Duality Induced from Conjugacy in the Curved Exponential Family

Toshio Ohnishi, T. Yanagimoto
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引用次数: 1

Abstract

A class of curved exponential families whose likelihood function admits the conjugate analysis is derived, and its duality is explored. We show that conjugacy yields the existence of sufficient statistics as well as duality. Extended versions of the mean and the canonical parameters can be defined, which shed a new light on duality and the conjugate analysis in the exponential family. As a result, an essential reason is revealed as to why a common prior density can be conjugate for different sampling densities, as in the case of a gamma prior density which is conjugate for the Poisson and the gamma sampling densities. The least information property of the conjugate analysis is explained, which is compatible with the minimax property of the generalized linear model. We also derive dual Pythagorean relationships with respect to posterior risks to show the optimality of the Bayes estimator.
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曲线指数族的共轭对偶性
导出了一类似然函数允许共轭分析的曲线指数族,并探讨了其对偶性。我们证明了共轭性产生了充分统计量的存在性和对偶性。可以定义均值参数和正则参数的扩展形式,从而对指数族的对偶性和共轭分析有了新的认识。因此,揭示了一个重要的原因,即为什么一个共同的先验密度可以对不同的采样密度进行共轭,就像在泊松密度和伽马采样密度共轭的伽马先验密度的情况下一样。解释了共轭分析的最小信息性质,该性质与广义线性模型的极大极小性是相容的。我们还推导了关于后验风险的对偶毕达哥拉斯关系,以显示贝叶斯估计器的最优性。
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