Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a dataset of three columns and n number of rows. column 1 contains name, column 2 value1, and column 3 value2 (rank2).

I want to plot a scatter plot with the outlier values displaying names.

The R commands I am using in are:

data<-read.table("scatterplot_data", header=T)
outliers<-data[which(2^(data[,2]-data[,3]) >= 4 | 2^(data[,2]-data[,3]) <=0.25),]

text(outliers[,2], outliers[,3],labels=outliers[,1],cex=0.50)


and I get a figure like this: enter image description here

What I want is the labels on the lower half should be of one colour and the labels in upper half should be of another colour say green and red respectively.

Any suggestions, or adjustment in the commands?

share|improve this question
Hi Angelo, could you please explain the formula for identifying outliers that you are using here? – Daniel Mar 21 '13 at 15:13
up vote 5 down vote accepted

You already have a logical test that works to your satisfaction. Just use it in the color spec to text:

     text(outliers[,2], outliers[,3],labels=outliers[,1],cex=0.50, 
         col=c("blue", "green")[ 
                which(2^(data[,2]-data[,3]) >= 4 ,  2^(data[,2]-data[,3]) <=0.25)] )

It's untested of course because you offered no test case, but my reasoning is that the which() function should return 1 for the differences >= 4, and 2 for the ones <= 0.25, and integer(0) for all the others and that this should give you the proper alignment of color choices with the 'outliers' vector.

share|improve this answer

Using python, matplotlib (pylab) to plot, and scipy, numpy to fit data. The trick with numpy is to create a index or mask to filter out the results that you want.

EDIT: Want to selectively color the top and bottom outliers? It's a simple combination of both masks that we created:

import scipy as sci
import numpy as np
import pylab as plt

# Create some data
N = 1000
X = np.random.normal(5,1,size=N)
Y = X + np.random.normal(0,5.5,size=N)/np.random.normal(5,.1)
NAMES = ["foo"]*1000 # Customize names here

# Fit a polynomial

# Find all points above the line
idx = (X*a + b) < Y

# Scatter according to that index
plt.scatter(X[idx],Y[idx], color='r')
plt.scatter(X[~idx],Y[~idx], color='g')

# Find top 10 outliers
err = ((X*a+b) - Y) ** 2
idx_L = np.argsort(err)[-10:]
for i in idx_L:
    plt.text(X[i], Y[i], NAMES[i])

# Color the outliers purple or black
top = idx_L[idx[idx_L]]
bot = idx_L[~idx[idx_L]]

plt.scatter(X[top],Y[top], color='purple')
plt.scatter(X[bot],Y[bot], color='black')

XF = np.linspace(0,10,1000)
plt.plot(XF, XF*a + b, 'k--') 

enter image description here

share|improve this answer
Good answer, but I need to colour only the points in the outliers. :) – Angelo May 16 '12 at 14:46
@Angelo I've modified the code so that the top and bottom outliers are colored differently. I hope this fills in the gaps, let me know if there is something you don't understand. – Hooked May 16 '12 at 17:46

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.