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首页> 外文期刊>Journal of experimental psychology. Animal behavior processes >Differentiating Models of Associative Learning: Reorientation, Superconditioning, and the Role of Inhibition
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Differentiating Models of Associative Learning: Reorientation, Superconditioning, and the Role of Inhibition

机译:联想学习的差异化模型:重新定向,超调和抑制作用

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摘要

A recent associative model (Miller, N.Y., & Shettleworth, S.J., 2007. Learning about environmental geometry: An associative model. Journal of Experimental Psychology: Animal Behavior Processes B, 33, 191-212) is an influential mathematical account of how agents behave when reorienting to previously learned locations in spatial arenas. However, it is mathematically and empirically flawed. The current article explores these flaws, including its inability to properly predict geometric superconditioning. We trace the flaws to the model's mathematical structure and how it handles inhibition. We then propose an operant artificial neural network model that solves these problems with inhibition and can correctly model both reorientation and superconditioning.
机译:最近的一种关联模型(Miller,NY,和Shettleworth,SJ,2007年。学习环境几何:一种关联模型。实验心理学杂志:动物行为过程B,33,191-212)是关于代理行为方式的有影响力的数学解释。重新定位到空间领域中以前学习的位置时。但是,它在数学和经验上都有缺陷。本文探讨了这些缺陷,包括无法正确预测几何超级条件。我们将缺陷追溯到模型的数学结构及其处理抑制的方式。然后,我们提出了一个可操作的人工神经网络模型,该模型可以通过抑制来解决这些问题,并且可以正确地对重定向和超条件进行建模。

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