Британский журнал исследований Открытый доступ

Абстрактный

Using Artificial Neural Networks to Test Systems Neuroscience Techniques

Maria Riasat

Neuroscientists explain part of the way recorded neural activity is generated by how neural circuits perform computational computations. In accordance with the fact that the development of the tools field is fully structured, we have empirical explanations to participate in influencing the immediate identification of phenomena. I now discuss how those tools can be absolutely examined and the way Artificial Neural Networks (ANNs) can test for them. The usage of ANNs as fashions for everything from memory to motor management arose from a few compromises between artificial and organic neural networks and the capacity of that network to learn how to solve hard excessive-dimensional duties. This ability, mixed with the potential to absolutely look at and manage those guidelines, makes it properly acceptable for the upkeep of structures and cognitive neuroscience tools. I offer a roadmap to fully implement these rules and a list of parts that work to test ANNs. The use of ANNs to study how these rules have a fruitful understanding of neural systems and the potential for rapid advances in the understanding of the brain is what should be known here.

Отказ от ответственности: Этот реферат был переведен с помощью инструментов искусственного интеллекта и еще не прошел проверку или верификацию