计算连续概率模型归一化最大似然的基础

Atsushi Suzuki, Kota Fukuzawa, Kenji Yamanishi
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引用次数: 0

摘要

归一化最大似然(NML)码长被广泛用作基于最小描述长度原则的模型选择标准,即选择 NML 码长最短的模型。计算 NML 码长的常用方法是使用最大似然估计值分布所定义函数的和(对于离散模型)或积分(对于连续模型)。虽然这种方法已被证明能正确计算离散模型的 NML 码长,但还没有为连续模型提供证明。在本文中,我们肯定地解决了这个问题,证明了该方法在连续情况下也是正确的。值得注意的是,完成对连续情况的证明并非易事,因为它不能仅仅通过用积分代替离散情况下的和来实现,因为离散模型情况证明中应用于和的分解技巧不适用于连续模型情况证明中的积分。为了克服这个问题,我们引入了一种新的分解方法,它基于几何测度论中的 coarea 公式,这对我们建立连续情形的证明至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Foundation of Calculating Normalized Maximum Likelihood for Continuous Probability Models
The normalized maximum likelihood (NML) code length is widely used as a model selection criterion based on the minimum description length principle, where the model with the shortest NML code length is selected. A common method to calculate the NML code length is to use the sum (for a discrete model) or integral (for a continuous model) of a function defined by the distribution of the maximum likelihood estimator. While this method has been proven to correctly calculate the NML code length of discrete models, no proof has been provided for continuous cases. Consequently, it has remained unclear whether the method can accurately calculate the NML code length of continuous models. In this paper, we solve this problem affirmatively, proving that the method is also correct for continuous cases. Remarkably, completing the proof for continuous cases is non-trivial in that it cannot be achieved by merely replacing the sums in discrete cases with integrals, as the decomposition trick applied to sums in the discrete model case proof is not applicable to integrals in the continuous model case proof. To overcome this, we introduce a novel decomposition approach based on the coarea formula from geometric measure theory, which is essential to establishing our proof for continuous cases.
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