Wang Lituan, Feng Yangqin, Fu Qiufang, Wang Jianyong, Sun Xunwei, Fu Xiaolan, Zhang Lei, Yi Zhang
Machine Intelligence Laboratory, College of Computer Science, Sichuan University, Chengdu, China.
Institute of High Performance Computing, Agency for Science, Technology and Research, Singapore, Singapore.
Front Psychol. 2021 May 4;12:587405. doi: 10.3389/fpsyg.2021.587405. eCollection 2021.
Although many studies have provided evidence that abstract knowledge can be acquired in artificial grammar learning, it remains unclear how abstract knowledge can be attained in sequence learning. To address this issue, we proposed a dual simple recurrent network (DSRN) model that includes a surface SRN encoding and predicting the surface properties of stimuli and an abstract SRN encoding and predicting the abstract properties of stimuli. The results of Simulations 1 and 2 showed that the DSRN model can account for learning effects in the serial reaction time (SRT) task under different conditions, and the manipulation of the contribution weight of each SRN accounted for the contribution of conscious and unconscious processes in inclusion and exclusion tests in previous studies. The results of human performance in Simulation 3 provided further evidence that people can implicitly learn both chunking and abstract knowledge in sequence learning, and the results of Simulation 3 confirmed that the DSRN model can account for how people implicitly acquire the two types of knowledge in sequence learning. These findings extend the learning ability of the SRN model and help understand how different types of knowledge can be acquired implicitly in sequence learning.
尽管许多研究已提供证据表明在人工语法学习中可以获得抽象知识,但在序列学习中如何获得抽象知识仍不清楚。为解决这一问题,我们提出了一种双简单循环网络(DSRN)模型,该模型包括一个对刺激的表面属性进行编码和预测的表面循环网络以及一个对刺激的抽象属性进行编码和预测的抽象循环网络。模拟1和模拟2的结果表明,DSRN模型可以解释不同条件下序列反应时(SRT)任务中的学习效应,并且对每个循环网络贡献权重的操纵解释了先前研究中包含和排除测试中意识和无意识过程的贡献。模拟3中人类表现的结果进一步证明,人们在序列学习中可以隐性地学习组块和抽象知识,模拟3的结果证实DSRN模型可以解释人们在序列学习中如何隐性地获得这两种类型的知识。这些发现扩展了循环网络模型的学习能力,并有助于理解在序列学习中如何隐性地获得不同类型的知识。