In the present paper, we propose a Palm likelihood approach as a general estimating principle for stationary point processes in $R^d$ for which the density of the second-order factorial moment measure is available in closed form. Examples of such point processes include the Neyman-Scott processes and the log Gaussian Cox processes. The computations involved in determining the Palm likelihood estimator are simple. Conditions are provided under which the Palm likelihood estimator is consistent and asymptotically normally distributed.
AMS 200 subject classifications: Primary 62M40, 62F12
Keywords and phrases: asymptotic normality, cluster processes, consistency, log Gaussian Cox processes, Neyman-Scott processes, Palm likelihood, spatial point process, strong mixing