If a continuous probability distribution is memoryless, then it must be the exponential distribution. From the memorylessness property,\Pr(X>t+s \mid X>s)=\Pr(X>t).The definition of
conditional probability reveals that\frac{\Pr(X > t + s)}{\Pr(X > s)} = \Pr(X > t).Rearranging the equality with the
survival function, S(t) = \Pr(X > t), givesS(t + s) = S(t) S(s).This implies that for any
natural number kS(kt) = S(t)^k.Similarly, by dividing the input of the survival function and taking the k-th root,S\left(\frac{t}{k}\right) = S(t)^{\frac{1}{k}}.In general, the equality is true for any
rational number in place of k. Since the survival function is
continuous and rational numbers are
dense in the
real numbers (in other words, there is always a rational number arbitrarily close to any real number), the equality also holds for the reals. As a result,S(t) = S(1)^t = e^{t \ln S(1)} = e^{-\lambda t}where \lambda = -\ln S(1) \geq 0. This is the survival function of the exponential distribution. == Characterization of geometric distribution ==