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首页> 外文期刊>Journal of Artificial General Intelligence >Black-box Brain Experiments, Causal Mathematical Logic, and the Thermodynamics of Intelligence
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Black-box Brain Experiments, Causal Mathematical Logic, and the Thermodynamics of Intelligence

机译:黑匣子脑实验,因果数学逻辑和智能热力学

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Awareness of the possible existence of a yet-unknown principle of Physics that explains cognition and intelligence does exist in several projects of emulation, simulation, and replication of the human brain currently under way. Brain simulation projects define their success partly in terms of the emergence of non-explicitly programmed biophysical signals such as self-oscillation and spreading cortical waves. We propose that a recently discovered theory of Physics known as Causal Mathematical Logic (CML) that links intelligence with causality and entropy and explains intelligent behavior from first principles, is the missing link. We further propose the theory as a roadway to understanding more complex biophysical signals, and to explain the set of intelligence principles. The new theory applies to information considered as an entity by itself. The theory proposes that any device that processes information and exhibits intelligence must satisfy certain theoretical conditions irrespective of the substrate where it is being processed. The substrate can be the human brain, a part of it, a worm’s brain, a motor protein that self-locomotes in response to its environment, a computer. Here, we propose to extend the causal theory to systems in Neuroscience, because of its ability to model complex systems without heuristic approximations, and to predict emerging signals of intelligence directly from the models. The theory predicts the existence of a large number of observables (or “signals”), all of which emerge and can be directly and mathematically calculated from non-explicitly programmed detailed causal models. This approach is aiming for a universal and predictive language for Neuroscience and AGI based on causality and entropy, detailed enough to describe the finest structures and signals of the brain, yet general enough to accommodate the versatility and wholeness of intelligence. Experiments are focused on a black-box as one of the devices described above of which both the input and the output are precisely known, but not the internal implementation. The same input is separately supplied to a causal virtual machine, and the calculated output is compared with the measured output. The virtual machine, described in a previous paper, is a computer implementation of CML, fixed for all experiments and unrelated to the device in the black box. If the two outputs are equivalent, then the experiment has quantitatively succeeded and conclusions can be drawn regarding details of the internal implementation of the device. Several small black-box experiments were successfully performed and demonstrated the emergence of non-explicitly programmed cognitive function in each case
机译:当前正在进行的一些模拟,模拟和复制人脑的项目中,确实存在着一个认识物理学和未知原理的解释认知和智能的可能存在的意识。大脑模拟项目部分地根据非明确编程的生物物理信号(例如自激振荡和皮层波传播)的出现来定义其成功。我们认为,最近发现的称为因果数学逻辑(CML)的物理学理论是将智能与因果关系和熵联系在一起并从第一原理解释智能行为的必经之路。我们进一步提出该理论,作为理解更复杂的生物物理信号和解释智能原理集的道路。新理论适用于本身被视为实体的信息。该理论提出,任何处理信息并表现出智能的设备都必须满足某些理论条件,而与处理对象的衬底无关。底物可以是人的大脑,大脑的一部分,蠕虫的大脑,可以响应其环境自我运动的运动蛋白,计算机。在这里,我们建议将因果关系理论扩展到神经科学中的系统,因为它能够在没有启发式近似的情况下对复杂系统进行建模,并能够直接从模型中预测新兴的智能信号。该理论预测存在大量可观测值(或“信号”),所有可观测值都可以出现,并且可以从非明确编程的详细因果模型中直接进行数学计算。这种方法旨在基于因果关系和熵,为神经科学和AGI提供一种通用且可预测的语言,其详细程度足以描述大脑的最佳结构和信号,但又具有足够的通用性以适应智能的多功能性和完整性。实验着重于黑匣子作为上述设备之一,其输入和输出都是精确已知的,但内部实现却未知。相同的输入将分别提供给因果虚拟机,并将计算出的输出与测量出的输出进行比较。先前论文中描述的虚拟机是CML的计算机实现,已针对所有实验进行了修复,并且与黑匣子中的设备无关。如果两个输出相等,则说明该实验在数量上是成功的,并且可以得出关于该设备内部实现细节的结论。成功进行了几个小型黑匣子实验,并证明了每种情况下非明确编程的认知功能的出现

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