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#' Graphical diagnostics for class 'sensiSamp'
#'
#' \code{plot_samp_phylm} Plot results from \code{samp_phylm} and
#' \code{influ_phyloglm}
#' @param x output from \code{samp_phylm}
#' @param graphs choose which graph should be printed on the output ("all", 1,2,3 or 4)
#' @param param choose which model parameter should be ploted ("intercept" or "estimate")
#' @param ... further arguments to methods
#' @importFrom ggplot2 scale_x_continuous scale_colour_manual geom_hline
#' geom_bar scale_fill_manual scale_y_continuous geom_boxplot geom_line
#' @author Gustavo Paterno
#' @seealso \code{\link[ggplot2]{ggplot}}, \code{\link[sensiPhy]{samp_phylm}}
#' \code{\link[sensiPhy]{samp_phyglm}}
#' @details For 'x' from samp_phylm or samp_phyglm:
#'
#' \strong{Graph 1:} Estimated slopes or intercepts for each simulation across
#' percentages of species removed. Colours represent percentage
#' of change in comparison with the full model (blue = lower than 5, orange =
#' between 5 and 10 and red = higher than 10).
#' The red horizontal line represents the original slope or
#' intercept from the full model (with all species).
#'
#' \strong{Graph 2:} The proportion of estimated slopes and intercepts in each category
#' across the percentage of species removed.
#'
#' \strong{Graph 3:} Estimated phylogenetic model parameter for each simulation across
#' the percentage of species removed.
#'
#' \strong{Graph 4:} The percentage of significant slopes or intercepts across the
#' percentage of species removed.
#'
#' @note If model = "BM", only plots 1, 2 and 4 are printed. Plot 3, phylogenetic
#' model parameter is not available for model = "BM"
#' @export
sensi_plot.sensiSamp <- function(x, graphs = "all", param = "estimate", ...)
{
# x <- samp
# nulling variables:
estimate <- n.percent <- estimate.class <- intercept <- model <- intercept.class <- NULL
optpar <- perc.sign.estimate <- percent_sp_removed <- perc.sign.intercept <- NULL
result <- x$sensi.estimates
sig.tab <- x$sign.analysis
# classes of slope.perc:
result$estimate.class <- "class"
### Within 5%:
if (length(result[result$estimate.perc <= 5 ,]$estimate.class) >= 1){
result[result$estimate.perc <= 5,]$estimate.class <- "within 5%"
}
### Higher than 5%
if (length(result[result$estimate.perc > 5
& result$estimate.perc <= 10 ,]$estimate.class) >= 1){
result[result$estimate.perc > 5
& result$estimate.perc <= 10 ,]$estimate.class <- "higher than 5%"
}
### Higher than 10%
if (length(result[result$estimate.perc > 10,]$estimate.class) >= 1){
result[result$estimate.perc > 10,]$estimate.class <- "higher than 10%"
}
result$estimate.class <- as.factor(result$estimate.class)
estimate.0 <- as.numeric(x$full.model.estimates$coef[2])
estimate.5 <- .05*estimate.0
estimate.10 <- .1*estimate.0
# classes of intercept.perc:
result$intercept.class <- "class"
### Within 5%:
if (length(result[result$intercept.perc <= 5 ,]$intercept.class) >= 1){
result[result$intercept.perc <= 5,]$intercept.class <- "within 5%"
}
### Higher than 5%
if (length(result[result$intercept.perc > 5
& result$intercept.perc <= 10 ,]$intercept.class) >= 1){
result[result$intercept.perc > 5
& result$intercept.perc <= 10 ,]$intercept.class <- "higher than 5%"
}
### Higher than 10%
if (length(result[result$intercept.perc > 10,]$intercept.class) >= 1){
result[result$intercept.perc > 10,]$intercept.class <- "higher than 10%"
}
result$intercept.class <- as.factor(result$intercept.class)
intercept.0 <- as.numeric(x$full.model.estimates$coef[1])
intercept.5 <- .05*intercept.0
intercept.10 <- .1*intercept.0
# reverting the order of the levels
result$estimate.class =
with(result, factor(estimate.class,
levels = rev(levels(result$estimate.class))))
result$intercept.class =
with(result, factor(intercept.class,
levels = rev(levels(result$intercept.class))))
## Organizing colours: slope
if(length(levels(result$estimate.class)) == 3){
colS = c("skyblue","orange","red2")
}
if(length(levels(result$estimate.class)) == 2){
colS = c("skyblue","orange")
}
if(length(levels(result$estimate.class)) == 1){
