Zhao Yuxuan, Zeng Yi, Qiao Guang
Research Center for Brain-inspired Intelligence, Institute of Automation, Chinese Academy of Sciences, Beijing 100190, China.
Center for Excellence in Brain Science and Intelligence Technology, Chinese Academy of Sciences, Shanghai 200031, China.
iScience. 2020 Dec 25;24(1):101980. doi: 10.1016/j.isci.2020.101980. eCollection 2021 Jan 22.
Classical conditioning plays a critical role in the learning process of biological brains, and many computational models have been built to reproduce the related classical experiments. However, these models can reproduce and explain only a limited range of typical phenomena in classical conditioning. Based on existing biological findings concerning classical conditioning, we build a brain-inspired classical conditioning (BICC) model. Compared with other computational models, our BICC model can reproduce as many as 15 classical experiments, explaining a broader set of findings than other models have, and offers better computational explainability for both the experimental phenomena and the biological mechanisms of classical conditioning. Finally, we validate our theoretical model on a humanoid robot in three classical conditioning experiments (acquisition, extinction, and reacquisition) and a speed generalization experiment, and the results show that our model is computationally feasible as a foundation for brain-inspired robot classical conditioning.
经典条件作用在生物大脑的学习过程中起着关键作用,并且已经构建了许多计算模型来重现相关的经典实验。然而,这些模型只能重现和解释经典条件作用中有限范围的典型现象。基于现有的关于经典条件作用的生物学发现,我们构建了一个受大脑启发的经典条件作用(BICC)模型。与其他计算模型相比,我们的BICC模型可以重现多达15个经典实验,解释比其他模型更广泛的一系列发现,并且为经典条件作用的实验现象和生物学机制提供了更好的计算可解释性。最后,我们在一个人形机器人上进行了三个经典条件作用实验(习得、消退和重新习得)和一个速度泛化实验,对我们的理论模型进行了验证,结果表明我们的模型作为受大脑启发的机器人经典条件作用的基础在计算上是可行的。