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Inference . Estimates stationary p.p. {N(t)}, rate p N , observed for 0<t<T

Inference . Estimates stationary p.p. {N(t)}, rate p N , observed for 0<t<T First-order. Asymptotically normal. Theorem . Suppose cumulant spectra bounded, then N(T) is asymptotically N(Tp N , 2  Tf 2 (0)). Proof. The normal is determined by its moments. Second-order.

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Inference . Estimates stationary p.p. {N(t)}, rate p N , observed for 0<t<T

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  1. Inference. Estimates stationary p.p. {N(t)}, rate pN , observed for 0<t<T First-order.

  2. Asymptotically normal.

  3. Theorem. Suppose cumulant spectra bounded, then N(T) is asymptotically N(TpN , 2Tf2 (0)). Proof. The normal is determined by its moments

  4. Second-order.

  5. Bivariate p.p.

  6. Volkonski and Rozanov (1959); If NT(I), T=1,2,… sequence of point processes with pNT 0 as T   then, under further regularity conditions, sequence with rescaled time, NT(I/pNT ), T=1,2,…tends to a Poisson process. Perhaps INMT(u) approximately Poisson, rate TpNMT(u) Take:  = L/T, L fixed NT(t) spike if M spike in (t,t+dt] and N spike in (t+u,t+u+L/T] rate ~ pNM(u) /T  0 as T   NT(IT) approx Poisson INMT(u) ~ N T(IT) approx Poisson, mean TpNM(u)

  7. Variance stabilizing transfor for Poisson: square root

  8. For large mean the Poisson is approx normal

  9. Nonstationary case. pN(t)

  10. A Poisson case. Rate (t) = exp{ +  cos(t + )}  = (,,,) log-likelihood l() =  log (i) - (t) dt 0 < t < T

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