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Toward a Unified Sub-symbolic Computational Theory of Cognition

机译:建立统一的亚符号认知计算理论

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摘要

This paper proposes how various disciplinary theories of cognition may be combined into a unifying, sub-symbolic, computational theory of cognition. The following theories are considered for integration: psychological theories, including the theory of event coding, event segmentation theory, the theory of anticipatory behavioral control, and concept development; artificial intelligence and machine learning theories, including reinforcement learning and generative artificial neural networks; and theories from theoretical and computational neuroscience, including predictive coding and free energy-based inference. In the light of such a potential unification, it is discussed how abstract cognitive, conceptualized knowledge and understanding may be learned from actively gathered sensorimotor experiences. The unification rests on the free energy-based inference principle, which essentially implies that the brain builds a predictive, generative model of its environment. Neural activity-oriented inference causes the continuous adaptation of the currently active predictive encodings. Neural structure-oriented inference causes the longer term adaptation of the developing generative model as a whole. Finally, active inference strives for maintaining internal homeostasis, causing goal-directed motor behavior. To learn abstract, hierarchical encodings, however, it is proposed that free energy-based inference needs to be enhanced with structural priors, which bias cognitive development toward the formation of particular, behaviorally suitable encoding structures. As a result, it is hypothesized how abstract concepts can develop from, and thus how they are structured by and grounded in, sensorimotor experiences. Moreover, it is sketched-out how symbol-like thought can be generated by a temporarily active set of predictive encodings, which constitute a distributed neural attractor in the form of an interactive free-energy minimum. The activated, interactive network attractor essentially characterizes the semantics of a concept or a concept composition, such as an actual or imagined situation in our environment. Temporal successions of attractors then encode unfolding semantics, which may be generated by a behavioral or mental interaction with an actual or imagined situation in our environment. Implications, further predictions, possible verification, and falsifications, as well as potential enhancements into a fully spelled-out unified theory of cognition are discussed at the end of the paper.
机译:本文提出了如何将各种认知学科理论组合成一个统一的,亚符号的认知计算理论。考虑以下理论进行整合:心理理论,包括事件编码理论,事件分割理论,预期行为控制理论和概念发展;人工智能和机器学习理论,包括强化学习和生成人工神经网络;以及来自理论和计算神经科学的理论,包括预测编码和基于自由能的推理。鉴于这种潜在的统一,讨论了如何从积极收集的感觉运动经验中学习抽象的认知,概念化知识和理解。统一基于基于自由能的推理原理,该原理本质上暗示着大脑建立了其环境的预测性生成模型。面向神经活动的推理导致当前活动的预测编码的连续适应。面向神经结构的推理会导致整个生成模型的长期适应。最后,主动推理力图保持内部动态平衡,从而引起目标定向的运动行为。但是,为了学习抽象的分层编码,建议使用结构先验来增强基于自由能的推理,这会使认知发展朝着形成特定的,行为上合适的编码结构的方向发展。结果,假设了抽象概念是如何从感觉运动经验中发展出来的,以及因此如何以感觉运动经验为基础而构建的。此外,还勾画出如何通过一组临时活动的预测编码来产生类似符号的思想,该预测编码以交互自由能最小值的形式构成了分布式神经吸引子。激活的交互式网络吸引子从本质上描述了概念或概念组成的语义,例如我们环境中的实际或想象中的情况。然后,吸引子的时间顺序会对展开的语义进行编码,这可能是由于行为或心理与环境中实际或想象的交互作用而产生的。本文的结尾讨论了含义,进一步的预测,可能的验证和伪造,以及对完全清楚阐述的统一认知理论的潜在增强。

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