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Generalized Simultaneous Localization and Mapping (G-SLAM) as unification framework for natural and artificial intelligences : towards reverse engineering the hippocampal/entorhinal system and principles of high-level cognition

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Abstract
Simultaneous localization and mapping (SLAM) represents a fundamental problem for autonomous embodied systems, for which the hippocampal/entorhinal system (H/E-S) has been optimized over the course of evolution. We have developed a biologically-inspired SLAM architecture based on latent variable generative modeling within the Free Energy Principle and Active Inference (FEP-AI) framework, which affords flexible navigation and planning in mobile robots. We have primarily focused on attempting to reverse engineer H/E-S "design" properties, but here we consider ways in which SLAM principles from robotics may help us better understand nervous systems and emergent minds. After reviewing LatentSLAM and notable features of this control architecture, we consider how the H/E-S may realize these functional properties not only for physical navigation, but also with respect to high-level cognition understood as generalized simultaneous localization and mapping (G-SLAM). We focus on loop-closure, graph-relaxation, and node duplication as particularly impactful architectural features, suggesting these computational phenomena may contribute to understanding cognitive insight (as proto-causal-inference), accommodation (as integration into existing schemas), and assimilation (as category formation). All these operations can similarly be describable in terms of structure/category learning on multiple levels of abstraction. However, here we adopt an ecological rationality perspective, framing H/E-S functions as orchestrating SLAM processes within both concrete and abstract hypothesis spaces. In this navigation/search process, adaptive cognitive equilibration between assimilation and accommodation involves balancing tradeoffs between exploration and exploitation; this dynamic equilibrium may be near optimally realized in FEP-AI, wherein control systems governed by expected free energy objective functions naturally balance model simplicity and accuracy. With respect to structure learning, such a balance would involve constructing models and categories that are neither too inclusive nor exclusive. We propose these (generalized) SLAM phenomena may represent some of the most impactful sources of variation in cognition both within and between individuals, suggesting that modulators of H/E-S functioning may potentially illuminate their adaptive significances as fundamental cybernetic control parameters. Finally, we discuss how understanding H/E-S contributions to G-SLAM may provide a unifying framework for high-level cognition and its potential realization in artificial intelligences.
Keywords
HUMAN HIPPOCAMPUS, PLACE CELLS, TIME CELLS, MEMORY, BRAIN, MAP, INFORMATION, FAMILIARITY, PERCEPTION, FUTURE, SLAM, free energy principle, active inference, hippocampal and, entorhinal systems, hierarchical generative models, robotics, artificial, intelligence

