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Approximating Likelihood Ratios with Calibrated Discriminative Classifiers
Cranmer, Kyle; Pavez, Juan; Louppe, Gilles
2015
 

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Keywords :
Statistics - Applications; Physics - Data Analysis; Statistics and Probability; Statistics - Machine Learning; 62P35; 62F99; 62H30
Abstract :
[en] In many fields of science, generalized likelihood ratio tests are established tools for statistical inference. At the same time, it has become increasingly common that a simulator (or generative model) is used to describe complex processes that tie parameters $\theta$ of an underlying theory and measurement apparatus to high-dimensional observations $\mathbf{x}\in \mathbb{R}^p$. However, simulator often do not provide a way to evaluate the likelihood function for a given observation $\mathbf{x}$, which motivates a new class of likelihood-free inference algorithms. In this paper, we show that likelihood ratios are invariant under a specific class of dimensionality reduction maps $\mathbb{R}^p \mapsto \mathbb{R}$. As a direct consequence, we show that discriminative classifiers can be used to approximate the generalized likelihood ratio statistic when only a generative model for the data is available. This leads to a new machine learning-based approach to likelihood-free inference that is complementary to Approximate Bayesian Computation, and which does not require a prior on the model parameters. Experimental results on artificial problems with known exact likelihoods illustrate the potential of the proposed method.
Disciplines :
Computer science
Physics
Author, co-author :
Cranmer, Kyle
Pavez, Juan
Louppe, Gilles  ;  Université de Liège - ULiège > Dép. d'électric., électron. et informat. (Inst.Montefiore) > Big Data
Language :
English
Title :
Approximating Likelihood Ratios with Calibrated Discriminative Classifiers
Publication date :
06 June 2015
Commentary :
35 pages, 5 figures
Available on ORBi :
since 28 June 2018

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