDr1uU6a5RYZdXLAjKE1C_GAJkQJN
A Multi-scale View of the Emergent Complexity of Life: A Free-energy Proposal
We review some of the main implications of the free-energy principle (FEP) for the study of the self-organization of living systems ā and how the FEP can help us to understand (and model) biotic self-organization across the many temporal and spatial scales over which life exists. In order to maintain its integrity as a bounded system, any biological system - from single cells to complex organisms and societies - has to limit the disorder or dispersion (i.e., the long-run entropy) of its constituent states. We review how this can be achieved by living systems that minimize their variational free energy. Variational free energy is an information theoretic construct, originally introduced into theoretical neuroscience and biology to explain perception, action, and learning. It has since been extended to explain the evolution, development, form, and function of entire organisms, providing a principled model of biotic self-organization and autopoiesis. It has provided insights into biological systems across spatiotemporal scales, ranging from microscales (e.g., sub- and multicellular dynamics), to intermediate scales (e.g., groups of interacting animals and culture), through to macroscale phenomena (the evolution of entire species). A crucial corollary of the FEP is that an organism just is (i.e., embodies or entails) an implicit model of its environment. As such, organisms come to embody causal relationships of their ecological niche, which, in turn, is influenced by their resulting behaviors. Crucially, free-energy minimization can be shown to be equivalent to the maximization of Bayesian model evidence. This allows us to cast natural selection in terms of Bayesian model selection, providing a robust theoretical account of how organisms come to match or accommodate the spatiotemporal complexity of their surrounding niche. In line with the theme of this volume; namely, biological complexity and self-organization, this chapter will examine a variational approach to self-organization across multiple dynamical scales
Small steps for mankind: Modeling the emergence of cumulative culture from joint active inference communication
Although the increase in the use of dynamical modeling in the literature on cultural evolution makes current models more mathematically sophisticated, these models have yet to be tested or validated. This paper provides a testable deep active inference formulation of social behavior and accompanying simulations of cumulative culture in two steps: First, we cast cultural transmission as a bi-directional process of communication that induces a generalized synchrony (operationalized as a particular convergence) between the belief states of interlocutors. Second, we cast social or cultural exchange as a process of active inference by equipping agents with the choice of who to engage in communication with. This induces trade-offs between confirmation of current beliefs and exploration of the social environment. We find that cumulative culture emerges from belief updating (i.e., active inference and learning) in the form of a joint minimization of uncertainty. The emergent cultural equilibria are characterized by a segregation into groups, whose belief systems are actively sustained by selective, uncertainty minimizing, dyadic exchanges. The nature of these equilibria depends sensitively on the precision afforded by various probabilistic mappings in each individual's generative model of their encultured niche
Sophisticated Inference
Active inference offers a first principle account of sentient behaviour, from
which special and important cases can be derived, e.g., reinforcement learning,
active learning, Bayes optimal inference, Bayes optimal design, etc. Active
inference resolves the exploitation-exploration dilemma in relation to prior
preferences, by placing information gain on the same footing as reward or
value. In brief, active inference replaces value functions with functionals of
(Bayesian) beliefs, in the form of an expected (variational) free energy. In
this paper, we consider a sophisticated kind of active inference, using a
recursive form of expected free energy. Sophistication describes the degree to
which an agent has beliefs about beliefs. We consider agents with beliefs about
the counterfactual consequences of action for states of affairs and beliefs
about those latent states. In other words, we move from simply considering
beliefs about 'what would happen if I did that' to 'what would I believe about
what would happen if I did that'. The recursive form of the free energy
functional effectively implements a deep tree search over actions and outcomes
in the future. Crucially, this search is over sequences of belief states, as
opposed to states per se. We illustrate the competence of this scheme, using
numerical simulations of deep decision problems
From generative models to generative passages: a computational approach to (Neuro) phenomenology
This paper presents a version of neurophenomenology based on generative modelling techniques developed in computational neuroscience and biology. Our approach can be described as computational phenomenology because it applies methods originally developed in computational modelling to provide a formal model of the descriptions of lived experience in the phenomenological tradition of philosophy (e.g., the work of Edmund Husserl, Maurice Merleau-Ponty, etc.). The first section presents a brief review of the overall project to naturalize phenomenology. The second section presents and evaluates philosophical objections to that project and situates our version of computational phenomenology with respect to these projects. The third section reviews the generative modelling framework. The final section presents our approach in detail. We conclude by discussing how our approach differs from previous attempts to use generative modelling to help understand consciousness. In summary, we describe a version of computational phenomenology which uses generative modelling to construct a computational model of the inferential or interpretive processes that best explain this or that kind of lived experience
Socio-emotional concern dynamics in a model of real-time dyadic interaction: parent-child play in autism
We used a validated agent-based modelāSocio-Emotional CONcern DynamicS (SECONDS)āto model real-time playful interaction between a child diagnosed with Autism Spectrum Disorders (ASD) and its parent. SECONDS provides a real-time (second-by-second) virtual environment that could be used for clinical trials and testingprocess-orientedexplanationsofASDsymptomatology.Weconductednumerical experiments with SECONDS (1) for internal model validation comparing two parental behavioral strategies for stimulating social development in ASD (play-centered vs. initiative-centered) and (2) for empirical case-based model validation. We compared 2,000 simulated play sessions of two particular dyads with (second-by-second) time-series observations within 29 play sessions of a real parent-child dyad with ASD on six variables related to maintaining and initiating play. Overall, both simuladistributions. Given the idiosyncratic behaviors expected in ASD, the observed correspondence is non-trivial. Our results demonstrate the applicability of SECONDS to parent-child dyads in ASD. In the future, SECONDS could help design interventions for parental care in ASDted dyads provided a better ļ¬t to the observed dyad than reference nul