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A neurocomputational model of developmental trajectories of gifted children under a polygenic model: When are gifted children held back by poor environments?

机译:在多基因模型下的天才儿童发育轨迹的神经计算模型:天才儿童何时因恶劣的环境而受阻?

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摘要

From the genetic side, giftedness in cognitive development is the result of contribution of many common genetic variants of small effect size, so called polygenicity (Spain et al., 2016). From the environmental side, educationalists have argued for the importance of the environment for sustaining early potential in children, showing that bright poor children are held back in their subsequent development (). Such correlational data need to be complemented by mechanistic models showing how gifted development results from the respective genetic and environmental influences. A neurocomputational model of cognitive development is presented, using artificial neural networks to simulate the development of a population of children. Variability was produced by many small differences in neurocomputational parameters each influenced by multiple artificial genes, instantiating a polygenic model, and by variations in the level of stimulation from the environment. The simulations captured several key empirical phenomena, including the non-linearity of developmental trajectories, asymmetries in the characteristics of the upper and lower tails of the population distribution, and the potential of poor environments to hold back bright children. At a computational level, ‘gifted’ networks tended to have higher capacity, higher plasticity, less noisy neural processing, a lower impact of regressive events, and a richer environment. However, individual instances presented heterogeneous contributions of these neurocomputational factors, suggesting giftedness has diverse causes.
机译:从遗传学的角度来看,认知发展中的天赋是许多影响大小较小的常见遗传变异的贡献的结果,即所谓的多基因性(Spain等,2016)。从环境方面来看,教育学家认为环境对于维持儿童早期潜力的重要性,表明聪明的贫困儿童在其后续发展中受到阻碍()。此类相关数据需要通过机械模型加以补充,该模型应说明天赋发育如何由各自的遗传和环境影响而产生。提出了一种认知发展的神经计算模型,使用人工神经网络来模拟儿童群体的发展。变异性是由神经计算参数中的许多细微差异产生的,每个差异都受到多个人工基因,实例化多基因模型以及环境刺激水平的变化的影响。模拟捕捉了几个关键的经验现象,包括发展轨迹的非线性,人口分布的上,下尾巴特征的不对称性,以及恶劣的环境可能阻碍了聪明的孩子。在计算级别上,“赠予”网络往往具有更高的容量,更高的可塑性,更少的嘈杂的神经处理,更低的回归事件影响以及更丰富的环境。但是,个别情况下,这些神经计算因素的贡献不均,提示天赋有多种原因。

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