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I'm just starting with the scipy stack. I'm using the iris dataset, in a CSV version. I can load it just fine using:


and plot it:

pylab.scatter(iris.field(0), iris.field(1))

Now I'd like to also plot the classes, which are stored in iris.field(4):

chararray(['setosa', ...], dtype='|S10')

What is an elegant way to map these strings to colors for plotting? scatter(iris.field(0), iris.field(1), c=iris.field(4)) does not work (from the docs it expect float values or a colormap). I havn't found an elegant way of automatically generating a color map.

cols = {"versicolor": "blue", "virginica": "green", "setosa": "red"}
scatter(iris.field(0), iris.field(1), c=map(lambda x:cols[x], iris.field(4)))

does approximately what I want, but I don't like the manual color specification too much.

Edit: slightly more elegant version of the last line:

scatter(iris.field(0), iris.field(1), c=map(cols.get, iris.field(4)))
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2 Answers 2

up vote 3 down vote accepted

For whatever it's worth, you'd typically do something more like this in that case:

import numpy as np
import matplotlib.pyplot as plt

iris = np.recfromcsv('iris.csv')
names = set(iris['class'])

x,y = iris['sepal_length'],  iris['sepal_width']

for name in names:
    cond = iris['class'] == name
    plt.plot(x[cond], y[cond], linestyle='none', marker='o', label=name)


enter image description here

There's nothing wrong with what @Yann suggested, but scatter is better suited for continuous data.

It's easier to rely on the axes color cycle and just call plot multiple times (you also get separate artists instead of a collection, which is a good thing for discrete data such as this).

By default, the color cycle for an axes is: blue, green, red, cyan, magenta, yellow, black.

After 7 calls to plot, it will cycle back over those colors, so if you have more items, you'll need to set it manually (or just specify the color in each call to plot using an interpolated colorbar similar to what @Yann suggested above).

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Thank you. I saw the option of multi-plotting, but I wasn't yet aware of the elegant condition trick you used here (+1). I have to disagree about scatter. To my understanding it is exactly meant for this kind of plots, where the points are independent and not connected (which you work around by setting linestyle="none") –  Anony-Mousse Mar 17 '12 at 16:16
The plot vs scatter point is an unfortunate and common misconception. Use plot to plot points, and only use scatter to plot things when you need to continuously vary the size and/or color of the markers based on a 3rd or 4th variable. scatter returns a collection that is much harder to manage. plot really is intended to plot disconnected points, the default just happens to be a line. If you want a more concise call, plt.plot(x, y, 'o') will do the same thing as plt.plot(x, y, linestyle='none', marker='o'). –  Joe Kington Mar 17 '12 at 16:21
Thank you. I use np.unique(iris.field(4)) (since my CSV doesn't have a colum label row). But other than that I'm now essentially using your code. I really like the condition trick. –  Anony-Mousse Mar 19 '12 at 8:38

Whether a way is elegant or not is somewhat subjective. I personally find your approaches better then the 'matplotlib' way. From matplotlib's color module:

Colormapping typically involves two steps: a data array is first mapped onto the range 0-1 using an instance of Normalize or of a subclass; then this number in the 0-1 range is mapped to a color using an instance of a subclass of Colormap.

What I take from this in regards to your problem is that you need a subclass of Normalize that takes strings and maps them to 0-1.

Here's an example that inherits from Normalize to make a subclass TextNorm, which is used to convert a string to a value from 0 to 1. This normalization is used to get a corresponding color.

import matplotlib.pyplot as plt
from matplotlib.colors import Normalize
import numpy as np
from numpy import ma

class TextNorm(Normalize):
    '''Map a list of text values to the float range 0-1'''

    def __init__(self, textvals, clip=False):
        self.clip = clip
        # if you want, clean text here, for duplicate, sorting, etc
        ltextvals = set(textvals)
        self.N = len(ltextvals)
        self.textmap = dict(
            [(text, float(i)/(self.N-1)) for i, text in enumerate(ltextvals)])
        self.vmin = 0
        self.vmax = 1

    def __call__(self, x, clip=None):
        #Normally this would have a lot more to do with masking
        ret = ma.asarray([self.textmap.get(xkey, -1) for xkey in x])
        return ret

    def inverse(self, value):
        return ValueError("TextNorm is not invertible")

iris = np.recfromcsv("iris.csv")
norm = TextNorm(iris.field(4))

plt.scatter(iris.field(0), iris.field(1), c=norm(iris.field(4)), cmap='RdYlGn')

This produces:

enter image description here

I chose the 'RdYlGn' color map so that it was easy to distinguish between the three types of points. I did not include the clip feature as part of __call__, though it's possible with a few modifications.

Traditionally you can test the normalization of the scatter method using the norm keyword, but scatter tests the c keyword to see if it stores strings, and if it does, then it assumes you are passing in colors as their string values, e.g. 'Red', 'Blue', etc. So calling plt.scatter(iris.field(0), iris.field(1), c=iris.field(4), cmap='RdYlGn', norm=norm) fails. Instead I just use the TextNorm and "operate" on the iris.field(4) to return an array of values ranging from 0 to 1.

Note that a value of -1 is returned for a sting not in the list textvals. This is where masking would come in handy.

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I'm working on an example.... –  Yann Mar 16 '12 at 16:55
Since I just did the same in R (trying to make an overview of the tools), I was wondering whether there is an equivalent of unclass in scipy. –  Anony-Mousse Mar 16 '12 at 17:27
@Anony-Mousse I'm not sure what you're asking in your comment. How would you use unclass and what would you use it on. –  Yann Mar 16 '12 at 18:20
Well, unclass essentially enumerates the distinct labels. So each row is one of 1..3 for the iris dataset (R indexes start at 1). And then you can use this to index into a list of distinct colors. Kind of a cls = list(numpy.unique(iris.field(4))); cols=["red", "green", "blue"] and scatter(..., c=map(lamda x:cols[cls.index(x)], iris.field(4))) –  Anony-Mousse Mar 16 '12 at 20:10
As seen from the other answer, a similar effect can be achieved by filtering the data set by each label and plotting them separately with plot instead of scatter. –  Anony-Mousse Mar 20 '12 at 7:07

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