Calabretta Raffaele
Institute of Cognitive Sciences and Technologies, Italian National Research Council, Rome 00185, Italy.
Philos Trans R Soc Lond B Biol Sci. 2007 Mar 29;362(1479):403-10. doi: 10.1098/rstb.2006.1967.
The aim of this paper is to propose an interdisciplinary evolutionary connectionism approach for the study of the evolution of modularity. It is argued that neural networks as a model of the nervous system and genetic algorithms as simulative models of biological evolution would allow us to formulate a clear and operative definition of module and to simulate the different evolutionary scenarios proposed for the origin of modularity. I will present a recent model in which the evolution of primate cortical visual streams is possible starting from non-modular neural networks. Simulation results not only confirm the existence of the phenomenon of neural interference in non-modular network architectures but also, for the first time, reveal the existence of another kind of interference at the genetic level, i.e. genetic interference, a new population genetic mechanism that is independent from the network architecture. Our simulations clearly show that genetic interference reduces the evolvability of visual neural networks and sexual reproduction can at least partially solve the problem of genetic interference. Finally, it is shown that entrusting the task of finding the neural network architecture to evolution and that of finding the network connection weights to learning is a way to completely avoid the problem of genetic interference. On the basis of this evidence, it is possible to formulate a new hypothesis on the origin of structural modularity, and thus to overcome the traditional dichotomy between innatist and empiricist theories of mind.
本文旨在提出一种跨学科的进化联结主义方法来研究模块性的进化。有人认为,作为神经系统模型的神经网络和作为生物进化模拟模型的遗传算法,将使我们能够明确并操作化模块的定义,并模拟为模块性起源所提出的不同进化场景。我将展示一个最近的模型,在该模型中,从非模块化神经网络开始,灵长类动物皮质视觉流的进化是可能的。模拟结果不仅证实了非模块化网络架构中神经干扰现象的存在,而且首次揭示了在基因层面另一种干扰的存在,即基因干扰,这是一种独立于网络架构的新的群体遗传机制。我们的模拟清楚地表明,基因干扰会降低视觉神经网络的进化能力,而有性生殖至少可以部分解决基因干扰问题。最后,研究表明,将寻找神经网络架构的任务交给进化,将寻找网络连接权重的任务交给学习,是完全避免基因干扰问题的一种方法。基于这些证据,可以就结构模块性的起源提出一个新的假设,从而克服先天论和经验论心智理论之间的传统二分法。