Book contents
- Frontmatter
- Contents
- Preface
- 1 Fundamental approximations
- 2 Properties and derivations
- 3 Multivariate densities
- 4 Conditional densities and distribution functions
- 5 Exponential families and tilted distributions
- 6 Further exponential family examples and theory
- 7 Probability computation with p*
- 8 Probabilities with r*-type approximations
- 9 Nuisance parameters
- 10 Sequential saddlepoint applications
- 11 Applications to multivariate testing
- 12 Ratios and roots of estimating equations
- 13 First passage and time to event distributions
- 14 Bootstrapping in the transform domain
- 15 Bayesian applications
- 16 Nonnormal bases
- References
- Index
2 - Properties and derivations
Published online by Cambridge University Press: 25 February 2010
- Frontmatter
- Contents
- Preface
- 1 Fundamental approximations
- 2 Properties and derivations
- 3 Multivariate densities
- 4 Conditional densities and distribution functions
- 5 Exponential families and tilted distributions
- 6 Further exponential family examples and theory
- 7 Probability computation with p*
- 8 Probabilities with r*-type approximations
- 9 Nuisance parameters
- 10 Sequential saddlepoint applications
- 11 Applications to multivariate testing
- 12 Ratios and roots of estimating equations
- 13 First passage and time to event distributions
- 14 Bootstrapping in the transform domain
- 15 Bayesian applications
- 16 Nonnormal bases
- References
- Index
Summary
Chapter 1 introduced expressions which define the various saddlepoint approximations along with enough supplementary information to allow the reader to begin making computations. This chapter develops some elementary properties of the approximations which leads to further understanding of the methods. Heuristic derivations for many of the approximations are presented.
Simple properties of the approximations
Some important properties possessed by saddlepoint density/mass functions and CDFs are developed below. Unless noted otherwise, the distributions involved throughout are assumed to have MGFs that are convergent on open neighborhoods of 0.
The first few properties concern a linear transformation of the random variable X to Y = σX + μ with σ ≠ 0. When X is discrete with integer support, then Y has support on a subset of the σ-lattice {μ,μ ± σ, μ ± 2σ, …}. The resulting variable Y has a saddlepoint mass and CDF approximation that has not been defined and there are a couple of ways in which to proceed. The more intriguing approach would be based on the inversion theory of the probability masses, however, the difficulty of this approach places it beyond the scope of this text. A more expedient and simpler alternative approach is taken here which adopts the following convention and which leads to the same approximations.
Lattice convention. The saddlepoint mass function and CDF approximation for lattice variable Y, with support in {μ, μ ± σ,μ ± 2σ, …} for σ > 0, are specified in terms of their equivalents based on X = (Y − μ) /σ with support on the integer lattice.
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- Saddlepoint Approximations with Applications , pp. 38 - 74Publisher: Cambridge University PressPrint publication year: 2007