Abstract-Calibrating the parameters of an evolutionary algorithm (EA) on a given problem is a laborious task. The highly stochastic nature of an EA typically leads to a high variance of the measurements, making it difficult to obtain statistically significant results. Variance reduction is crucial to EA calibration, and with it the call for an efficient use of available computational resources (test runs). The standard method for variance reduction is measurement replication, i.e., repetition of test runs, and averaging over several test runs with identical parameter settings. The computational cost of measurement replication scales with the measurement variance, a serious problem when variance is high. In this paper we study an alternative: the REVAC method for Relevance Estimation and Value Calibration, and we investigate if this method needs measurement replication. In particular, we study how different levels of measurement replication influence the cost and quality of its calibration results. We find that measurement replication is not essential to REVAC, which makes it a strong and efficient alternative to existing statistical tools.