University of London, Birkbeck College, Department of Computer Science & Information Systems.
University of London, Birkbeck College, Department of Computer Science & Information Systems, Knowledge Lab.
Artif Life. 2020 Spring;26(2):217-241. doi: 10.1162/artl_a_00316. Epub 2020 Apr 9.
Children's acquisition of the English past tense has been widely studied as a testing ground for theories of language development, mostly because it comprises a set of quasi-regular mappings. English verbs are of two types: regular verbs, which form their past tense based on a productive rule, and irregular verbs, which form their past tenses through exceptions to that rule. Although many connectionist models exist for capturing language development, few consider individual differences. In this article, we explore the use of populations of artificial neural networks (ANNs) that evolve according to behavioral genetics principles in order to create computational models capable of capturing the population variability exhibited by children in acquiring English past tense verbs. Literature in the field of behavioral genetics views variability in children's learning in terms of genetic and environmental influences. In our model, the effects of genetic influences are simulated through variations in parameters controlling computational properties of ANNs, and the effects of environmental influences are simulated via a filter applied to the training set. This filter alters the quality of information available to the artificial learning system and creates a unique subsample of the training set for each simulated individual. Our approach uses a population of twins to disentangle genetic and environmental influences on past tense performance and to capture the wide range of variability exhibited by children as they learn English past tenses. We use a novel technique to create the population of ANN twins based on the biological processes of meiosis and fertilization. This approach allows modeling of both individual differences and development (within the lifespan of an individual) in a single framework. Finally, our approach permits the application of selection on developmental performance on the quasi-regular task across generations. Setting individual differences within an evolutionary framework is an important and novel contribution of our work. We present an experimental evaluation of this model, focusing on individual differences in performance. The experiments led to several novel findings, including: divergence of population attributes during selection to favor regular verbs, irregular verbs, or both; evidence of canalization, analogous to Waddington's developmental epigenetic landscape, once selection starts targeting a particular aspect of the task domain; and the limiting effect on the power of selection in the face of stochastic selection (roulette wheel), sexual reproduction, and a variable learning environment for each individual. Most notably, the heritability of traits showed an inverse relationship to optimization. Selected traits show lower heritability as the genetic variation of the population reduces. The simulations demonstrate the viability of linking concepts such as heritability of individual differences, cognitive development, and selection over generations within a single computational framework.
儿童英语过去时态的习得一直是语言发展理论的重要研究领域,主要是因为它包含了一组准正则映射。英语动词有两种类型:规则动词,根据一个生成性规则形成过去时态;不规则动词,通过该规则的例外情况形成过去时态。尽管存在许多用于捕捉语言发展的连接主义模型,但很少有模型考虑个体差异。在本文中,我们探索了使用根据行为遗传学原理进化的人工神经网络 (ANN) 群体,以便创建能够捕捉儿童在习得英语过去时态动词时表现出的群体可变性的计算模型。行为遗传学领域的文献从遗传和环境影响的角度来看待儿童学习中的可变性。在我们的模型中,遗传影响的效果通过控制 ANN 计算特性的参数变化来模拟,而环境影响的效果则通过应用于训练集的滤波器来模拟。该滤波器改变了人工学习系统可用的信息质量,并为每个模拟个体创建了训练集的独特子样本。我们的方法使用双胞胎群体来区分过去时态表现的遗传和环境影响,并捕捉儿童在学习英语过去时态时表现出的广泛可变性。我们使用一种新的技术来基于减数分裂和受精的生物学过程创建 ANN 双胞胎群体。这种方法允许在单个框架中对个体差异和发展(在个体的生命周期内)进行建模。最后,我们的方法允许在跨代的准规则任务上对发展表现进行选择。在进化框架内设置个体差异是我们工作的一个重要和新颖的贡献。我们对该模型进行了实验评估,重点关注表现的个体差异。实验导致了一些新的发现,包括:在选择偏向规则动词、不规则动词或两者时,群体属性的发散;一旦选择开始针对任务域的特定方面,类似于 Waddington 的发育表观遗传景观的 canalization 的证据;以及面对随机选择(轮盘赌)、有性繁殖和每个个体的可变学习环境时,选择的局限性。最值得注意的是,特征的遗传性与优化呈反比。所选特征的遗传变异越低,遗传性越低。模拟表明,在单个计算框架内链接个体差异的遗传性、认知发展和跨代选择等概念是可行的。