## Not run:
# library("phenology")
# RMU.names.AtlanticW <- data.frame(mean=c("Yalimapo.French.Guiana",
# "Galibi.Suriname",
# "Irakumpapy.French.Guiana"),
# se=c("se_Yalimapo.French.Guiana",
# "se_Galibi.Suriname",
# "se_Irakumpapy.French.Guiana"))
# data.AtlanticW <- data.frame(Year=c(1990:2000),
# Yalimapo.French.Guiana=c(2076, 2765, 2890, 2678, NA,
# 6542, 5678, 1243, NA, 1566, 1566),
# se_Yalimapo.French.Guiana=c(123.2, 27.7, 62.5, 126, NA,
# 230, 129, 167, NA, 145, 20),
# Galibi.Suriname=c(276, 275, 290, NA, 267,
# 542, 678, NA, 243, 156, 123),
# se_Galibi.Suriname=c(22.3, 34.2, 23.2, NA, 23.2,
# 4.3, 2.3, NA, 10.3, 10.1, 8.9),
# Irakumpapy.French.Guiana=c(1076, 1765, 1390, 1678, NA,
# 3542, 2678, 243, NA, 566, 566),
# se_Irakumpapy.French.Guiana=c(23.2, 29.7, 22.5, 226, NA,
# 130, 29, 67, NA, 15, 20))
#
# cst <- fitRMU(RMU.data=data.AtlanticW, RMU.names=RMU.names.AtlanticW,
# colname.year="Year", model.trend="Constant",
# model.SD="Zero")
# pMCMC <- fitRMU_MHmcmc_p(result=cst, accept=TRUE)
# fitRMU_MCMC <- fitRMU_MHmcmc(result = cst, n.iter = 10000,
# parametersMCMC = pMCMC, n.chains = 1, n.adapt = 0, thin = 1, trace = FALSE)
# ## End(Not run)
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