A methodology is developed to assign, from an observed sample, a joint-probability distribution to a set of continuous variables. The algorithm proposed performs this assignment by mapping the original variables onto a jointly-Gaussian set. The map is built iteratively, ascending the log-likelihood of the observations, through a series of steps that move the marginal distributions along a random set of orthogonal directions towards normality. © 2010 International Press.
CITATION STYLE
Tabak, E. G., & Vanden-Eijnden, E. (2010). Density estimation by dual ascent of the log-likelihood. Communications in Mathematical Sciences, 8(1), 217–233. https://doi.org/10.4310/CMS.2010.v8.n1.a11
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