We introduce the Statistical Asynchronous Regression (SAR) method: a
technique for determining a relationship between two time varying quantities
without simultaneous measurements of both quantities. We require that there is
a time invariant, monotonic function Y = u(X) relating the two quantities, Y
and X. In order to determine u(X), we only need to know the statistical
distributions of X and Y. We show that u(X) is the change of variables that
converts the distribution of X into the distribution of Y, while conserving
probability. We describe an algorithm for implementing this method and apply it
to several example distributions. We also demonstrate how the method can
separate spatial and temporal variations from a time series of energetic
electron flux measurements made by a spacecraft in geosynchronous orbit. We
expect this method will be useful to the general problem of spacecraft
instrument calibration. We also suggest some applications of the SAR method
outside of space physics.Comment: 27 pages, 10 figures, stronger motivations and rewriting to make the
paper more accessible to a general audience. in press in J. Geophys. Res.
(Space Physics