I'm trying to figure out how to create a new
scipy.stats.rv_continuous subclass. My distribution depends on "location" and "shape" parameters, but every example of a
scipy.stats.distributions assumes that the shape & location parameters can simply be applied to the X-axis, which is not the case for some distributions.
For example, one distribution I'm working with is a modified version of the lognormal in which the X-axis location explicitly depends on the width of the distribution, i.e.:
def _pdf(self, x, x0, s): Px = exp(-(log(x/x0)+s**2/2.)**2 / (2*s**2)) return Px / (s*x0*sqrt(2*pi))
I'd like to be able to use
s. Is there any way to do this, or is there a better way to subclass
(note that simply using the PDF as I've defined it leads to problems in other
rv_continuous methods, e.g.
scale are still treated as "free parameters" even though they should not be)