This study investigates the effects of varying
sampling intervals on the long memory characteristics of
certain stochastic processes. We find that although different
sampling intervals do not affect the decay rate of discrete
time long memory autocorrelation functions in large lags,
the autocorrelation functions in short lags are affected
significantly. The level of the autocorrelation functions
moves upward for temporally aggregated processes and downward
for systematically sampled processes, and these effects
result in a bias in the long memory parameter. For the
ARFIMA(0,d,0) process, the absolute magnitude
of the long memory parameter, |d|,
of the temporally aggregated process is greater than the
|d| of the true process, which is
greater than the |d| of the systematically
sampled process. We also find that the true long memory
parameter can be obtained if we use a decay rate that is
not affected by different sampling intervals.