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I have many data.frame and each one contains many columns. Say my first data.frame col1=a, col2=b,col3=c

I want to plot x-axis=b/a and y-axis=a. I managed to plot them (scatter plot)

plot (dataframe$b/dataframe$a, dataframe$a, xlim=...,ylim=..) 

Now, I need to get the pattern for the scatter data ( I don't want linear regression as both of x and y are changing). I did use the command loess(..) and I was able to show the pattern.

lo_smooth<-loess(x,y, f=number, iter=number)

How I can add the confidence intervals (CI) to the graph? My goal is to check if two data.frame are within each other CI or not.

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Have a look at the package ggplot2, specifically stat_smooth. I would think something like ggplot(dataframe, aes(x= b/a, y= a)) + geom_point() + stat_smooth() would do the trick –  mnel Jul 23 '12 at 1:06
    
I have used the following command and it worked. However, how do I join for example 3 ggplots in one plot. ggplot(dppm, aes(x= b/a, y= a)) + geom_point() + stat_smooth(method="loess",se=TRUE,level=0.90)+coord_cartesian(ylim = c(0, 100)) –  SimpleNEasy Jul 24 '12 at 0:55
    
I've added an answer that addresses this. –  mnel Jul 24 '12 at 1:26

1 Answer 1

up vote 0 down vote accepted

A solution that uses your attempt (Well done!) plus your clarification

Some dummy data

dppm <- data.frame(a = runif(100, 1, 100), b = runif(100,1, 100))
dppm_2 <- data.frame(a = runif(100, 1, 75), b = runif(100,1,75))
dppm_3 <- data.frame(a = runif(100, 1,50), b = runif(100,1,50))

Using reshape2 to melt these data into a single data frame library(reshape2)

data_list <- list(dppm1 = dppm, dppm2 = dppm_2, dppm3 = dppm_3)
all_data <- melt(data_list, id.vars = c('a','b'))

This single data frame has a column L1 that is the identifier (the name of the list component in data_list.

head(all_data)
          a        b    L1
## 1 83.202896 36.94026 dppm1
## 2 42.618987 11.23863 dppm1
## 3 29.505029 11.91742 dppm1
## 4 63.569487 59.07395 dppm1
## 5 94.499772 47.32779 dppm1
## 6  4.535389 64.11570 dppm1

We can then plot this combined data set and colour by this identifier. We also set the fill for the smooth to the same identifier so that the CIs will be coloured in the same way.

ggplot(all_data,aes(x = b/a, y = a, colour = L1)) + 
  geom_point() + 
  stat_smooth(method = "loess", se = TRUE,level = 0.90, aes(fill = L1))+
  coord_cartesian(ylim = c(0, 100))

enter image description here

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Thank you. It works perfect. However, I have noticed something strange in the stat_smooth(method = "loess",...). The smooth line is not actually fit correctly within the scattered data. For example the smooth-line for one of the dataframe scatter points, touch the zero, while the scatter data far above the axis. In other words, I feel the method="loess" is not performing well. Any suggestion??? –  SimpleNEasy Jul 31 '12 at 13:30

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