Literature DB >> 16857650

Searching for convergence in phylogenetic Markov chain Monte Carlo.

Robert G Beiko1, Jonathan M Keith, Timothy J Harlow, Mark A Ragan.   

Abstract

Markov chain Monte Carlo (MCMC) is a methodology that is gaining widespread use in the phylogenetics community and is central to phylogenetic software packages such as MrBayes. An important issue for users of MCMC methods is how to select appropriate values for adjustable parameters such as the length of the Markov chain or chains, the sampling density, the proposal mechanism, and, if Metropolis-coupled MCMC is being used, the number of heated chains and their temperatures. Although some parameter settings have been examined in detail in the literature, others are frequently chosen with more regard to computational time or personal experience with other data sets. Such choices may lead to inadequate sampling of tree space or an inefficient use of computational resources. We performed a detailed study of convergence and mixing for 70 randomly selected, putatively orthologous protein sets with different sizes and taxonomic compositions. Replicated runs from multiple random starting points permit a more rigorous assessment of convergence, and we developed two novel statistics, delta and epsilon, for this purpose. Although likelihood values invariably stabilized quickly, adequate sampling of the posterior distribution of tree topologies took considerably longer. Our results suggest that multimodality is common for data sets with 30 or more taxa and that this results in slow convergence and mixing. However, we also found that the pragmatic approach of combining data from several short, replicated runs into a "metachain" to estimate bipartition posterior probabilities provided good approximations, and that such estimates were no worse in approximating a reference posterior distribution than those obtained using a single long run of the same length as the metachain. Precision appears to be best when heated Markov chains have low temperatures, whereas chains with high temperatures appear to sample trees with high posterior probabilities only rarely.

Mesh:

Year:  2006        PMID: 16857650     DOI: 10.1080/10635150600812544

Source DB:  PubMed          Journal:  Syst Biol        ISSN: 1063-5157            Impact factor:   15.683


  16 in total

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4.  Evolution of general transcription factors.

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5.  Evolution of the parasitic wasp subfamily Rogadinae (Braconidae): phylogeny and evolution of lepidopteran host ranges and mummy characteristics.

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9.  Data mining approach identifies research priorities and data requirements for resolving the red algal tree of life.

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10.  Reductive evolution of the mitochondrial processing peptidases of the unicellular parasites trichomonas vaginalis and giardia intestinalis.

Authors:  Ondrej Smíd; Anna Matusková; Simon R Harris; Tomás Kucera; Marián Novotný; Lenka Horváthová; Ivan Hrdý; Eva Kutejová; Robert P Hirt; T Martin Embley; Jirí Janata; Jan Tachezy
Journal:  PLoS Pathog       Date:  2008-12-19       Impact factor: 6.823

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