colS = c("skyblue")
}
## Organizing colours: intercept
if(length(levels(result$intercept.class)) == 3){
colI = c("skyblue","orange","red2")
}
if(length(levels(result$intercept.class)) == 2){
colI = c("skyblue","orange")
}
if(length(levels(result$intercept.class)) == 1){
colI = c("skyblue")
}
### Graphs--------------------------------------------------------------
### Estimated slopes across n.percent:
s1 <- ggplot2::ggplot(result,aes(y=estimate,x=n.percent,
colour=estimate.class),
environment = parent.frame())+
geom_point(size=4,position = "jitter",alpha=.5)+
scale_x_continuous(breaks=result$n.percent)+
ylab("Estimates")+
xlab("% of Species Removed ")+
scale_colour_manual(values=colS)+
geom_hline(yintercept=estimate.0,linetype=1,color="red",
size=1, alpha = .6)+
geom_hline(yintercept=estimate.0+estimate.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=estimate.0-estimate.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=estimate.0+estimate.10,linetype=2,
alpha=.6)+
geom_hline(yintercept=estimate.0-estimate.10,linetype=2,
alpha=.6)+
theme( legend.position = "none",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title=element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))
### Estimated intercept across n.percent
i1<- ggplot2::ggplot(result,aes(y=intercept,x=n.percent,
colour=intercept.class),
environment = parent.frame())+
geom_point(size=4,position = "jitter",alpha=.5)+
scale_x_continuous(breaks=result$n.percent)+
ylab("Intercepts")+
xlab("% of Species Removed ")+
scale_colour_manual(values=colI)+
geom_hline(yintercept=intercept.0,linetype=1,color="red",
size=1,alpha=.6)+
geom_hline(yintercept=intercept.0+intercept.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=intercept.0-intercept.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=intercept.0+intercept.10,linetype=2,
alpha=.6)+
geom_hline(yintercept=intercept.0-intercept.10,linetype=2,
alpha=.6)+
theme( legend.position = "none",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title=element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))
### Proportion of change.classes across n.percent
n.perc.times <- as.numeric(table(result$n.percent))
estimate.perc <- with(result,aggregate(data=result,estimate ~ estimate.class*n.percent,FUN=length))
a <- colSums(table(estimate.perc$estimate.class,estimate.perc$n.percent))
estimate.perc$estimate <- (estimate.perc$estimate/rep(n.perc.times,
times=a))*100
intercept.perc <- with(result,aggregate(data=result,intercept ~ intercept.class*n.percent,FUN=length))
b <- colSums(table(intercept.perc$intercept.class,intercept.perc$n.percent))
intercept.perc$intercept <- (intercept.perc$intercept/rep(n.perc.times,
times=b))*100
### Graph: Slope
s2 <- ggplot2::ggplot(estimate.perc,
aes(y=estimate,x=n.percent,
fill=factor(estimate.class)),
environment = parent.frame())+
geom_bar(stat="identity",alpha=.5)+
scale_fill_manual(values=colS,name="Change in beta")+
scale_y_continuous(breaks=seq(0,100,10))+
scale_x_continuous(breaks=result$n.percent)+
theme( legend.position = "top",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title = element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab("% of Estimates")
### Graph: Intercept
i2 <- ggplot2::ggplot(intercept.perc,
aes(y=intercept,x=n.percent,
fill=factor(intercept.class)),
environment = parent.frame())+
geom_bar(stat="identity",alpha=.5)+
scale_fill_manual(values=colI,name="Change in beta")+
scale_y_continuous(breaks=seq(0,100,10))+
scale_x_continuous(breaks=result$n.percent)+
theme( legend.position = "top",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title = element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab("% of Intercepts")
### Optpar acros % removed species:
opt <- ggplot2::ggplot(result,aes(y=optpar,x=n.percent,group=as.factor(n.percent)))+
geom_point()+
geom_boxplot(fill="red",alpha=.5)+
scale_x_continuous(breaks=result$n.percent)+
theme(axis.title=element_text(size=12),
axis.text = element_text(size=12),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab("Phylogenetic model parameter")
