14.4 The (a, b,1) class

Estimation of the parameters for the (a, b,1) class follows the same general principles used in connection with the (a, b, 0) class.

Assuming that the data are in the same form as the previous examples, the likelihood is, using (6.7),

equation

The loglikelihood is

equation

where the last statement follows from . The three parameters of the (a, b, 1) class are pM0, a, and b, where a and b determine p1, p2, ….

Then it can be seen that

equation

with

equation

where l0 depends only on the parameter pM0 and l1 is independent of pM0, depending only on a and b. This separation simplifies the maximization because

equation

resulting in

equation

the proportion of observations at zero. This is the natural estimator because pM0 represents the probability of an observation of zero.

Similarly, because the likelihood factors conveniently, ...

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