Latest YouTube Video

Wednesday, June 22, 2016

Variable Elimination in the Fourier Domain. (arXiv:1508.04032v2 [cs.AI] UPDATED)

The ability to represent complex high dimensional probability distributions in a compact form is one of the key insights in the field of graphical models. Factored representations are ubiquitous in machine learning and lead to major computational advantages. We explore a different type of compact representation based on discrete Fourier representations, complementing the classical approach based on conditional independencies. We show that a large class of probabilistic graphical models have a compact Fourier representation. This theoretical result opens up an entirely new way of approximating a probability distribution. We demonstrate the significance of this approach by applying it to the variable elimination algorithm. Compared with the traditional bucket representation and other approximate inference algorithms, we obtain significant improvements.



from cs.AI updates on arXiv.org http://ift.tt/1LhIOzJ
via IFTTT

No comments: