Formalizes pre-data effective sample size for GGMs under Wishart and G-Wishart priors and introduces DPIR and BFDA extensions for sample size planning.
Precursor of Inflation
3 Pith papers cite this work. Polarity classification is still indexing.
abstract
We investigate a nonsingular initial state of the Universe which leads to inflation naturally. The model is described by a scalar field with a quadratic potential in Eddington-inspired Born-Infeld gravity. The curvature of this initial state is given by the mass scale of the scalar field which is much smaller than the Planck scale. Therefore, in this model, quantum gravity is not necessary in understanding this pre-inflationary stage, no matter how large the energy density becomes. The initial state in this model evolves eventually to a long inflationary period which is similar to the usual chaotic inflation.
years
2026 3verdicts
UNVERDICTED 3representative citing papers
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What is your Prior Worth? Effective Sample Size and Sample Size Planning for Gaussian Graphical Models
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