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MLA
Safron, Adam, et al. “Generalized Simultaneous Localization and Mapping (G-SLAM) as Unification Framework for Natural and Artificial Intelligences : Towards Reverse Engineering the Hippocampal/Entorhinal System and Principles of High-Level Cognition.” FRONTIERS IN SYSTEMS NEUROSCIENCE, edited by Rosalyn J. Moran, vol. 16, 2022, doi:10.3389/fnsys.2022.787659.
APA
Safron, A., Catal, O., & Verbelen, T. (2022). Generalized Simultaneous Localization and Mapping (G-SLAM) as unification framework for natural and artificial intelligences : towards reverse engineering the hippocampal/entorhinal system and principles of high-level cognition. FRONTIERS IN SYSTEMS NEUROSCIENCE, 16. https://doi.org/10.3389/fnsys.2022.787659
Chicago author-date
Safron, Adam, Ozan Catal, and Tim Verbelen. 2022. “Generalized Simultaneous Localization and Mapping (G-SLAM) as Unification Framework for Natural and Artificial Intelligences : Towards Reverse Engineering the Hippocampal/Entorhinal System and Principles of High-Level Cognition.” Edited by Rosalyn J. Moran. FRONTIERS IN SYSTEMS NEUROSCIENCE 16. https://doi.org/10.3389/fnsys.2022.787659.
Chicago author-date (all authors)
Safron, Adam, Ozan Catal, and Tim Verbelen. 2022. “Generalized Simultaneous Localization and Mapping (G-SLAM) as Unification Framework for Natural and Artificial Intelligences : Towards Reverse Engineering the Hippocampal/Entorhinal System and Principles of High-Level Cognition.” Ed by. Rosalyn J. Moran. FRONTIERS IN SYSTEMS NEUROSCIENCE 16. doi:10.3389/fnsys.2022.787659.
Vancouver
1.
Safron A, Catal O, Verbelen T. Generalized Simultaneous Localization and Mapping (G-SLAM) as unification framework for natural and artificial intelligences : towards reverse engineering the hippocampal/entorhinal system and principles of high-level cognition. Moran RJ, editor. FRONTIERS IN SYSTEMS NEUROSCIENCE. 2022;16.
IEEE
[1]
A. Safron, O. Catal, and T. Verbelen, “Generalized Simultaneous Localization and Mapping (G-SLAM) as unification framework for natural and artificial intelligences : towards reverse engineering the hippocampal/entorhinal system and principles of high-level cognition,” FRONTIERS IN SYSTEMS NEUROSCIENCE, vol. 16, 2022.
@article{8771009,
  abstract     = {{Simultaneous localization and mapping (SLAM) represents a fundamental problem for autonomous embodied systems, for which the hippocampal/entorhinal system (H/E-S) has been optimized over the course of evolution. We have developed a biologically-inspired SLAM architecture based on latent variable generative modeling within the Free Energy Principle and Active Inference (FEP-AI) framework, which affords flexible navigation and planning in mobile robots. We have primarily focused on attempting to reverse engineer H/E-S "design" properties, but here we consider ways in which SLAM principles from robotics may help us better understand nervous systems and emergent minds. After reviewing LatentSLAM and notable features of this control architecture, we consider how the H/E-S may realize these functional properties not only for physical navigation, but also with respect to high-level cognition understood as generalized simultaneous localization and mapping (G-SLAM). We focus on loop-closure, graph-relaxation, and node duplication as particularly impactful architectural features, suggesting these computational phenomena may contribute to understanding cognitive insight (as proto-causal-inference), accommodation (as integration into existing schemas), and assimilation (as category formation). All these operations can similarly be describable in terms of structure/category learning on multiple levels of abstraction. However, here we adopt an ecological rationality perspective, framing H/E-S functions as orchestrating SLAM processes within both concrete and abstract hypothesis spaces. In this navigation/search process, adaptive cognitive equilibration between assimilation and accommodation involves balancing tradeoffs between exploration and exploitation; this dynamic equilibrium may be near optimally realized in FEP-AI, wherein control systems governed by expected free energy objective functions naturally balance model simplicity and accuracy. With respect to structure learning, such a balance would involve constructing models and categories that are neither too inclusive nor exclusive. We propose these (generalized) SLAM phenomena may represent some of the most impactful sources of variation in cognition both within and between individuals, suggesting that modulators of H/E-S functioning may potentially illuminate their adaptive significances as fundamental cybernetic control parameters. Finally, we discuss how understanding H/E-S contributions to G-SLAM may provide a unifying framework for high-level cognition and its potential realization in artificial intelligences.}},
  articleno    = {{787659}},
  author       = {{Safron, Adam and Catal, Ozan and Verbelen, Tim}},
  editor       = {{Moran, Rosalyn J.}},
  issn         = {{1662-5137}},
  journal      = {{FRONTIERS IN SYSTEMS NEUROSCIENCE}},
  keywords     = {{HUMAN HIPPOCAMPUS,PLACE CELLS,TIME CELLS,MEMORY,BRAIN,MAP,INFORMATION,FAMILIARITY,PERCEPTION,FUTURE,SLAM,free energy principle,active inference,hippocampal and,entorhinal systems,hierarchical generative models,robotics,artificial,intelligence}},
  language     = {{eng}},
  pages        = {{28}},
  title        = {{Generalized Simultaneous Localization and Mapping (G-SLAM) as unification framework for natural and artificial intelligences : towards reverse engineering the hippocampal/entorhinal system and principles of high-level cognition}},
  url          = {{http://doi.org/10.3389/fnsys.2022.787659}},
  volume       = {{16}},
  year         = {{2022}},
}

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