3.9.1 Spread Process Yielding the Binomial PMF Rogers has studied two particular processes--one spread and one
clustered--that have appealing time-Poisson process interpretations and that have been
found useful in analyzing the locations of retail trade [ROGE 74]. We consider first
Rogers's spread process, the binomial process. Imagine that entities enter the cell of
interest over some time interval [0, t], initially with 0 entities in the cell. We are
interested in the number of entities at time t, N(t). Being a spread process, each time
that another entity enters the cell the rate at which new entities enter the cell
diminishes. Thus, suppose initially that entities enter the cell as a time-Poisson process
at rate c per unit time. Then, after the first enters the cell, the cell becomes
"less attractive," so the new Poisson arrival rate is c - b. In general, after k
arrivals, the Poisson arrival rate is reduced to c - kb. Thus, the cell becomes less
attractive in a linear manner with the number of entities already in the cell. We assume
that c/b is integer, so that there exists some maximum k, kmax = c/b, at which
the Poisson arrival rate is reduced to c - kmaxb = 0 Thus, the maximum number
of entities in a cell is kmax = c/b. This pure birth process is characterized
by the state-transition diagram shown in Figure 3.36. which is always less than unity (which is what we want with a spread process). |