Kernel based Dirichlet sequences
Abstract
Let X=(X1,X2,…) be a sequence of random variables with values in a standard space (S,B). Suppose gather* X1 P(Xn+1∈· X1,…,Xn)=θ(·)+Σi=1nK(Xi)(·)n+θ.s. gather* where θ>0 is a constant, a probability measure on B, and K a random probability measure on B. Then, X is exchangeable whenever K is a regular conditional distribution for given any sub-σ-field of B. Under this assumption, X enjoys all the main properties of classical Dirichlet sequences, including Sethuraman's representation, conjugacy property, and convergence in total variation of predictive distributions. If μ is the weak limit of the empirical measures, conditions for μ to be a.s. discrete, or a.s. non-atomic, or μ a.s., are provided. Two CLT's are proved as well. The first deals with stable convergence while the second concerns total variation distance.
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