Learning processes based on incomplete identification and information generation1
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The learning process consists of observation and inference. On the one hand, it is understood that the inference process involves internal choice. On the other hand, the internal process is not essentially expressed; however, the internal choice is explicitly written down by sorting of variants in many brain models. Finding out what the learning process is is nothing but to answer whether the origin of variants in variation and selection is a well-defined question or not. It is not whether we can find a sorting process in the brain or not, but whether the internal choice can be replaced by sorting of variants in programmable systems. We estimate here this type of question, and formalize internal choice in another way. In our model, the learning process is communication among elements of a system, in which an element learns the behavior of other elements through observation. However, observation is incomplete resulting from finite velocity of observation propagation. Incomplete identification (observation) is here formalized not by “variation and selection” but by decision change a posteriori, introducing backward-time. In our model, we can demonstrate that misreading a posteriori generates information that possibly generates novelty.
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论文评审过程:Available online 21 March 2002.
论文官网地址:https://doi.org/10.1016/0096-3003(93)90023-8