工具性学习的联想模型:对Dupuis和Dawson的回应。

Noam Miller, Sara J Shettleworth
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引用次数: 5

摘要

Miller和Shettleworth(2007)使用工具选择的关联模型来解释几何学习文献中令人困惑的结果模式。Dupuis和Dawson(出版中)发现了Miller-Shettleworth (MS)模型中的一个结构性缺陷,并建议用一个操作感知器模型代替它,该模型可以正确地再现MS模型所不能重现的一些实验结果。在这里,我们证明了MS模型中的误差可以很容易地纠正,而不改变任何模型的预测,通过使其随机而不是确定性。此外,我们表明,感知器模型的原始输出在没有首先规范化的情况下不能被解释为工具任务中的判别选择。我们表明,这个额外的步骤使得感知器模型的结果与MS模型的结果完全相同,而在这些情况下,它被声称能够正确预测后者不能预测的结果。
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Associative models of instrumental learning: a response to Dupuis and Dawson.

Miller and Shettleworth (2007) used an associative model of instrumental choice to explain a confusing pattern of results in the geometry learning literature. Dupuis and Dawson (in press) identified a structural flaw in the Miller-Shettleworth (MS) model and suggested replacing it with an operant perceptron model which can correctly reproduce some experimental results that the MS model does not. Here we demonstrate that the error in the MS model can be easily corrected without altering any of the model's predictions by making it stochastic rather than deterministic. In addition, we show that the raw outputs of the perceptron model cannot be interpreted as discriminative choices in an instrumental task without first being normalized. We show that this additional step renders the results of the perceptron model identical to those of the MS model in exactly those cases in which it has been claimed to correctly predict results that the latter cannot.

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23.10%
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>12 weeks
期刊介绍: The Journal of Experimental Psychology: Animal Learning and Cognition publishes experimental and theoretical studies concerning all aspects of animal behavior processes.
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