One often needs to estimate statistical models where the probability density function is known only up to a multiplicative normalization constant. While we encounter this problem in our statistical models of visual processing, it is, in fact, a very general problem in statistical estimation.
Typically, one then has to resort to Markov Chain Monte Carlo methods, or different kinds of approximations. We have proposed a new method that is computationally very simple yet statistically consistent, based on matching the score functions of the model and data densities.
For publications on score matching, see this page.
Last updated on 10 Dec 2007 by Teemu Mäntylä - Page created on 13 Jan 2007 by Webmaster