NEWS for package moult moult 2.3.0 - Added bootstrap confidence intervals (confint.moult function), estimates of covariance matrix and standard errors. - Added dfbeta.moult function to check influence of individual observations. - Updated predict.moult function. - Components for likelihood function are calculated once and components to return are selected depending on type. - Fixed format error in help files. moult 2.2.1 - Fixed error in as.vector(data.frame). moult 2.2.0 - Fixed error in the calculation of SE(SD in start of moult). Thanks to Les Underhill and Tanya Scott for picking this up. - Moult scores in half steps can be converted to proportion of feather mass grown, e.g. "5 5 5 5 4.5 2 0 0 0" (ms2pfmg). Changes in version 2.1.0 - moult_alternative provides alternative parameterization, with halfway date instead of start of moult. Still in testing phase. At later stage will be incorporated into moult function. - Addition of prec parameter to define measurement precision of moult index (proportion of feather mass grown). - Bug fix in type 3 likelihood, now more likely to complete optimization. - New vignette for individual primary analysis. Changes in version 2.0.0 - Likelihood is calculated differently: not estimated by density but by integrating between y - 0.02 and y + 0.02, where y is the moult score, or PFMG. - 'moult' function now allows fixed parameters. Changes in version 1.4 -- Fixed error in predict.moult. Changes in version 1.3 -- Bug fix: moult function did not work when added covariates for standard deviation in start date. Now works, but still only for categorical covariates. -- Improved row and column names for covariance matrix of parameter estimates. Changes in version 1.2 -- Added reference to article in Journal of Statistical Software. Changes in version 1.1 -- The 'weaver' data set now contains only adult birds, and only observations from years 1988-2005. -- 'formula' in function 'moult' has changed to 'moult.index ~ days | x1 + x2 | y1 + y2 | z1', where the x's are covariates for duration, the y's are covariates for mean start date of moult and the z can be a single categorical covariate for the standard deviation in start of moult. -- The above change depends on package 'Formula'. -- 'moult' now has a 'data' argument, similar to 'lm' or 'glm'. -- 'predict.moult' can now be used for predicting mean start dates at different covariate settings.