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Self-Organized Complexity and Coherent Infomax from the Viewpoint of Jaynes’s Probability Theory

机译:从Jaynes概率论的角度看自组织的复杂性和相干Infomax

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This paper discusses concepts of self-organized complexity and the theory of Coherent Infomax in the light of Jaynes’s probability theory. Coherent Infomax, shows, in principle, how adaptively self-organized complexity can be preserved and improved by using probabilistic inference that is context-sensitive. It argues that neural systems do this by combining local reliability with flexible, holistic, context-sensitivity. Jaynes argued that the logic of probabilistic inference shows it to be based upon Bayesian and Maximum Entropy methods or special cases of them. He presented his probability theory as the logic of science; here it is considered as the logic of life. It is concluded that the theory of Coherent Infomax specifies a general objective for probabilistic inference, and that contextual interactions in neural systems perform functions required of the scientist within Jaynes’s theory.
机译:本文根据Jaynes的概率论讨论自组织复杂性的概念和相干Infomax理论。 Coherent Infomax原则上显示了如何通过使用上下文相关的概率推理来保留和改进自适应自组织复杂性。它认为神经系统是通过将局部可靠性与灵活,整体,上下文相关性相结合来实现的。 Jaynes认为,概率推理的逻辑表明它基于贝叶斯和最大熵方法或它们的特殊情况。他将概率论作为科学逻辑提出。在这里,它被认为是生活的逻辑。结论是,相干Infomax理论指定了概率推理的一般目标,并且神经系统中的上下文交互作用执行了Jaynes理论中科学家所需的功能。

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