论文标题
概率链接模型具有对称信息差异
Probability Link Models with Symmetric Information Divergence
论文作者
论文摘要
本文介绍了将一个概率分布转换为另一个概率分布的链接函数,以使两个分布之间的kullback-leibler和rényi分歧是对称的。提出了两种一般类别的链接模型。第一个模型链接了两个生存功能,并适用于诸如比例赔率和变化点之类的模型,这些模型用于生存分析和可靠性模型。涉及比例赔率模型的原型应用表明,与不对称措施相比,用于评估特征疗效和用于模型平均目的的不对称措施的优势。这些优点包括为模型提供独特的等级,并为模型平均提供独特的信息权重,而不对称差异的计算要求是一半。第二个模型链接了两个累积概率分布函数。该模型产生了广义位置模型,该模型是二进制概率模型(例如Probit和Logit模型)的连续对应模型。示例包括出现在生存分析文献中的广义概率和logit模型,以及广义的拉普拉斯模型和广义学生-T $模型,它们是与相应二进制概率模型相对应的生存时间模型。最后,提出了对生存函数与副依赖信息条件之间对称差异的扩展。
This paper introduces link functions for transforming one probability distribution to another such that the Kullback-Leibler and Rényi divergences between the two distributions are symmetric. Two general classes of link models are proposed. The first model links two survival functions and is applicable to models such as the proportional odds and change point, which are used in survival analysis and reliability modeling. A prototype application involving the proportional odds model demonstrates advantages of symmetric divergence measures over asymmetric measures for assessing the efficacy of features and for model averaging purposes. The advantages include providing unique ranks for models and unique information weights for model averaging with one-half as much computation requirement of asymmetric divergences. The second model links two cumulative probability distribution functions. This model produces a generalized location model which are continuous counterparts of the binary probability models such as probit and logit models. Examples include the generalized probit and logit models which have appeared in the survival analysis literature, and a generalized Laplace model and a generalized Student-$t$ model, which are survival time models corresponding to the respective binary probability models. Lastly, extensions to symmetric divergence between survival functions and conditions for copula dependence information are presented.