Feb. 2, 2024, 9:47 p.m. | Alejandro de la Concha Nicolas Vayatis Argyris Kalogeratos

cs.LG updates on arXiv.org arxiv.org

Assuming we have iid observations from two unknown probability density functions (pdfs), $p$ and $q$, the likelihood-ratio estimation (LRE) is an elegant approach to compare the two pdfs only by relying on the available data. In this paper, we introduce the first -to the best of our knowledge-graph-based extension of this problem, which reads as follows: Suppose each node $v$ of a fixed graph has access to observations coming from two unknown node-specific pdfs, $p_v$ and $q_v$, and the goal …

best of collaborative cs.lg data extension functions graph graph-based graphs knowledge likelihood paper pdfs probability stat.ml

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