Suppose that a random variable has the probability density function
![p_{v,\\sigma }(x) = frac{\\upsilon }{\\sigma \\Gamma (1/\\upsilon )}\\exp [-(x/\\sigma )^{\\upsilon }]](/images/tex/12287.gif)
,

where σ and ν may not be known. In order to estimate the probability

that the random variable exceeds a high threshold

, an extrapolation can be made from counting estimates

,

, ... ,

, of the probabilities of exceeding

lower thresholds. Using the observation that a double logarithmic function of

, is approximately linear in log

for a useful range of the exponent, an estimate of In [-In

] can be made by straightline extrapolation. In application to estimation of error rate in a digital communication system operating over an analog channel, only weak a-priori assumptions about the noise need be made, substantially fewer samples are required than for the usual counting estimate, and knowledge of the transmitted data sequence is unnecessary. A physical implementation of this technique in an error meter is described.