SCoPE Sets: A Versatile Framework for Simultaneous Inference
We study asymptotic statistical inference in the space of bounded functions endowed with the supremum norm over an arbitrary metric space using a novel concept: Simultaneous Confidence Probability Excursion (SCoPE) sets. Given an estimator SCoPE sets simultaneously quantify the uncertainty of several lower and upper excursion sets of a target function and thereby grant a unifying perspective on several statistical inference tools such as simultaneous confidence bands, quantification of uncertainties in level set estimation, for example, CoPE sets, and multiple hypothesis testing over , for example, finding relevant differences or regions of equivalence within . As a byproduct our abstract treatment allows us to refine and generalize the methodology and reduce the assumptions in recent articles in relevance and equivalence testing in functional data.
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