广义IFS贝叶斯方法及其相关变分原理涵盖了经典和动态情况

IF 0.5 4区 数学 Q4 MATHEMATICS, APPLIED Dynamical Systems-An International Journal Pub Date : 2023-09-18 DOI:10.1080/14689367.2023.2257609
Artur O. Lopes, Jairo. K. Mengue
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引用次数: 0

摘要

摘要本文介绍了一种从先验概率得到后验概率的通用IFS贝叶斯方法,以及一种考虑动态和非动态设置的广义贝叶斯规则。给定一个损失函数l,我们详细说明了先验和后验项目及其后果,并展示了几个例子。以Θ为参数集,Y为数据集(通常提供随机样本),一般的IFS是一个可测量的映射τ:Θ×Y→Y,它可以解释为一个族映射τ Θ:Y→Y, Θ∈Θ。我们将在这里得到的结果的主要灵感来自Zellner的一篇论文(没有动态),其中贝叶斯规则与信息最小化原则有关。我们将展示产生后验概率(与完整概率相关)的IFS贝叶斯方法与变分原理的最优解有关,在某种程度上对应于热力学形式主义中的压力,也对应于信息论中的信息最小化原则。在其他结果中,我们给出了先验动力元素,并通过热力学形式的Ruelle算子导出了相应的后验元素;这就是动态贝叶斯规则的一种形式。关键词:广义贝叶斯规则后验概率广义IFS贝叶斯方法信息最小化完整概率热力学形式披露声明作者未报告潜在利益冲突。注1如果有多于一个关于(l¯,ν,τ)的平稳ρ,则我们得到多于一个可能的后后概率π2注意到考虑dπ~=π~p(θ)dθdδy0的重要性,得到如下表达式(Equation32(32)) supπ~完整∫[log (l(θ,y))+log (π (θ))−log (φ(y))]dπ~+Hdθ(π~).(32)),且其极值在π~p(θ)之上,它是一个概率密度函数,而不是一个概率;此外,对于最后一项,我们考虑(式31(31))Hν(π)={−∫log (J)dπifdπ=J(θ,y)dν(θ)dρ(y)−∞如果π对于toν×ρ(31)不是绝对连续的)。
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The generalized IFS Bayesian method and an associated variational principle covering the classical and dynamical cases
AbstractWe introduce a general IFS Bayesian method for getting posterior probabilities from prior probabilities, and also a generalized Bayes' rule, which will contemplate a dynamical, as well as a non-dynamical setting. Given a loss function l, we detail the prior and posterior items, their consequences and exhibit several examples. Taking Θ as the set of parameters and Y as the set of data (which usually provides random samples), a general IFS is a measurable map τ:Θ×Y→Y, which can be interpreted as a family of maps τθ:Y→Y,θ∈Θ. The main inspiration for the results we will get here comes from a paper by Zellner (with no dynamics), where Bayes' rule is related to a principle of minimization of information. We will show that our IFS Bayesian method which produces posterior probabilities (which are associated to holonomic probabilities) is related to the optimal solution of a variational principle, somehow corresponding to the pressure in Thermodynamic Formalism, and also to the principle of minimization of information in Information Theory. Among other results, we present the prior dynamical elements and we derive the corresponding posterior elements via the Ruelle operator of Thermodynamic Formalism; getting in this way a form of dynamical Bayes' rule.Keywords: Generalized Baye's ruleposterior probabilitygeneral IFS Bayesian methodminimization of informationholonomic probabilityThermodynamic Formalism Disclosure statementNo potential conflict of interest was reported by the author(s).Notes1 If there are more than one stationary ρ with respect to (l¯,ν,τ), then we get more than one possible posterior probability π2 observe the importance of considering dπ~=π~p(θ)dθdδy0, to get the below expression from (Equation32(32) supπ~holonomic∫[log⁡(l(θ,y))+log⁡(πa(θ))−log⁡(φ(y))]dπ~+Hdθ(π~).(32) ), and that the supremum is over π~p(θ), which is a probability density function and no more a probability; furthermore, for the last term we take into account (Equation31(31) Hν(π)={−∫log⁡(J)dπifdπ=J(θ,y)dν(θ)dρ(y)−∞ifπis not absolutely continuouswith respect toν×ρ(31) ).
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
33
审稿时长
>12 weeks
期刊介绍: Dynamical Systems: An International Journal is a world-leading journal acting as a forum for communication across all branches of modern dynamical systems, and especially as a platform to facilitate interaction between theory and applications. This journal publishes high quality research articles in the theory and applications of dynamical systems, especially (but not exclusively) nonlinear systems. Advances in the following topics are addressed by the journal: •Differential equations •Bifurcation theory •Hamiltonian and Lagrangian dynamics •Hyperbolic dynamics •Ergodic theory •Topological and smooth dynamics •Random dynamical systems •Applications in technology, engineering and natural and life sciences
期刊最新文献
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