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Saharon Rosset | Stochastic process models for mutations, their estimation from data, and their uses | CGSI 2017

Date:July 14, 2017Posted By:Duke Hong
Saharon Rosset | Stochastic process models for mutations, their estimation from data, and their uses | CGSI 2017

07/14/2017 @ 09:15-10:00
Tutorial by Saharon Rosset
Stochastic process models for mutations, their estimation from data, and their uses
1. Huelsenbeck, J.P. and Crandall, K.A., 1997. Phylogeny estimation and hypothesis testing using maximum likelihood. Annual Review of Ecology and Systematics, 28(1), pp.437-466.
2. Tamura, K. and Nei, M., 1993. Estimation of the number of nucleotide substitutions in the control region of mitochondrial DNA in humans and chimpanzees. Molecular biology and evolution, 10(3), pp.512-526.
3. Nielsen, R., 2005. Statistical methods in molecular evolution (Vol. 6). New York: Springer.
4. Whittaker, J.C., Harbord, R.M., Boxall, N., Mackay, I., Dawson, G. and Sibly, R.M., 2003. Likelihood-based estimation of microsatellite mutation rates. Genetics, 164(2), pp.781-787.

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