A typical approach to estimate an unknown quantity mu is to design an exper
iment that produces a random variable Z distributed in [0, 1] with E[Z] = m
u, run this experiment independently a number of times, and use the average
of the outcomes as the estimate. In this paper, we consider the case when
no a priori information about Z is known except that is distributed in [ 0,
1]. We describe an approximation algorithm AA which, given and, when runni
ng independent experiments with respect to any Z, produces an estimate that
is within a factor 1+epsilon of mu with probability at least 1-delta. We p
rove that the expected number of experiments run by AA (which depends on Z)
is optimal to within a constant factor for every Z.