生物神经网络的约束及其在人工智能应用中的考虑

Richard Stafford
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引用次数: 4

摘要

生物有机体不会进化到完美,而是为了在其生态位中与其他生物竞争,从而生存和繁殖。本文回顾了对不完美生物体的限制,特别是对它们的神经系统和准确捕获和处理信息的能力的限制。通过了解神经元物理特性的生物学限制,可以制作更简单和更有效的人工神经网络(例如,尖峰网络将比梯度电位网络传输更少的信息,由于长距离携带电荷的限制,尖峰只发生在自然界中)。此外,了解动物的行为和生态约束可以理解生物启发解决方案的局限性,也可以理解为什么生物启发解决方案可能失败以及如何纠正这些失败。
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Constraints of Biological Neural Networks and Their Consideration in AI Applications
Biological organisms do not evolve to perfection, but to out compete others in their ecological niche, and therefore survive and reproduce. This paper reviews the constraints imposed on imperfect organisms, particularly on their neural systems and ability to capture and process information accurately. By understanding biological constraints of the physical properties of neurons, simpler and more efficient artificial neural networks can be made (e.g., spiking networks will transmit less information than graded potential networks, spikes only occur in nature due to limitations of carrying electrical charges over large distances). Furthermore, understanding the behavioural and ecological constraints on animals allows an understanding of the limitations of bio-inspired solutions, but also an understanding of why bio-inspired solutions may fail and how to correct these failures.
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