Title of article :
A graphical test for local self-similarity in univariate data
Author/Authors :
Rakhee Dinubhai Patel&Frederic Paik Schoenberg، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The Pareto distribution, or power-law distribution, has long been used to model phenomena in many fields,
including wildfire sizes, earthquake seismic moments and stock price changes. Recent observations have
brought the fit of the Pareto into question, however, particularly in the upper tail where it often overestimates
the frequency of the largest events. This paper proposes a graphical self-similarity test specifically designed
to assess whether a Pareto distribution fits better than a tapered Pareto or another alternative. Unlike some
model selection methods, this graphical test provides the advantage of highlighting where the model fits
well and where it breaks down. Specifically, for data that seem to be better modeled by the tapered Pareto
or other alternatives, the test assesses the degree of local self-similarity at each value where the test is
computed. The basic properties of the graphical test and its implementation are discussed, and applications
of the test to seismological, wildfire, and financial data are considered.
Keywords :
self-similarity , goodness-of-fit testing , Pareto distribution , Power law , tapered Paretodistribution
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS