Many simulation problems require the estimation of a ratio of two expectations. In recent years Monte Carlo estimators have been proposed that can estimate such ratios without bias. We investigate the theoretical properties of such estimators for the estimation of , where . The estimator, , is of the form , where and is any random variable with probability mass function on the positive integers. For a fixed , the optimal choice for is well understood, but less so the choice of . We study the properties of as a function of~ and show that its expected time variance product decreases as decreases, even though the cost of constructing the estimator increases with . We also show that the estimator is asymptotically equivalent to the maximum likelihood (biased) ratio estimator and establish practical confidence intervals.
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