Ehlen Felicitas, Fromm Ortwin, Vonberg Isabelle, Klostermann Fabian
Department of Neurology, Motor, and Cognition Group, Charité - University Medicine Berlin, Campus Benjamin Franklin, Berlin, Germany.
Berlin School of Mind and Brain, Berlin, Germany.
Psychon Bull Rev. 2016 Oct;23(5):1354-1373. doi: 10.3758/s13423-015-0987-0.
Word production is generally assumed to occur as a function of a broadly interconnected language system. In terms of verbal fluency tasks, word production dynamics can be assessed by analyzing respective time courses via curve fitting. Here, a new generalized fitting function is presented by merging the two dichotomous classical Bousfieldian functions into one overarching power function with an adjustable shape parameter. When applied to empirical data from verbal fluency tasks, the error of approximation was significantly reduced while also fulfilling the Bayesian information criterion, suggesting a superior overall application value. Moreover, the approach identified a previously unknown logarithmic time course, providing further evidence of an underlying lexical network structure. In view of theories on lexical access, the corresponding modeling differentiates task-immanent lexical suppression from automatic lexical coactivation. In conclusion, our approach indicates that process dynamics result from an increasing cognitive effort to suppress automatic network functions.
一般认为词汇生成是一个广泛互联的语言系统的函数。就言语流畅性任务而言,词汇生成动态可以通过曲线拟合分析各自的时间进程来评估。在此,通过将两个二分的经典布氏函数合并为一个具有可调形状参数的总体幂函数,提出了一种新的广义拟合函数。当应用于言语流畅性任务的实证数据时,近似误差显著降低,同时也满足贝叶斯信息准则,表明其具有更高的整体应用价值。此外,该方法识别出了一个先前未知的对数时间进程,为潜在的词汇网络结构提供了进一步的证据。鉴于词汇通达理论,相应的模型区分了任务内在的词汇抑制和自动的词汇共激活。总之,我们的方法表明,过程动态源于抑制自动网络功能的认知努力的增加。