%0 Journal Article %A Timothy C. Wallstrom %A Tanmoy Bhattacharya %A Jon F. Wilkins %T Quantifying uncertainty in the inference of generalized coalescents %D 2017 %R 10.1101/150342 %J bioRxiv %P 150342 %X We develop inference methods for generalized coalescent models, such as the Λ- and Ξ-coalescents, which have recently been proposed for populations with broad offspring distributions, repeated selective sweeps, or strong selection. These are all populations that may not be adequately described by the usual Kingman coalescent. A roadblock to the application of such models has been the lack of effective tools for inferring an appropriate model, which stems from difficulties in evaluating the associated likelihoods. We overcome these difficulties by introducing estimators that are both computationally tractable and statistically efficient. We use these estimators to obtain point estimates and confidence intervals for the parameters of the coalescent models, and p-values for the hypothesis that the population is described by the Kingman coalescent. Our approach is based on the theory of unbiased estimating equations, which is more general than composite likelihood and may be applicable in other areas of statistical genetics. Our main focus is on inference from linked site-frequency spectra using parameterized families of Λ-coalescents. We show that useful inferences may be made from non-singleton data alone if singletons are suspect due to sequencing or data-cleaning errors, although the data requirements are greatly increased. We apply our method to mitochondrial sequence data from Gadus morhua, the Atlantic cod. %U https://www.biorxiv.org/content/biorxiv/early/2017/06/16/150342.full.pdf