Article (Scientific journals)
Collaborative likelihood-ratio estimation over graphs
DE LA CONCHA DUARTE, Alejandro David; Vayatis, Nicolas; Kalogeratos, Argyris
2025In Journal of Machine Learning Research, 26 (259), p. 1-66
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Keywords :
Unsupervised learning; f-divergence; likelihood-ratio estimation; kernel methods; graph regularization; multitask learning
Abstract :
[en] This paper introduces the Collaborative Likelihood-ratio Estimation problem, which is relevant for applications involving multiple statistical estimation tasks that can be mapped to the nodes of a fixed graph expressing pairwise task similarity. Each graph node v observes i.i.d. data from two unknown node-specific pdfs, p_v and q_v , and the goal is to estimate the likelihood-ratios (or density-ratios), r_v (x) = q_v(x)/ p_v(x) , for all v. Our contribution is multifold: we present a non-parametric collaborative framework that leverages the graph structure of the problem to solve the tasks more efficiently; we present a concrete method that we call Graph-based Relative Unconstrained Least-Squares Importance Fitting (GRULSIF) along with an efficient implementation; we derive convergence rates that highlight the role of the main variables of the problem. Our theoretical results explicit the conditions under which the collaborative estimation leads to performance gains compared to solving each estimation task independently. Finally, in a series of experiments, we demonstrate that the joint likelihood-ratio estimation of GRULSIF at all graph nodes is more accurate compared to state-of-the-art methods that operate independently at each node, and we verify that the behavior of GRULSIF is in agreement with our theoretical analysis.
Disciplines :
Mathematics
Author, co-author :
DE LA CONCHA DUARTE, Alejandro David  ;  University of Luxembourg > Faculty of Science, Technology and Medicine (FSTM) > Department of Mathematics (DMATH) ; Université Paris-Saclay > ENS Paris-Saclay, Centre Borelli
Vayatis, Nicolas
Kalogeratos, Argyris
External co-authors :
yes
Language :
English
Title :
Collaborative likelihood-ratio estimation over graphs
Publication date :
November 2025
Journal title :
Journal of Machine Learning Research
ISSN :
1532-4435
eISSN :
1533-7928
Publisher :
MIT Press, United States - Massachusetts
Volume :
26
Issue :
259
Pages :
1-66
Peer reviewed :
Peer Reviewed verified by ORBi
Available on ORBilu :
since 30 January 2026

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