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More nonparametric Bayesian inference in applications. (English) Zbl 1396.62060

Discussion of [P. Müller et al., ibid. 27, No. 2, 175–206 (2018; Zbl 1396.62067)].

MSC:

62G05 Nonparametric estimation
62F15 Bayesian inference
62J15 Paired and multiple comparisons; multiple testing
62P10 Applications of statistics to biology and medical sciences; meta analysis

Citations:

Zbl 1396.62067
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