The following code generate the parameter table for coral analysis
#install.packages("kable")
library(knitr)
load(url("https://tonyjhwueng.info/ououcir/coralparams.RData"))
kable(round(coralmodelBFreorder,3))
| ououcir | ououbm | oubmcir | oubmbm | |
|---|---|---|---|---|
| ououcir | 1.000 | 3.589 | 6.119 | 7.610 |
| ououbm | 0.279 | 1.000 | 1.705 | 2.121 |
| oubmcir | 0.163 | 0.587 | 1.000 | 1.244 |
| oubmbm | 0.131 | 0.472 | 0.804 | 1.000 |
kable(round(table.out,3))
| alpha.y | alpha.x | alpha.tau | theta.x | theta.tau | sigma.x | tau | sigma.tau | b0 | b1 | b2 | |
|---|---|---|---|---|---|---|---|---|---|---|---|
| OUBMBM | 3.022 | NA | NA | NA | NA | 0.904 | 3.490 | NA | 0.890 | 1.147 | 0.179 |
| OUOUBM | 2.677 | 4.430 | NA | -0.150 | NA | 1.241 | 4.609 | NA | 0.836 | 1.216 | 0.230 |
| OUBMCIR | 3.585 | NA | 3.097 | NA | 1.577 | 0.951 | NA | 1.823 | 0.899 | 1.153 | 0.150 |
| OUOUCIR | 2.801 | 4.073 | 2.950 | -0.121 | 1.639 | 1.242 | NA | 1.884 | 0.825 | 1.165 | 0.253 |
| GLS | NA | NA | NA | NA | NA | NA | NA | NA | 0.900 | 1.206 | 0.201 |
The raw code can be accessed in the following (it run for a while, the size of RData is big–500 MB)
rm(list=ls())
library(xtable)
library(abc)
load(url("https://tonyjhwueng.info/ououcir/EmpiricalMaincodeV2/treetraitV2/sanchez.Lasker_coral/sanchez.Lasker_coral_log_thickness.RData"))
summary(modsel.mnlog)
coralogthick<-summary(modsel.mnlog)
modelorder<-c("ououcir","ououbm","oubmcir","oubmbm")
coralmodelBFreorder<-coralogthick$mnlogistic$BayesF[,modelorder]
coralmodelBFreorder<-coralmodelBFreorder[modelorder,]
coralmodelBFreorder
xtable(coralmodelBFreorder,digits=3)
post.oubmbm.mean <- round(apply(post.oubmbm,2,mean),digits = 4)
post.ououbm.mean <- round(apply(post.ououbm,2,mean),digits = 4)
post.oubmcir.mean <- round(apply(post.oubmcir,2,mean),digits = 4)
post.ououcir.mean <- round(apply(post.ououcir,2,mean),digits = 4)
table.params <- data.frame(matrix(NA,4,8))
rownames(table.params) <- c("OUBMBM","OUOUBM","OUBMCIR","OUOUCIR")
colnames(table.params)<- c("alpha.y","sigmasq.x","tau","alpha.x","theta.x","alpha.tau","theta.tau","sigmasq.tau")
table.params["OUBMBM",c("alpha.y","sigmasq.x","tau")]<-post.oubmbm.mean[c("alpha.y","sigmasq.x","tau")]
table.params["OUOUBM",c("alpha.y","alpha.x","theta.x", "sigmasq.x", "tau")]<-post.ououbm.mean[c("alpha.y","alpha.x","theta.x", "sigmasq.x", "tau")]
table.params["OUBMCIR",c("alpha.y", "sigmasq.x","alpha.tau","theta.tau", "sigmasq.tau")]<-post.oubmcir.mean[c("alpha.y", "sigmasq.x","alpha.tau","theta.tau", "sigmasq.tau")]
table.params["OUOUCIR",c("alpha.y","alpha.x","theta.x","sigmasq.x","alpha.tau","theta.tau", "sigmasq.tau")]<-post.ououcir.mean[c("alpha.y","alpha.x","theta.x","sigmasq.x","alpha.tau","theta.tau", "sigmasq.tau")]
table.params[,"sigmasq.x"]<-sqrt(table.params[,"sigmasq.x"])
table.params[,"sigmasq.tau"]<-sqrt(table.params[,"sigmasq.tau"])
colnames(table.params)<- c("alpha.y","sigma.x","tau","alpha.x","theta.x","alpha.tau","theta.tau","sigma.tau")
table.params<-table.params[, c("alpha.y","alpha.x", "alpha.tau", "theta.x","theta.tau", "sigma.x","tau","sigma.tau")]
xtable(table.params,digits=4)
table.b<- matrix(NA,4,3)
rownames(table.b) <- c("OUBMBM","OUOUBM","OUBMCIR","OUOUCIR")
colnames(table.b)<-c("b0","b1","b2")
table.b[1,]<-post.oubmbm.mean[c(4:6)]
table.b[2,]<-post.ououbm.mean[c(6:8)]
table.b[3,]<-post.oubmcir.mean[c(6:8)]
table.b[4,]<-post.ououcir.mean[c(8:10)]
table.b
ols<-lm(resptrait~predtrait1+predtrait2)
ols$coefficients
OLS<-rep(NA,11)
OLS[9:11]<-ols$coefficients
table.out<-rbind(cbind(table.params,table.b),OLS)
xtable(table.out,digits=3)