Using Fisher Scoring to Fit Extended Poisson Process Models

Peter Toscas1, M. J. Faddy2
1CSIRO Mathematical and Information Sciences, South Clayton MDC, Australia 3169#TAB#
2School of Mathematics and Statistics, The University of Birmingham, Edgbaston, UK B15 2TT#TAB#

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