## Significance Analysis : p.value of slope
s4 <-ggplot2::ggplot(sig.tab,
aes(y=perc.sign.estimate*100,x=percent_sp_removed),
environment = parent.frame())+
scale_y_continuous(limits=c(0,100),breaks=seq(0,100,10))+
scale_x_continuous(breaks=result$n.percent)+
xlab("% Species removed")+
geom_point(size=5,colour="red")+
geom_line(colour="red")+
ylab("% of significant estimates")+
theme(axis.text=element_text(size=12),
axis.title=element_text(size=12),
panel.background = element_rect(fill="white",
colour="black"))
i4 <-ggplot2::ggplot(sig.tab,
aes(y=perc.sign.intercept*100,x=percent_sp_removed),
environment = parent.frame())+
scale_y_continuous(limits=c(0,100),breaks=seq(0,100,10))+
scale_x_continuous(breaks=result$n.percent)+
xlab("% Species removed")+
geom_point(size=5,colour="red")+
geom_line(colour="red")+
ylab("% of significant intercepts")+
theme(axis.text=element_text(size=12),
axis.title=element_text(size=12),
panel.background = element_rect(fill="white",
colour="black"))
which_plot(param = param, graphs = graphs,
s1 = s1, s2 = s2, s4 = s4, opt = opt,
i1 = i1, i2 = i2, i4 = i4, model = x$model)
}
#####
#' Graphical diagnostics for class 'sensiSamp.TraitEvol'
#'
#' \code{sensi_plot.sensiSamp.TraitEvol} Plot results from \code{samp_continuous} and
#' \code{samp_discrete}
#' @param x output from \code{samp_continuous} or \code{samp_continuous}
#' @param graphs choose which graph should be printed on the output ("all", 1,2,3 or 4)
#' @param ... further arguments to methods
#' @importFrom ggplot2 scale_x_continuous scale_colour_manual geom_hline
#' geom_bar scale_fill_manual scale_y_continuous geom_boxplot geom_line
#' @author Gustavo Paterno & Gijsbert Werner
#' @seealso \code{\link[ggplot2]{ggplot}}, \code{\link[sensiPhy]{samp_continuous}}
#' \code{\link[sensiPhy]{samp_discrete}}
#' @details For 'x' from samp_continuous or samp_discrete:
#'
#' \strong{Graph 1:} Estimated q12 (discrete) or sigsq (discrete) for each simulation across
#' percentages of species removed. Colours represent percentage
#' of change in comparison with the full model (blue = lower than 5, orange =
#' between 5 and 10 and red = higher than 10).The red horizontal line represents
#' the original value from the full model (with all species).
#'
#' \strong{Graph 2:} The proportion of estimated q12 (discrete) or sigsq (discrete) in each category
#' across the percentage of species removed.
#'
#' \strong{Graph 3:} Estimated q21 for each simulation across the percentage of species removed
#' (only for \code{samp_discrete}).
#'
#' \strong{Graph 4:} The percentage of significant q21 across the
#' percentage of species removed (only for \code{samp_discrete}).
#'
#' @export
#' @export
sensi_plot.sensiSamp.TraitEvol <- function(x, graphs = "all", ...){
### Nulling variables
sigsq <- q12 <- q21 <- NULL
if(as.character(x$call[[1]])=="samp_continuous"){ #Check what type of TraitEvolution is evaluated
### Nulling variables:
estimate.sigsq <- n.percent <- perc.sign <- percent_sp_removed <- NULL
result.sigsq <- x$sensi.estimates
# classes of perc:
result.sigsq$class <- "class"
### Within 5%:
if (length(result.sigsq[result.sigsq$sigsq.perc <= 5 ,]$class) >= 1){
result.sigsq[result.sigsq$sigsq.perc <= 5,]$class <- "within 5%"
}
### Higher than 5%
if (length(result.sigsq[result.sigsq$sigsq.perc> 5
& result.sigsq$sigsq.perc <= 10 ,]$class) >= 1){
result.sigsq[result.sigsq$sigsq.perc > 5
& result.sigsq$sigsq.perc <= 10 ,]$class <- "higher than 5%"
}
### Higher than 10%
if (length(result.sigsq[result.sigsq$sigsq.perc > 10,]$class) >= 1){
result.sigsq[result.sigsq$sigsq.perc > 10,]$class <- "higher than 10%"
}
result.sigsq$class <- as.factor(result.sigsq$class)
e.0 <- as.numeric(x$full.model.estimates$sigsq)
e.5 <- .05*e.0
e.10 <- .1*e.0
# reverting the order of the levels
result.sigsq$class =
with(result.sigsq, factor(class,
levels = rev(levels(result.sigsq$class))))
## Organizing colours
if(length(levels(result.sigsq$class)) == 3){
colS.sigsq = c("skyblue","orange","red2")
}
if(length(levels(result.sigsq$class)) == 2){
colS.sigsq = c("skyblue","orange")
}
if(length(levels(result.sigsq$class)) == 1){
