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PVLV:主要价值与习得价值的巴甫洛夫学习算法

PVLV: the primary value and learned value Pavlovian learning algorithm.

作者信息

O'Reilly Randall C, Frank Michael J, Hazy Thomas E, Watz Brandon

机构信息

Department of Psychology, University of Colorado, Boulder, CO 80309, USA.

出版信息

Behav Neurosci. 2007 Feb;121(1):31-49. doi: 10.1037/0735-7044.121.1.31.

Abstract

The authors present their primary value learned value (PVLV) model for understanding the reward-predictive firing properties of dopamine (DA) neurons as an alternative to the temporal-differences (TD) algorithm. PVLV is more directly related to underlying biology and is also more robust to variability in the environment. The primary value (PV) system controls performance and learning during primary rewards, whereas the learned value (LV) system learns about conditioned stimuli. The PV system is essentially the Rescorla-Wagner/delta-rule and comprises the neurons in the ventral striatum/nucleus accumbens that inhibit DA cells. The LV system comprises the neurons in the central nucleus of the amygdala that excite DA cells. The authors show that the PVLV model can account for critical aspects of the DA firing data, making a number of clear predictions about lesion effects, several of which are consistent with existing data. For example, first- and second-order conditioning can be anatomically dissociated, which is consistent with PVLV and not TD. Overall, the model provides a biologically plausible framework for understanding the neural basis of reward learning.

摘要

作者提出了他们的初级价值学习价值(PVLV)模型,用于理解多巴胺(DA)神经元的奖励预测放电特性,作为时间差分(TD)算法的替代方案。PVLV与基础生物学更直接相关,并且对环境中的变异性也更具鲁棒性。初级价值(PV)系统在初级奖励期间控制行为表现和学习,而学习价值(LV)系统则学习条件刺激。PV系统本质上是雷斯克拉-瓦格纳/增量规则,由腹侧纹状体/伏隔核中抑制DA细胞的神经元组成。LV系统由杏仁核中央核中兴奋DA细胞的神经元组成。作者表明,PVLV模型可以解释DA放电数据的关键方面,对损伤效应做出了一些明确的预测,其中一些与现有数据一致。例如,一阶和二阶条件作用在解剖学上可以分离,这与PVLV一致,而与TD不一致。总体而言,该模型为理解奖励学习的神经基础提供了一个生物学上合理的框架。

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