An Artificial Neural Network Architecture Based on Context Transformations in Cortical Minicolumns
Cortical minicolumns are considered a model of cortical organization. Their function is still a source of research and not reflected properly in modern architecture of nets in algorithms of Artificial Intelligence. We assume its function and describe it in this article. Furthermore, we show how this...
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Zusammenfassung: | Cortical minicolumns are considered a model of cortical organization. Their
function is still a source of research and not reflected properly in modern
architecture of nets in algorithms of Artificial Intelligence. We assume its
function and describe it in this article. Furthermore, we show how this
proposal allows to construct a new architecture, that is not based on
convolutional neural networks, test it on MNIST data and receive close to
Convolutional Neural Network accuracy. We also show that the proposed
architecture possesses an ability to train on a small quantity of samples. To
achieve these results, we enable the minicolumns to remember context
transformations. |
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DOI: | 10.48550/arxiv.1712.05954 |