We discuss estimation and inference in financial durations models. For the
classical autoregressive conditional duration (ACD) models by Engle and Russell
(1998, Econometrica 66, 1127-1162), we show the surprising result that the
large sample behavior of likelihood estimators depends on the tail behavior of
the durations. Even under stationarity, asymptotic normality breaks down for
tail indices smaller than one. Instead, estimators are mixed Gaussian with
non-standard rates of convergence. We exploit here the crucial fact that for
duration data the number of observations within any time span is random. Our
results apply to general econometric models where the number of observed events
is random