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Cooperative information control for self-organizing maps

机译:自组织地图的协作信息控制

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This paper proposes a novel information-theoretic approach to self-organizing called cooperative information control. The new method aims to mediate between competition and cooperation among neurons by controlling information content in the neurons. Competition is realized by maximizing information content in neurons. In the process of information maximization, only a small number of neurons win the competition, while all the others are inactive. Cooperation is implemented by having neurons behave similarly to their neighbors. These two processes are unified and controlled in the framework of cooperative information control. We applied the new method to four problems: political, medical, linguistic data analysis and applied linguistic data analysis. In all the analyses, experimental results confirmed that competition and cooperation are flexibly controlled and that the method can yield a number of different neuron firing patterns to detect macro as well as micro features in input patterns.
机译:本文提出了一种新颖的信息理论方法来进行自组织,称为协作信息控制。该新方法旨在通过控制神经元中的信息内容来介导神经元之间的竞争与合作。通过最大化神经元中的信息含量来实现竞争。在信息最大化的过程中,只有少数神经元在竞争中获胜,而其他所有神经元则处于不活动状态。通过使神经元的行为类似于其邻居来实现合作。这两个过程在协作信息控制的框架中是统一的和受控的。我们将新方法应用于四个问题:政治,医学,语言数据分析和应用语言数据分析。在所有分析中,实验结果证实了竞争与合作是灵活控制的,并且该方法可以产生许多不同的神经元触发模式,以检测输入模式中的宏观和微观特征。

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