论文标题
在大三角器上的海马CA3区域的生物启发记忆的基于尖峰的计算模型
Spike-based computational models of bio-inspired memories in the hippocampal CA3 region on SpiNNaker
论文作者
论文摘要
人脑是当今现有的最强大,最有效的机器,在许多方面都超越了现代计算机的功能。目前,神经形态工程的研究线正在尝试开发模拟大脑功能以获取这些出色功能的硬件。仍在开发的领域之一是生物启发的记忆的设计,海马在其中起着重要作用。大脑的这个区域充当短期记忆,能够从大脑中不同的感觉流中存储信息关联并稍后回忆起它们。由于海马的主要子区域构成CA3,这是可能的,这是可能的。在这项工作中,我们开发了两个基于尖峰的计算模型,这些模型的功能齐全的海马生物启发记忆,用于存储和回忆在Spinnaker硬件平台上使用尖峰神经网络实现的复杂模式。这些模型呈现出不同水平的生物抽象,其第一个模型具有恒定的振荡活性,更接近生物学模型,而第二个模型具有节能调节活性,尽管它仍然受到生物的启发,但它选择了一种更具功能的方法。为每个模型进行了不同的实验,以测试其学习/召回功能。进行了介绍模型的功能和生物学合理性之间的全面比较,显示了它们的优势和缺点。这两种模型公开可用于研究人员,可以为将来的基于峰值的实施和应用程序铺平道路。
The human brain is the most powerful and efficient machine in existence today, surpassing in many ways the capabilities of modern computers. Currently, lines of research in neuromorphic engineering are trying to develop hardware that mimics the functioning of the brain to acquire these superior capabilities. One of the areas still under development is the design of bio-inspired memories, where the hippocampus plays an important role. This region of the brain acts as a short-term memory with the ability to store associations of information from different sensory streams in the brain and recall them later. This is possible thanks to the recurrent collateral network architecture that constitutes CA3, the main sub-region of the hippocampus. In this work, we developed two spike-based computational models of fully functional hippocampal bio-inspired memories for the storage and recall of complex patterns implemented with spiking neural networks on the SpiNNaker hardware platform. These models present different levels of biological abstraction, with the first model having a constant oscillatory activity closer to the biological model, and the second one having an energy-efficient regulated activity, which, although it is still bio-inspired, opts for a more functional approach. Different experiments were performed for each of the models, in order to test their learning/recalling capabilities. A comprehensive comparison between the functionality and the biological plausibility of the presented models was carried out, showing their strengths and weaknesses. The two models, which are publicly available for researchers, could pave the way for future spike-based implementations and applications.