Fedor Anna, Zachar István, Szilágyi András, Öllinger Michael, de Vladar Harold P, Szathmáry Eörs
Parmenides Center for the Study of Thinking, Parmenides FoundationPullach am Isartal, Germany; MTA-ELTE Theoretical Biology and Evolutionary Ecology Research GroupBudapest, Hungary; Institute of Advanced Studies Kőszeg (iASK)Kőszeg, Hungary.
Institute of Advanced Studies Kőszeg (iASK)Kőszeg, Hungary; Department of Plant Systematics, Ecology and Theoretical Biology, Eötvös Loránd University (ELTE)Budapest, Hungary.
Front Psychol. 2017 Mar 29;8:427. doi: 10.3389/fpsyg.2017.00427. eCollection 2017.
In this paper, we show that a neurally implemented a cognitive architecture with evolutionary dynamics can solve the four-tree problem. Our model, called Darwinian Neurodynamics, assumes that the unconscious mechanism of problem solving during insight tasks is a Darwinian process. It is based on the evolution of patterns that represent candidate solutions to a problem, and are stored and reproduced by a population of attractor networks. In our first experiment, we used human data as a benchmark and showed that the model behaves comparably to humans: it shows an improvement in performance if it is pretrained and primed appropriately, just like human participants in Kershaw et al. (2013)'s experiment. In the second experiment, we further investigated the effects of pretraining and priming in a two-by-two design and found a beginner's luck type of effect: solution rate was highest in the condition that was primed, but not pretrained with patterns relevant for the task. In the third experiment, we showed that deficits in computational capacity and learning abilities decreased the performance of the model, as expected. We conclude that Darwinian Neurodynamics is a promising model of human problem solving that deserves further investigation.
在本文中,我们表明一种具有进化动力学的神经实现认知架构能够解决四树问题。我们的模型称为达尔文神经动力学,它假定在顿悟任务中解决问题的无意识机制是一个达尔文过程。它基于代表问题候选解决方案的模式的进化,这些模式由一群吸引子网络存储和复制。在我们的第一个实验中,我们将人类数据用作基准,并表明该模型的行为与人类相当:如果对其进行适当的预训练和启动,它的性能会有所提高,就像克肖等人(2013年)实验中的人类参与者一样。在第二个实验中,我们在二乘二设计中进一步研究了预训练和启动的效果,发现了一种新手运气类型的效应:在启动但未用与任务相关的模式进行预训练的条件下,解决方案率最高。在第三个实验中,正如预期的那样,我们表明计算能力和学习能力的缺陷会降低模型的性能。我们得出结论,达尔文神经动力学是一个有前途的人类问题解决模型,值得进一步研究。