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Choosing summary statistics by least angle regression for approximate Bayesian computation
Authors:Muhammad Faisal  Andreas Futschik  Ijaz Hussain  Mitwali Abd-elMoemen
Institution:1. Faculty of Health Studies, University of Bradford, Bradford, UK;2. Bradford Institute for Health Research, Bradford Teaching Hospitals NHS Foundation Trust, Bradford, UK;3. Department of Statistics and Operations Research, University of Vienna, Vienna, Austria;4. Institute of Applied Statistics, JK University Linz, Linz, Austria;5. Department of Statistics, Quaid-i-Azam University, Islamabad, Pakistan;6. College of Law and Political Sciences, King Saud University, Riydah, Saudi Arabia
Abstract:Bayesian statistical inference relies on the posterior distribution. Depending on the model, the posterior can be more or less difficult to derive. In recent years, there has been a lot of interest in complex settings where the likelihood is analytically intractable. In such situations, approximate Bayesian computation (ABC) provides an attractive way of carrying out Bayesian inference. For obtaining reliable posterior estimates however, it is important to keep the approximation errors small in ABC. The choice of an appropriate set of summary statistics plays a crucial role in this effort. Here, we report the development of a new algorithm that is based on least angle regression for choosing summary statistics. In two population genetic examples, the performance of the new algorithm is better than a previously proposed approach that uses partial least squares.
Keywords:Likelihood-free methods  least angle regression  mutation  population genetics  recombination
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