A survey of Monte Carlo methods for parameter estimation
Statistical signal processing applications usually require the estimation of some parameters
of interest given a set of observed data. These estimates are typically obtained either by …
of interest given a set of observed data. These estimates are typically obtained either by …
2022 review of data-driven plasma science
Data-driven science and technology offer transformative tools and methods to science. This
review article highlights the latest development and progress in the interdisciplinary field of …
review article highlights the latest development and progress in the interdisciplinary field of …
Earth system modeling 2.0: A blueprint for models that learn from observations and targeted high‐resolution simulations
Climate projections continue to be marred by large uncertainties, which originate in
processes that need to be parameterized, such as clouds, convection, and ecosystems. But …
processes that need to be parameterized, such as clouds, convection, and ecosystems. But …
[图书][B] Uncertainty quantification: theory, implementation, and applications
RC Smith - 2024 - SIAM
Uncertainty quantification serves a central role for simulation-based analysis of physical,
engineering, and biological applications using mechanistic models. From a broad …
engineering, and biological applications using mechanistic models. From a broad …
Bayesian computation: a summary of the current state, and samples backwards and forwards
Recent decades have seen enormous improvements in computational inference for
statistical models; there have been competitive continual enhancements in a wide range of …
statistical models; there have been competitive continual enhancements in a wide range of …
A general construction for parallelizing Metropolis− Hastings algorithms
B Calderhead - Proceedings of the National Academy of …, 2014 - National Acad Sciences
Markov chain Monte Carlo methods (MCMC) are essential tools for solving many modern-
day statistical and computational problems; however, a major limitation is the inherently …
day statistical and computational problems; however, a major limitation is the inherently …
Calibration and uncertainty quantification of convective parameters in an idealized GCM
ORA Dunbar, A Garbuno‐Inigo… - Journal of Advances …, 2021 - Wiley Online Library
Parameters in climate models are usually calibrated manually, exploiting only small subsets
of the available data. This precludes both optimal calibration and quantification of …
of the available data. This precludes both optimal calibration and quantification of …
pastis: Bayesian extrasolar planet validation – I. General framework, models, and performance
RF Díaz, JM Almenara, A Santerne… - Monthly Notices of …, 2014 - academic.oup.com
A large fraction of the smallest transiting planet candidates discovered by the Kepler and
CoRoT space missions cannot be confirmed by a dynamical measurement of the mass …
CoRoT space missions cannot be confirmed by a dynamical measurement of the mass …
Bayesian inference of multimessenger astrophysical data: Methods and applications to gravitational waves
We present bajes, a parallel and lightweight framework for Bayesian inference of
multimessenger transients. bajes is a python modular package with minimal dependencies …
multimessenger transients. bajes is a python modular package with minimal dependencies …
Comprehensive benchmarking of Markov chain Monte Carlo methods for dynamical systems
B Ballnus, S Hug, K Hatz, L Görlitz, J Hasenauer… - BMC systems …, 2017 - Springer
Background In quantitative biology, mathematical models are used to describe and analyze
biological processes. The parameters of these models are usually unknown and need to be …
biological processes. The parameters of these models are usually unknown and need to be …