Background: Computational models in biology are characterized by a large degree of uncertainty. This uncertainty can be analyzed with Bayesian statistics, however, the sampling algorithms that are frequently used for calculating Bayesian statistical estimates are computationally demanding, and each algorithm has unique advantages and disadvantages. It is typically unclear, before starting an analysis, which algorithm will perform well on a given computational model.Results: We present BCM, a toolkit for the Bayesian analysis of Computational Models using samplers. It provides efficient, multithreaded implementations of eleven algorithms for sampling from posterior probability distributions and for calculating marginal likelihoods. BCM inclu...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
In this dissertation we apply computational Bayesian methods to three distinct problems. In the firs...
The past decades have seen enormous im-provements in computational inference based on sta-tistical m...
BackgroundComputational models in biology are characterized by a large degree of uncertainty. This u...
Contains fulltext : 161382.pdf (publisher's version ) (Open Access)8 p
MOTIVATION: Model selection is a fundamental part of the scientific process in systems biology. Give...
Motivation: Model selection is a fundamental part of the scientific process in systems biology. Give...
Background The estimation of demographic parameters from genetic data often requires the computat...
This is a chapter for the book "Bayesian Methods and Expert Elicitation" edited by Klaus Bocker, 23 ...
Inferring parameters for models of biological processes is a current challenge in systems biology, a...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
PublishedJournal ArticleResearch Support, Non-U.S. Gov'tMOTIVATION: Model selection and parameter in...
constitutes a class of computational methods rooted in Bayesian statistics. In all model-based stati...
Motivation: Model selection and parameter inference are complex problems of long-standing interest i...
© 2015, The Author(s). Recent decades have seen enormous improvements in computational inference for...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
In this dissertation we apply computational Bayesian methods to three distinct problems. In the firs...
The past decades have seen enormous im-provements in computational inference based on sta-tistical m...
BackgroundComputational models in biology are characterized by a large degree of uncertainty. This u...
Contains fulltext : 161382.pdf (publisher's version ) (Open Access)8 p
MOTIVATION: Model selection is a fundamental part of the scientific process in systems biology. Give...
Motivation: Model selection is a fundamental part of the scientific process in systems biology. Give...
Background The estimation of demographic parameters from genetic data often requires the computat...
This is a chapter for the book "Bayesian Methods and Expert Elicitation" edited by Klaus Bocker, 23 ...
Inferring parameters for models of biological processes is a current challenge in systems biology, a...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
PublishedJournal ArticleResearch Support, Non-U.S. Gov'tMOTIVATION: Model selection and parameter in...
constitutes a class of computational methods rooted in Bayesian statistics. In all model-based stati...
Motivation: Model selection and parameter inference are complex problems of long-standing interest i...
© 2015, The Author(s). Recent decades have seen enormous improvements in computational inference for...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
In this dissertation we apply computational Bayesian methods to three distinct problems. In the firs...
The past decades have seen enormous im-provements in computational inference based on sta-tistical m...