Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology Cambridge, MA, USA.
School of Social Sciences and Psychology, Marcs Institute for Brain and Behaviour, University of Western Sydney Sydney, NSW, Australia.
Front Comput Neurosci. 2014 Jan 9;7:194. doi: 10.3389/fncom.2013.00194. eCollection 2014.
Reinforcement learning (RL) models have been influential in understanding many aspects of basal ganglia function, from reward prediction to action selection. Time plays an important role in these models, but there is still no theoretical consensus about what kind of time representation is used by the basal ganglia. We review several theoretical accounts and their supporting evidence. We then discuss the relationship between RL models and the timing mechanisms that have been attributed to the basal ganglia. We hypothesize that a single computational system may underlie both RL and interval timing-the perception of duration in the range of seconds to hours. This hypothesis, which extends earlier models by incorporating a time-sensitive action selection mechanism, may have important implications for understanding disorders like Parkinson's disease in which both decision making and timing are impaired.
强化学习 (RL) 模型在理解基底神经节功能的许多方面都具有影响力,从奖励预测到动作选择。时间在这些模型中起着重要作用,但对于基底神经节使用哪种时间表示形式,仍然没有理论共识。我们回顾了几种理论解释及其支持证据。然后,我们讨论了 RL 模型与归因于基底神经节的定时机制之间的关系。我们假设一个单一的计算系统可能是 RL 和间隔定时(感知秒到小时范围内的持续时间)的基础。这一假设通过纳入一个时间敏感的动作选择机制,扩展了早期模型,可能对理解帕金森病等疾病具有重要意义,这些疾病的决策和定时都受到损害。