Accelerated Parameter Estimation with DALEX

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Date

2017-05-02

Authors

Daniel, Scott F.
Linder, Eric V.

Journal Title

Journal ISSN

Volume Title

Publisher

International conference "ECL17: Exploring the Energetic Universe 2017", Nazarbayev University Energetic Cosmic Laboratory

Abstract

We consider methods for improving the estimation of constraints on a high-dimensional parameter space with a computationally expensive likelihood function. In such cases, Markov chain Monte Carlo (MCMC) can take a long time to converge and concentrates on finding the maxima rather than the often-desired confidence contours for accurate error estimation. We employ DALEχ (Direct Analysis of Limits via the Exterior of χ2) for determining confidence contours by minimizing a cost function parametrized to incentivize points in parameter space which are both on the confidence limit and far from previously sampled points. We compare DALEχ to the nested sampling algorithm implemented in MultiNest on a toy likelihood function that is highly non-Gaussian and non-linear in the mapping between parameter values and χ2. We find that in high-dimensional cases DALEχ finds the same confidence limit as Multi-Nest using roughly an order of magnitude fewer evaluations of the likelihood function. DALEχ is open-source and available at https://github.com/danielsf/Dalex.git .

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Keywords

Markov chain Monte Carlo, DALEX, Research Subject Categories::NATURAL SCIENCES::Physics::Astronomy and astrophysics::Cosmology

Citation

Daniel, Scott F. Linder, Eric V. (2017) Accelerated Parameter Estimation with DALEX. International conference "ECL17: Exploring the Energetic Universe 2017", Nazarbayev University Energetic Cosmic Laboratory