colS.sigsq = c("skyblue")
}
### Graphs--------------------------------------------------------------
### Estimated across n.percent:
s1 <- ggplot2::ggplot(result.sigsq,aes(y=sigsq,x=n.percent,
colour=class),
environment = parent.frame())+
geom_point(size=4,position = "jitter",alpha=.5)+
scale_x_continuous(breaks=result.sigsq$n.percent)+
ylab("Estimated sigsq")+
xlab("% of Species Removed ")+
scale_colour_manual(values=colS.sigsq)+
geom_hline(yintercept=e.0,linetype=1,color="red",
size=1, alpha = .6)+
geom_hline(yintercept=e.0+e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0+e.10,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.10,linetype=2,
alpha=.6)+
theme( legend.position = "none",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title=element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))
### Graph2
### Proportion of change.classes across n.percent
n.perc.times <- as.numeric(table(result.sigsq$n.percent))
perc <- with(result.sigsq,aggregate(data=result.sigsq,sigsq ~ class*n.percent,FUN=length))
a <- colSums(table(perc$class,perc$n.percent))
perc$sigsq <- (perc$sigsq/rep(n.perc.times,
times=a))*100
s2 <- ggplot2::ggplot(perc,
aes(y=sigsq,x=n.percent,
fill=factor(class)),
environment = parent.frame())+
geom_bar(stat="identity",alpha=.5)+
scale_fill_manual(values=colS.sigsq,name="Change in sigsq")+
scale_y_continuous(breaks=seq(0,100,10))+
scale_x_continuous(breaks=result.sigsq$n.percent)+
theme( legend.position = "top",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title = element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab(paste("% of estimated sigsq change"))
### Export two graphs:
if (graphs == 1)
suppressMessages(return(s1))
if (graphs == 2)
suppressMessages(return(s2))
if (graphs == "all")
suppressMessages(return(multiplot(s1,s2, cols = 2)))
}
##When a samp_discrete object has been called
if(as.character(x$call[[1]])=="samp_discrete"){ #Check what type of TraitEvolution is evaluated
### Nulling variables:
estimate.q12 <- n.percent <- perc.sign <- percent_sp_removed <- NULL
result.q12 <- x$sensi.estimates
# classes of perc:
result.q12$class <- "class"
### Within 5%:
if (length(result.q12[result.q12$q12.perc <= 5 ,]$class) >= 1){
result.q12[result.q12$q12.perc <= 5,]$class <- "within 5%"
}
### Higher than 5%
if (length(result.q12[result.q12$q12.perc> 5
& result.q12$q12.perc <= 10 ,]$class) >= 1){
result.q12[result.q12$q12.perc > 5
& result.q12$q12.perc <= 10 ,]$class <- "higher than 5%"
}
### Higher than 10%
if (length(result.q12[result.q12$q12.perc > 10,]$class) >= 1){
result.q12[result.q12$q12.perc > 10,]$class <- "higher than 10%"
}
result.q12$class <- as.factor(result.q12$class)
e.0 <- as.numeric(x$full.model.estimates$q12)
e.5 <- .05*e.0
e.10 <- .1*e.0
# reverting the order of the levels
result.q12$class =
with(result.q12, factor(class,
levels = rev(levels(result.q12$class))))
## Organizing colours
if(length(levels(result.q12$class)) == 3){
colS.q12 = c("skyblue","orange","red2")
}
if(length(levels(result.q12$class)) == 2){
colS.q12 = c("skyblue","orange")
}
if(length(levels(result.q12$class)) == 1){
colS.q12 = c("skyblue")
}
### Graphs--------------------------------------------------------------
### Estimated across n.percent:
s1 <- ggplot2::ggplot(result.q12,aes(y=q12,x=n.percent,
colour=class),
environment = parent.frame())+
geom_point(size=4,position = "jitter",alpha=.5)+
scale_x_continuous(breaks=result.q12$n.percent)+
ylab("Estimated q12")+
xlab("% of Species Removed ")+
scale_colour_manual(values=colS.q12)+
geom_hline(yintercept=e.0,linetype=1,color="red",
size=1, alpha = .6)+
geom_hline(yintercept=e.0+e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0+e.10,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.10,linetype=2,
alpha=.6)+
theme( legend.position = "none",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title=element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))
### Graph2
### Proportion of change.classes across n.percent
n.perc.times <- as.numeric(table(result.q12$n.percent))
perc <- with(result.q12,aggregate(data=result.q12,q12 ~ class*n.percent,FUN=length))
