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A Survey of Model Evaluation Approaches With a Tutorial on Hierarchical Bayesian Methods

机译:模型评估方法的调查(带递阶贝叶斯方法的教程)

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This article reviews current methods for evaluating models in the cognitive sciences, including theoretically based approaches, such as Bayes factors and minimum description length measures; simulation approaches, including model mimicry evaluations; and practical approaches, such as validation and generalization measures. This article argues that, although often useful in specific settings, most of these approaches are limited in their ability to give a general assessment of models. This article argues that hierarchical methods, generally, and hierarchical Bayesian methods, specifically, can provide a more thorough evaluation of models in the cognitive sciences. This article presents two worked examples of hierarchical Bayesian analyses to demonstrate how the approach addresses key questions of descriptive adequacy, parameter interference, prediction, and generalization in principled and coherent ways.
机译:本文回顾了目前认知科学中评估模型的方法,包括基于理论的方法,例如贝叶斯因子和最小描述长度度量;仿真方法,包括模型模仿评估;以及实用的方法,例如验证和泛化措施。本文认为,尽管这些方法通常在特定的环境中有用,但它们对模型进行总体评估的能力有限。本文认为,一般而言,分层方法和特别是分层贝叶斯方法可以对认知科学中的模型提供更全面的评估。本文提供了两个工作的层次贝叶斯分析示例,以演示该方法如何以有原则和连贯的方式解决描述性充分性,参数干扰,预测和泛化的关键问题。

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