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首页> 外文期刊>Journal of Artificial General Intelligence >Causal Mathematical Logic as a guiding framework for the prediction of “Intelligence Signals” in brain simulations
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Causal Mathematical Logic as a guiding framework for the prediction of “Intelligence Signals” in brain simulations

机译:因果数学逻辑作为大脑模拟中“智能信号”预测的指导框架

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A recent theory of physical information based on the fundamental principles of causality and thermodynamics has proposed that a large number of observable life and intelligence signals can be described in terms of the Causal Mathematical Logic (CML), which is proposed to encode the natural principles of intelligence across any physical domain and substrate. We attempt to expound the current definition of CML, the “Action functional” as a theory in terms of its ability to possess a superior explanatory power for the current neuroscientific data we use to measure the mammalian brains “intelligence” processes at its most general biophysical level. Brain simulation projects define their success partly in terms of the emergence of “non-explicitly programmed” complex biophysical signals such as self-oscillation and spreading cortical waves. Here we propose to extend the causal theory to predict and guide the understanding of these more complex emergent “intelligence Signals”. To achieve this we review whether causal logic is consistent with, can explain and predict the function of complete perceptual processes associated with intelligence. Primarily those are defined as the range of Event Related Potentials (ERP) which include their primary subcomponents; Event Related Desynchronization (ERD) and Event Related Synchronization (ERS). This approach is aiming for a universal and predictive logic for neurosimulation and AGi. The result of this investigation has produced a general “Information Engine” model from translation of the ERD and ERS. The CML algorithm run in terms of action cost predicts ERP signal contents and is consistent with the fundamental laws of thermodynamics. A working substrate independent natural information logic would be a major asset. An information theory consistent with fundamental physics can be an AGi. It can also operate within genetic information space and provides a roadmap to understand the live biophysical operation of the phenotype
机译:基于因果关系和热力学基本原理的最新物理信息理论提出,可以根据因果逻辑(CML)来描述大量可观察到的生命和智力信号,该因果关系逻辑被提出来编码因果关系的自然原理。跨越任何物理领域和底物的智能。我们试图解释CML的当前定义,即“动作功能”作为一种理论,因为它具有对当前的神经科学数据具有优越的解释力的能力,这些数据用于测量哺乳动物大脑在其最一般的生物物理过程中的“智能”过程水平。大脑模拟项目的成功部分取决于“非明确编程的”复杂生物物理信号的出现,例如自激振荡和皮层波的传播。在这里,我们建议扩展因果关系理论,以预测和指导对这些更复杂的紧急“智能信号”的理解。为了实现这一目标,我们回顾了因果逻辑是否与逻辑相符,可以解释和预测与智力相关的完整知觉过程的功能。主要将其定义为事件相关电位(ERP)的范围,其中包括其主要子组件;事件相关的不同步(ERD)和事件相关的同步(ERS)。这种方法旨在为神经仿真和AGi提供通用的预测逻辑。这项调查的结果通过ERD和ERS的翻译生成了一个通用的“信息引擎”模型。根据动作成本运行的CML算法可以预测ERP信号的内容,并且与热力学的基本定律相一致。独立于工作底物的自然信息逻辑将是一项主要资产。符合基本物理学的信息论可以是AGi。它也可以在遗传信息空间内运作,并提供路线图以了解表型的实时生物物理运行

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