epävarmuusjakaumat
Epävarmuusjakaumat refer to probability distributions that quantify the uncertainty associated with parameters or predictions. In statistical modeling, parameters are often unknown and must be estimated from data. This estimation process inherently involves uncertainty. Epävarmuusjakaumat provide a framework for representing this uncertainty in a rigorous mathematical way. Instead of providing a single point estimate for a parameter, epävarmuusjakaumat describe a range of plausible values and their associated probabilities.
These distributions are crucial in various fields, including Bayesian inference, where prior beliefs about parameters are
Common examples of epävarmuusjakaumat include the normal distribution, beta distribution, and Dirichlet distribution, each suitable for