学习下随机过程的贝叶斯表示:重访德·菲内蒂定理

Bayesian Representation of Stochastic Processes under Learning: de Finetti Revisited

Econometrica · 1999
被引 48
人大 A+FT50ABS 4*

中文导读

证明,在渐近混合条件下,随机过程的概率分布存在唯一一种自然贝叶斯表示,其分量可学习且足以预测,这推广了德·菲内蒂定理。

Abstract

A probability distribution governing the evolution of a stochastic process has infinitely many Bayesian representations of the form μ = ∫ Θ μ θ dλ(θ). Among these, a natural representation is one whose components (μ θ 's) are learnable (one can approximate μ θ by conditioning μ on observation of the process) and sufficient for prediction (μ θ 's predictions are not aided by conditioning on observation of the process). We show the existence and uniqueness of such a representation under a suitable asymptotic mixing condition on the process. This representation can be obtained by conditioning on the tail-field of the process, and any learnable representation that is sufficient for prediction is asymptotically like the tail-field representation. This result is related to the celebrated de Finetti theorem, but with exchangeability weakened to an asymptotic mixing condition, and with his conclusion of a decomposition into i.i.d. component distributions weakened to components that are learnable and sufficient for prediction.

贝叶斯表示随机过程学习尾部域