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首页> 外文期刊>Journal of Mathematical Psychology >NML, Bayes and true distributions: A comment on Karabatsos and Walker (2006)
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NML, Bayes and true distributions: A comment on Karabatsos and Walker (2006)

机译:NML,贝叶斯和真实发行版:对Karabatsos和Walker的评论(2006)

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We review the normalized maximum likelihood (NML) criterion for selecting among competing models. NML is generally justified on information-theoretic grounds, via the principle of minimum description length (MDL), in a derivation that "does not assume the existence of a true, data-generating distribution". Since this "agnostic" claim has been a source of some recent confusion in the psychological literature, we explain in detail what is meant by this statement. In doing so we discuss the work presented by [Karabatsos, G., & Walker, S. G. (2006). On the normalized maximum likelihood and Bayesian decision theory.Journal of Mathematical Psychology, 50,517-520], who propose an alternative Bayesian decisiontheoretic characterization of NML, which leads them to conclude that the claim of agnosticity is meaningless. In the KW derivation, one part of the NML criterion (the likelihood term) arises from placing a Dirichlet process prior over possible data-generating distributions, and the other part (the complexity term) is folded into a loss function. Whereas in the original derivations of NMI, the complexity term arises naturally, in the KW derivation its mathematical form is taken for granted and not explained any further. We argue that for this reason, the KW characterization is incomplete; relatedly, we question the relevance of the characterization and we argue that their main conclusion about agnosticity does not follow. (C) 2009 Published by Elsevier Inc.
机译:我们回顾了标准化的最大似然(NML)标准,以便在竞争模型中进行选择。 NML通常通过最小描述长度(MDL)的原理以信息论为依据,推导为“不假定存在真实的数据生成分布”。由于这种“不可知论”的主张是近期心理学文献中一些混乱的根源,因此我们将详细解释该陈述的含义。为此,我们讨论了[Karabatsos,G.和&Walker,S. G.(2006)提出的工作。关于归一化最大似然和贝叶斯决策理论。数学心理学杂志,50,517-520],他提出了NML的另一种贝叶斯决策理论特征,这使他们得出结论,不可知论断是没有意义的。在KW推导中,NML标准的一部分(似然项)来自于在可能的数据生成分布之前放置Dirichlet过程,而另一部分(复杂度项)则被折叠成损失函数。在NMI的原始派生中,复杂度术语自然而然地出现,而在KW派生中,其数学形式是理所当然的,不再赘述。我们认为,由于这个原因,KW的表征是不完整的。相关地,我们质疑表征的相关性,并且我们认为它们关于不可知性的主要结论没有得到遵循。 (C)2009由Elsevier Inc.出版

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