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Maximal Algorithmic Caliber and Algorithmic Causal Network Inference: General Principles of Real-World General Intelligence?

机译:最大算法口径和算法因果网络推论:现实世界一般情报的一般原则?

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Ideas and formalisms from far-from-equilibrium thermodynamics are ported to the context of stochastic computational processes, via following and extending Tadaki’s algorithmic thermodynamics. A Principle of Maximum Algorithmic Caliber is proposed, providing guidance as to what computational processes one should hypothesize if one is provided constraints to work within. It is conjectured that, under suitable assumptions, computational processes obeying algorithmic Markov conditions will maximize algorithmic caliber. It is proposed that in accordance with this, real-world cognitive systems may operate in substantial part by modeling their environments and choosing their actions to be (approximate and compactly represented) algorithmic Markov networks. These ideas are suggested as potential early steps toward a general theory of the operation of pragmatic generally intelligent systems.
机译:通过偏离均衡热力学的思想和形式主义被移植到随机计算过程的背景下,通过跟随和扩展Tadaki的算法热力学。提出了最大算法口径的原理,为计算过程提供指导,如果一个人提供限制以在内部工作。据猜测,在合适的假设下,遵循算法马尔可夫条件的计算过程将最大化算法口径。提出,根据此,现实世界认知系统可以通过建模他们的环境并选择其要成为(近似和紧凑地代表)算法马尔可夫网络来实质上的部分。这些想法被建议作为朝向务实的智能系统操作的一般理论的潜在早期步骤。

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