Trautwein Jutta, Schroeder Sascha
Max Planck Research Group (MPRG) Reading Education and Development, Max Planck Institute for Human Development, Berlin, Germany.
Front Psychol. 2018 Nov 20;9:2252. doi: 10.3389/fpsyg.2018.02252. eCollection 2018.
In this study, we examine the development of orthographic networks in the mental lexicon using graph theory. According to this view, words are represented by nodes in a network and connected as a function of their orthographic similarity. With a sampling approach based on a language corpus for German school children, we were able to simulate lexical development for children from Grade 1-8. By sampling different lexicon sizes from the corpus, we were able to analyze the content of the orthographic lexicon at different time points and examined network characteristics using graph theory. Results show that, similar to semantic and phonological networks, orthographic networks possess small-word characteristics defined by short average path lengths between nodes and strong local clustering. Moreover, the interconnectivity of the network decreases with growth. Implications for the study of the effect of network measures on language processing are discussed.
在本研究中,我们运用图论来考察心理词库中正字法网络的发展。根据这一观点,单词由网络中的节点表示,并根据它们的正字法相似性相互连接。通过基于德国学童语言语料库的抽样方法,我们能够模拟1至8年级儿童的词汇发展。通过从语料库中抽取不同的词库规模,我们能够分析不同时间点正字法词库的内容,并运用图论研究网络特征。结果表明,与语义网络和语音网络类似,正字法网络具有由节点间较短平均路径长度和较强局部聚类定义的小世界特征。此外,网络的互连性随着发展而降低。我们还讨论了网络测度对语言加工影响研究的意义。