A binned likelihood for stochastic models
Metrics of model goodness-of-fit, model comparison, and model parameter estimation are the main categories of statistical problems in science. Bayesian and frequentist methods that address these questions often rely on a likelihood function, which is the key ingredient in order to assess the plausib...
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creator | Argüelles, Carlos A Schneider, Austin Yuan, Tianlu |
description | Metrics of model goodness-of-fit, model comparison, and model parameter estimation are the main categories of statistical problems in science. Bayesian and frequentist methods that address these questions often rely on a likelihood function, which is the key ingredient in order to assess the plausibility of model parameters given observed data. In some complex systems or experimental setups, predicting the outcome of a model cannot be done analytically, and Monte Carlo techniques are used. In this paper, we present a new analytic likelihood that takes into account Monte Carlo uncertainties, appropriate for use in the large and small sample size limits. Our formulation performs better than semi-analytic methods, prevents strong claims on biased statements, and provides improved coverage properties compared to available methods. |
doi_str_mv | 10.48550/arxiv.1901.04645 |
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subjects | Bayesian analysis Complex systems Computer simulation Goodness of fit Mathematical models Parameter estimation Physics - Data Analysis, Statistics and Probability Physics - High Energy Physics - Experiment Physics - Instrumentation and Methods for Astrophysics |
title | A binned likelihood for stochastic models |
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