a <- colSums(table(perc$class,perc$n.percent))
perc$q12 <- (perc$q12/rep(n.perc.times,
times=a))*100
s2 <- ggplot2::ggplot(perc,
aes(y=q12,x=n.percent,
fill=factor(class)),
environment = parent.frame())+
geom_bar(stat="identity",alpha=.5)+
scale_fill_manual(values=colS.q12,name="Change in q12")+
scale_y_continuous(breaks=seq(0,100,10))+
scale_x_continuous(breaks=result.q12$n.percent)+
theme( legend.position = "top",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title = element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab(paste("% of estimated q12 change"))
####Redo the exact same thing for the q21
### Nulling variables:
estimate.q21 <- n.percent <- perc.sign <- percent_sp_removed <- NULL
result.q21 <- x$sensi.estimates
# classes of perc:
result.q21$class <- "class"
### Within 5%:
if (length(result.q21[result.q21$q21.perc <= 5 ,]$class) >= 1){
result.q21[result.q21$q21.perc <= 5,]$class <- "within 5%"
}
### Higher than 5%
if (length(result.q21[result.q21$q21.perc> 5
& result.q21$q21.perc <= 10 ,]$class) >= 1){
result.q21[result.q21$q21.perc > 5
& result.q21$q21.perc <= 10 ,]$class <- "higher than 5%"
}
### Higher than 10%
if (length(result.q21[result.q21$q21.perc > 10,]$class) >= 1){
result.q21[result.q21$q21.perc > 10,]$class <- "higher than 10%"
}
result.q21$class <- as.factor(result.q21$class)
e.0 <- as.numeric(x$full.model.estimates$q21)
e.5 <- .05*e.0
e.10 <- .1*e.0
# reverting the order of the levels
result.q21$class =
with(result.q21, factor(class,
levels = rev(levels(result.q21$class))))
## Organizing colours
if(length(levels(result.q21$class)) == 3){
colS.q21 = c("skyblue","orange","red2")
}
if(length(levels(result.q21$class)) == 2){
colS.q21 = c("skyblue","orange")
}
if(length(levels(result.q21$class)) == 1){
colS.q21 = c("skyblue")
}
### Graphs--------------------------------------------------------------
### Estimated across n.percent:
s3 <- ggplot2::ggplot(result.q21,aes(y=q21,x=n.percent,
colour=class),
environment = parent.frame())+
geom_point(size=4,position = "jitter",alpha=.5)+
scale_x_continuous(breaks=result.q21$n.percent)+
ylab("Estimated q21")+
xlab("% of Species Removed ")+
scale_colour_manual(values=colS.q21)+
geom_hline(yintercept=e.0,linetype=1,color="red",
size=1, alpha = .6)+
geom_hline(yintercept=e.0+e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.5,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0+e.10,linetype=2,
alpha=.6)+
geom_hline(yintercept=e.0-e.10,linetype=2,
alpha=.6)+
theme( legend.position = "none",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title=element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))
### Graph2
### Proportion of change.classes across n.percent
n.perc.times <- as.numeric(table(result.q21$n.percent))
perc <- with(result.q21,aggregate(data=result.q21,q21 ~ class*n.percent,FUN=length))
a <- colSums(table(perc$class,perc$n.percent))
perc$q21 <- (perc$q21/rep(n.perc.times,
times=a))*100
s4 <- ggplot2::ggplot(perc,
aes(y=q21,x=n.percent,
fill=factor(class)),
environment = parent.frame())+
geom_bar(stat="identity",alpha=.5)+
scale_fill_manual(values=colS.q21,name="Change in q21")+
scale_y_continuous(breaks=seq(0,100,10))+
scale_x_continuous(breaks=result.q21$n.percent)+
theme( legend.position = "top",
legend.direction = "horizontal",
legend.text=element_text(size=12),
legend.title = element_text(size=12),
axis.text=element_text(size=12),
axis.title=element_text(size=12),
legend.key.width=unit(.5,"line"),
legend.key.size = unit(.5,"cm"),
panel.background = element_rect(fill="white",
colour="black"))+
xlab("% of Species Removed")+
ylab(paste("% of estimated q21 change"))
### Export four graphs:
if (graphs == 1)
suppressMessages(return(s1))
if (graphs == 2)
suppressMessages(return(s2))
if (graphs == 3)
suppressMessages(return(s3))
if (graphs == 4)
suppressMessages(return(s4))
if (graphs == "all"){
if(x$optpar !="BM"){
suppressMessages(return(multiplot(s1,s3,s2,s4, cols = 2)))
} else
suppressMessages(return(multiplot(s1,s2, cols = 2)))
}
}
}
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