b-more-incomplete and b-more-positive: Insights on A Robust Estimator of
Magnitude Distribution
Abstract
The $b$-value in earthquake magnitude-frequency distribution
quantifies the relative frequency of large versus small earthquakes.
Monitoring its evolution could provide fundamental insights into
temporal variations of stress on different fault patches. However,
genuine $b$-value changes are often difficult to distinguish from
artificial ones induced by temporal variations of the detection
threshold.
A highly innovative and effective solution to this issue has recently
been proposed by van der Elst (2021) by means of the b-positive
estimator, which is based on analyzing only the positive differences in
magnitude between successive earthquakes.
Here, we
demonstrate the robustness of the estimator, which remains largely
unaffected by detection issues due to the properties of conditional
probability. We illustrate that this robustness can be further improved
by considering positive differences in magnitude, not only between
successive earthquakes but also between different pairs of earthquakes.
This generalized approach, defined as the “b-more-positive estimator,”
enhances efficiency by providing a precise estimate of the $b$-value
while including a larger number of earthquakes from an incomplete
catalog. However, our analysis reveals that the accuracy of the $b$
estimators diminishes when earthquakes below the completeness threshold
are included in the catalog. This leads to the paradoxical observation
that greater efficiency is achieved when the catalog is more incomplete.
To address this, we introduce the “b-more-incomplete estimator”, where
the b-more-positive estimator is applied only after artificially
filtering the instrumental catalog to make it more incomplete. Our
findings show the superior efficiency of the b-more-incomplete method.