进化人工通用智能的大脑启发框架

Mohammad Nadji-Tehrani, A. Eslami
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引用次数: 2

摘要

从医疗领域到农业,从能源到交通运输,每个行业都在经历一场人工智能(AI)的革命;然而,人工智能仍处于起步阶段。受人类大脑进化的启发,这篇论文展示了一种新的方法和框架,通过利用与生物大脑生长相同的过程,即“神经胚胎发生”,来合成具有认知能力的人工大脑。这个框架分享了生物大脑的一些关键行为方面,如尖峰神经元、神经可塑性、神经元修剪、神经元之间的兴奋性和抑制性相互作用,这些共同使它能够学习和记忆。所提出的设计的亮点之一是它有可能使用遗传算法根据系统性能逐步改进自身。本文最后的概念验证演示了如何使用所提出的框架简化人类视觉皮层的实现,从而能够进行字符识别。我们的框架是开源的,代码在www.feagi.org上与科学界共享。
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A Brain-Inspired Framework for Evolutionary Artificial General Intelligence
From the medical field to agriculture, from energy to transportation, every industry is going through a revolution by embracing artificial intelligence (AI); nevertheless, AI is still in its infancy. Inspired by the evolution of the human brain, this paper demonstrates a novel method and framework to synthesize an artificial brain with cognitive abilities by taking advantage of the same process responsible for the growth of the biological brain called "neuroembryogenesis." This framework shares some of the key behavioral aspects of the biological brain such as spiking neurons, neuroplasticity, neuronal pruning, and excitatory and inhibitory interactions between neurons, together making it capable of learning and memorizing. One of the highlights of the proposed design is its potential to incrementally improve itself over generations based on system performance, using genetic algorithms. A proof of concept at the end of the paper demonstrates how a simplified implementation of the human visual cortex using the proposed framework is capable of character recognition. Our framework is open-source and the code is shared with the scientific community at www.feagi.org.
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