2019
DOI: 10.48550/arxiv.1912.00037
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Generalized inferential models for censored data

Joyce Cahoon,
Ryan Martin

Abstract: Inferential challenges that arise when data are censored have been extensively studied under the classical frameworks. In this paper, we provide an alternative generalized inferential model approach whose output is a data-dependent plausibility function. This construction is driven by an association between the distribution of the relative likelihood function at the interest parameter and an unobserved auxiliary variable. The plausibility function emerges from the distribution of a suitably calibrated random s… Show more

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