This paper considers some fundamental statistical models and investigates whether Bayesian estimates of their parameters correspond to intuition in the situation, when observed data are combined with results of previous (prior) measurements obtained under the same conditions. Particularly, the paper considers Bayesian estimates of parameters for the normal or binomial distributions, linear regression, or regularization networks from the field of machine learning.