1,072 research outputs found
General theory of the modified Gutenberg-Richter law for large seismic moments
The Gutenberg-Richter power law distribution of earthquake sizes is one of
the most famous example illustrating self-similarity. It is well-known that the
Gutenberg-Richter distribution has to be modified for large seismic moments,
due to energy conservation and geometrical reasons. Several models have been
proposed, either in terms of a second power law with a larger b-value beyond a
cross-over magnitude, or based on a ``hard'' magnitude cut-off or a ``soft''
magnitude cut-off using an exponential taper. Since the large scale tectonic
deformation is dominated by the very largest earthquakes and since their impact
on loss of life and properties is huge, it is of great importance to constrain
as much as possible the shape of their distribution. We present a simple and
powerful probabilistic theoretical approach that shows that the Gamma
distribution is the best model, under the two hypothesis that the
Gutenberg-Richter power law distribution holds in absence of any condition
(condition of criticality) and that one or several constraints are imposed,
either based on conservation laws or on the nature of the observations
themselves. The selection of the Gamma distribution does not depend on the
specific nature of the constraint. We illustrate the approach with two
constraints, the existence of a finite moment release rate and the observation
of the size of a maximum earthquake in a finite catalog. Our predicted ``soft''
maximum magnitudes compare favorably with those obtained by Kagan [1997] for
the Flinn-Engdahl regionalization of subduction zones, collision zones and
mid-ocean ridges.Comment: 24 pages, including 3 tables, in press in Bull. Seism. Soc. A
Acoustic fluidization for earthquakes?
Melosh [1996] has suggested that acoustic fluidization could provide an
alternative to theories that are invoked as explanations for why some crustal
faults appear to be weak. We show that there is a subtle but profound
inconsistency in the theory that unfortunately invalidates the results. We
propose possible remedies but must acknowledge that the relevance of acoustic
fluidization remains an open question.Comment: 13 page
Significance of log-periodic precursors to financial crashes
We clarify the status of log-periodicity associated with speculative bubbles
preceding financial crashes. In particular, we address Feigenbaum's [2001]
criticism and show how it can be rebuked. Feigenbaum's main result is as
follows: ``the hypothesis that the log-periodic component is present in the
data cannot be rejected at the 95% confidence level when using all the data
prior to the 1987 crash; however, it can be rejected by removing the last year
of data.'' (e.g., by removing 15% of the data closest to the critical point).
We stress that it is naive to analyze a critical point phenomenon, i.e., a
power law divergence, reliably by removing the most important part of the data
closest to the critical point. We also present the history of log-periodicity
in the present context explaining its essential features and why it may be
important. We offer an extension of the rational expectation bubble model for
general and arbitrary risk-aversion within the general stochastic discount
factor theory. We suggest guidelines for using log-periodicity and explain how
to develop and interpret statistical tests of log-periodicity. We discuss the
issue of prediction based on our results and the evidence of outliers in the
distribution of drawdowns. New statistical tests demonstrate that the 1% to 10%
quantile of the largest events of the population of drawdowns of the Nasdaq
composite index and of the Dow Jones Industrial Average index belong to a
distribution significantly different from the rest of the population. This
suggests that very large drawdowns result from an amplification mechanism that
may make them more predictable than smaller market moves.Comment: Latex document of 38 pages including 16 eps figures and 3 tables, in
press in Quantitative Financ
Stock market crashes are outliers
We call attention against what seems to a widely held misconception according
to which large crashes are the largest events of distributions of price
variations with fat tails. We demonstrate on the Dow Jones Industrial index
that with high probability the three largest crashes in this century are
outliers. This result supports suggestion that large crashes result from
specific amplification processes that might lead to observable pre-cursory
signatures.Comment: 8 pages, 3 figures (accepted in European Physical Journal B
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