Possibilistic inferential models enable reliable decision making by ensuring action quality assessments via Choquet integrals are not overly optimistic and are large-sample efficient.
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Regularized e-processes add knowledge-based imprecise-probabilistic regularization to e-processes, yielding anytime-valid inference with efficiency gains and possibility-theoretic uncertainty quantification that satisfies the likelihood principle and avoids sure loss.
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Decision-making with possibilistic inferential models
Possibilistic inferential models enable reliable decision making by ensuring action quality assessments via Choquet integrals are not overly optimistic and are large-sample efficient.
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Regularized e-processes: anytime valid inference with knowledge-based efficiency gains
Regularized e-processes add knowledge-based imprecise-probabilistic regularization to e-processes, yielding anytime-valid inference with efficiency gains and possibility-theoretic uncertainty quantification that satisfies the likelihood principle and avoids sure loss.