Di Ferdinando Andrea, Parisi Domenico, Bartolomeo Paolo
National Research Council, Italy.
J Cogn Neurosci. 2007 Jun;19(6):1033-49. doi: 10.1162/jocn.2007.19.6.1033.
Computational modeling is a useful tool for spelling out hypotheses in cognitive neuroscience and testing their predictions in artificial systems. Here we describe a series of simulations involving neural networks that learned to perform their task by self-organizing their internal connections. The networks controlled artificial agents with an orienting eye and an arm. Agents saw objects with various shapes and locations and learned to press a key appropriate to their shape. The results showed the following: (1) Despite being able to see the entire visual scene without moving their eye, agents learned to orient their eye toward a peripherally presented object. (2) Neural networks whose hidden layers were previously partitioned into units dedicated to eye orienting and units dedicated to arm movements learned the identification task faster and more accurately than did nonmodular networks. (3) Nonetheless, even nonmodular networks developed a similar functional segregation through self-organization of their hidden layer. (4) After partial disconnection of the hidden layer from the input layer, the lesioned agents continued to respond accurately to single stimuli, wherever they occurred, but on double simultaneous stimulation they oriented toward and responded only to the right-sided stimulus, thus simulating extinction/neglect. These results stress the generality of the advantages provided by orienting processes. Hard-wired modularity, reminiscent of the distinct cortical visual streams in the primate brain, provided further evolutionary advantages. Finally, disconnection is likely to be a mechanism of primary importance in the pathogenesis of neglect and extinction symptoms, consistent with recent evidence from animal studies and brain-damaged patients.
计算建模是一种有用的工具,可用于阐述认知神经科学中的假设,并在人工系统中检验其预测结果。在此,我们描述了一系列涉及神经网络的模拟实验,这些网络通过自组织内部连接来学习执行任务。这些网络控制着具有定向眼睛和手臂的人工代理。代理看到具有各种形状和位置的物体,并学习按下与物体形状相适应的按键。结果如下:(1) 尽管代理能够在不移动眼睛的情况下看到整个视觉场景,但它们学会了将眼睛朝向周边呈现的物体。(2) 其隐藏层先前被划分为专门用于眼睛定向的单元和专门用于手臂运动的单元的神经网络,比非模块化网络更快、更准确地学会了识别任务。(3) 尽管如此,即使是非模块化网络也通过隐藏层的自组织形成了类似的功能分离。(4) 在隐藏层与输入层部分断开连接后,受损的代理继续对单个刺激做出准确反应,无论刺激出现在何处,但在同时受到双重刺激时,它们只朝向右侧刺激并做出反应,从而模拟了消退/忽视现象。这些结果强调了定向过程所带来优势的普遍性。类似于灵长类大脑中不同皮质视觉流的硬连线模块化提供了进一步的进化优势。最后,断开连接可能是忽视和消退症状发病机制中的一个至关重要的机制,这与近期动物研究和脑损伤患者的证据一致。