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# ggplot2-line plotting with TIME series and multi-spline

This question's theme is simple but drives me crazy: 1. how to use `melt()` 2. how to deal with multi-lines in single one image?

Here is my raw data:

``````a   4.17125 41.33875    29.674375   8.551875    5.5
b   4.101875    29.49875    50.191875   13.780625   4.90375
c   3.1575  29.621875   78.411875   25.174375   7.8012
``````

Q1: I've learn from this post Plotting two variables as lines using ggplot2 to know how to draw the multi-lines for multi-variables, just like this:

The following codes can get the above plot. However, the x-axis is indeed time-series.

``````df <- read.delim("~/Desktop/df.b", header=F)
colnames(df)<-c("sample",0,15,30,60,120)
df2<-melt(df,id="sample")
ggplot(data = df2, aes(x=variable, y= value, group = sample, colour=sample)) + geom_line() + geom_point()
``````

I wish it could treat 0 15 30 60 120 as real number to show the time series, rather than name_characteristics. Even having tried this, I failed.

``````row.names(df)<-df\$sample
df<-df[,-1]
df<-as.matrix(df)
df2 <- data.frame(sample = factor(rep(row.names(df),each=5)), Time = factor(rep(c(0,15,30,60,120),3)),Values = c(df[1,],df[2,],df[3,]))
ggplot(data = df2, aes(x=Time, y= Values, group = sample, colour=sample))
+ geom_line()
+ geom_point()
``````

Loooooooooking forward to your help.

Q2: I've learnt that the following script can add the spline() function for single one line, what about I wish to apply spline() for all the three lines in single one image?

``````n <-10
d <- data.frame(x =1:n, y = rnorm(n))
ggplot(d,aes(x,y))+ geom_point()+geom_line(data=data.frame(spline(d, n=n*10)))
``````
-

## 1 Answer

Your `variable` column is a factor (you can verify by calling `str(df2)`). Just convert it back to numeric:

``````df2\$variable <- as.numeric(as.character(df2\$variable))
``````

For your other question, you might want to stick with using `geom_smooth` or `stat_smooth`, something like this:

``````p <- ggplot(data = df2, aes(x=variable, y= value, group = sample, colour=sample)) +
geom_line() +
geom_point()

library(splines)
p + geom_smooth(aes(group = sample),method = "lm",formula = y~bs(x),se = FALSE)
``````

which gives me something like this:

-
Great thanks for your help! I've tried `as.numeric(df2\$Time)` in my case to convert them into number, but it returns me `1 2 3 4 5 1 2 3 4 5 1 2 3 4 5` which really drives me crazy. Thanks again. – Puriney Sep 20 '12 at 1:51
@Puriney Note that that's not how I do the conversion in my answer. Factors look like character vectors but they are not! They are integer codes and a set of labels that go with the codes. Hence, `as.numeric` will simply return the integer codes. That's why I converted to character first. A more cryptic way to do it would be `as.numeric(levels(df2\$Time)[df2\$Time])`. – joran Sep 20 '12 at 2:07