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Fat-Tailed Distributions - Data, Diagnostics and Dependence (Hardcover, Volume 1)
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Fat-Tailed Distributions - Data, Diagnostics and Dependence (Hardcover, Volume 1)
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This title is written for the numerate nonspecialist, and hopes to
serve three purposes. First it gathers mathematical material from
diverse but related fields of order statistics, records, extreme
value theory, majorization, regular variation and
subexponentiality. All of these are relevant for understanding fat
tails, but they are not, to our knowledge, brought together in a
single source for the target readership. Proofs that give insight
are included, but for most fussy calculations the reader is
referred to the excellent sources referenced in the text.
Multivariate extremes are not treated. This allows us to present
material spread over hundreds of pages in specialist texts in
twenty pages. Chapter 5 develops new material on heavy tail
diagnostics and gives more mathematical detail. Since variances and
covariances may not exist for heavy tailed joint distributions,
Chapter 6 reviews dependence concepts for certain classes of heavy
tailed joint distributions, with a view to regressing heavy tailed
variables. Second, it presents a new measure of obesity. The most
popular definitions in terms of regular variation and
subexponentiality invoke putative properties that hold at infinity,
and this complicates any empirical estimate. Each definition
captures some but not all of the intuitions associated with tail
heaviness. Chapter 5 studies two candidate indices of tail
heaviness based on the tendency of the mean excess plot to collapse
as data are aggregated. The probability that the largest value is
more than twice the second largest has intuitive appeal but its
estimator has very poor accuracy. The Obesity index is defined for
a positive random variable X as: Ob(X) = P (X1 +X4 > X2 +X3X1
For empirical distributions, obesity is defined by bootstrapping.
This index reasonably captures intuitions of tail heaviness. Among
its properties, if > 1 then Ob(X) Third and most important, we
hope to convince the reader that fat tail phenomena pose real
problems; they are really out there and they seriously challenge
our usual ways of thinking about historical averages, outliers,
trends, regression coefficients and confidence bounds among many
other things. Data on flood insurance claims, crop loss claims,
hospital discharge bills, precipitation and damages and fatalities
from natural catastrophes drive this point home. While most fat
tailed distributions are "bad", research in fat tails is one
distribution whose tail will hopefully get fatter.
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