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Parameter Inference for Computational Cognitive Models With Approximate Bayesian Computation

机译:近似贝叶斯计算的计算认知模型的参数推断

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This paper addresses a common challenge with computational cognitive models: identifying parameter values that are both theoretically plausible and generate predictions that match well with empirical data. While computational models can offer deep explanations of cognition, they are computationally complex and often out of reach of traditional parameter fitting methods. Weak methodology may lead to premature rejection of valid models or to acceptance of models that might otherwise be falsified. Mathematically robust fitting methods are, therefore, essential to the progress of computational modeling in cognitive science. In this article, we investigate the capability and role of modern fitting methods-including Bayesian optimization and approximate Bayesian computation-and contrast them to some more commonly used methods: grid search and Nelder-Mead optimization. Our investigation consists of a reanalysis of the fitting of two previous computational models: an Adaptive Control of Thought-Rational model of skill acquisition and a computational rationality model of visual search. The results contrast the efficiency and informativeness of the methods. A key advantage of the Bayesian methods is the ability to estimate the uncertainty of fitted parameter values. We conclude that approximate Bayesian computation is (a) efficient, (b) informative, and (c) offers a path to reproducible results.
机译:本文通过计算认知模型解决了一个共同的挑战:识别理论上合理的参数值并生成与经验数据非常匹配的预测。尽管计算模型可以提供对认知的深入解释,但它们在计算上很复杂,并且通常是传统参数拟合方法无法实现的。方法论薄弱可能导致过时地拒绝有效模型或接受可能被伪造的模型。因此,数学上健壮的拟合方法对于认知科学中计算建模的进展至关重要。在本文中,我们研究了现代拟合方法(包括贝叶斯优化和近似贝叶斯计算)的功能和作用,并将它们与一些更常用的方法进行了对比:网格搜索和Nelder-Mead优化。我们的研究包括对之前两个计算模型的拟合的重新分析:技能获取的思想理性模型的自适应控制和视觉搜索的计算合理性模型。结果对比了该方法的效率和信息量。贝叶斯方法的主要优点是能够估计拟合参数值的不确定性。我们得出结论,近似贝叶斯计算是(a)有效的,(b)信息丰富的,(c)提供了可重现结果的途径。

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