Title of article :
A graphical approach to relatedness inference
Author/Authors :
Anthony Almudevar، نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی سال 2007
Abstract :
The estimation of relatedness structure in natural populations using molecular marker data has become an important tool in population biology, resulting in a variety of estimation procedures for specific sampling scenarios. In this article a general approach is proposed, in which the detailed relationship structure, typically a pedigree graph or partition, is considered to be the object of inference. This makes available tools used in complex model selection theory which have demonstrated effectiveness. An important advantage of this approach is that it permits a fully Bayesian approach to the problem, providing a principled and accessible way to measure statistical error. The approach is demonstrated by applying the minimum description length principle. This technique is used in model selection to provide a rational way of comparing models of varying complexity. We show how the resulting score may be interpreted and applied as a Bayesian posterior density.
Keywords :
Pedigree reconstruction , Bayesian inference , Graphical models , minimum description length
Journal title :
Theoretical Population Biology
Journal title :
Theoretical Population Biology