Parametric Survival Models - Princeton University
Let T denote a continuous non-negative random variable representing sur-vival time, with probability density function (pdf) f(t) and cumulative dis-tribution function (cdf) F(t) = PrfT tg. We focus on the survival func-tion S(t) = PrfT>tg, the probability of being alive at t, and the hazard function (t) = f(t)=S(t). Let ( t) = R t
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