Neural Networks2022,Vol.15020.DOI:10.1016/j.neunet.2022.02.026

A whole brain probabilistic generative model: Toward realizing cognitive architectures for developmental robots

Taniguchi, Tadahiro Yamakawa, Hiroshi Nagai, Takayuki Doya, Kenji Sakagami, Masamichi Suzuki, Masahiro Nakamura, Tomoaki Taniguchi, Akira
Neural Networks2022,Vol.15020.DOI:10.1016/j.neunet.2022.02.026

A whole brain probabilistic generative model: Toward realizing cognitive architectures for developmental robots

Taniguchi, Tadahiro 1Yamakawa, Hiroshi 2Nagai, Takayuki 3Doya, Kenji 4Sakagami, Masamichi 5Suzuki, Masahiro 2Nakamura, Tomoaki 6Taniguchi, Akira1
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作者信息

  • 1. Ritsumeikan Univ
  • 2. Bunkyo Ku,Univ Tokyo
  • 3. Osaka Univ
  • 4. Okinawa Inst Sci & Technol,Grad Univ
  • 5. Tamagawa Univ
  • 6. Univ Electrocommun
  • 折叠

Abstract

Building a human-like integrative artificial cognitive system, that is, an artificial general intelligence (AGI), is the holy grail of the artificial intelligence (AI) field. Furthermore, a computational model that enables an artificial system to achieve cognitive development will be an excellent reference for brain and cognitive science. This paper describes an approach to develop a cognitive architecture by integrating elemental cognitive modules to enable the training of the modules as a whole. This approach is based on two ideas: (1) brain-inspired AI, learning human brain architecture to build human-level intelligence, and (2) a probabilistic generative model (PGM)-based cognitive architecture to develop a cognitive system for developmental robots by integrating PGMs. The proposed development framework is called a whole brain PGM (WB-PGM), which differs fundamentally from existing cognitive architectures in that it can learn continuously through a system based on sensory-motor information.& nbsp;In this paper, we describe the rationale for WB-PGM, the current status of PGM-based elemental cognitive modules, their relationship with the human brain, the approach to the integration of the cognitive modules, and future challenges. Our findings can serve as a reference for brain studies. As PGMs describe explicit informational relationships between variables, WB-PGM provides interpretable guidance from computational sciences to brain science. By providing such information, researchers in neuroscience can provide feedback to researchers in AI and robotics on what the current models lack with reference to the brain. Further, it can facilitate collaboration among researchers in neuro-cognitive sciences as well as AI and robotics. (C)& nbsp;2022 The Author(s). Published by Elsevier Ltd.

Key words

Cognitive architecture/Probabilistic generative model/Brain-inspired artificial intelligence/Artificial general intelligence/Developmental robotics/FREELY MOVING RATS/BASAL GANGLIA/PREFRONTAL CORTEX/SPATIAL CONCEPT/COMPUTATIONAL FRAMEWORK/LEXICAL ACQUISITION/COMPLEMENTARY ROLES/PARIETAL CORTEX/REPRESENTATION/REWARD

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出版年

2022
Neural Networks

Neural Networks

EISCI
ISSN:0893-6080
被引量7
参考文献量187
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