I am looking for a python plot on the lines of http://www.r-bloggers.com/visually-weighted-watercolor-plots-new-variants-please-vote/

  • What have you got yourself so far? Have you browsed the matplotlib gallery: matplotlib.org/gallery.html? – user707650 Sep 17 '12 at 19:09
  • i47.tinypic.com/72vked.png The bold line is median, the dotted lines are 10 and 90 percentile. Problems: The lines are not smooth. The graph is not as beautiful as the R-plot – planargraph Sep 21 '12 at 21:33
  • Ok, I see what you mean. Looks like R interpolates quite a bit, because there aren't too many data points in the linked graphs too warrant such high resolution "watercolor" background. I don't think matplotlib has anything like this (looks like it's pretty new in R as well), but perhaps you can put your code here for generating your plot and people can comment on that, to improve the resolution or make it a smoothed fille contour plot. – user707650 Sep 25 '12 at 12:00

cut-paste from my larger piece of code. It does not give what I want. I am posting per Evert's suggestion

    fig = plt.figure(figsize=(8, 8))
    plt.plot(xlist, ylist, 'b,')
    plt.plot([0.0,0.8],[0.0,0.8],'y-')
    data2d=zip(xlist,ylist)
    bins = np.linspace(0.0, 0.2, 21)
    medianlist=binpercentile(data2d,bins)
    c10list=binpercentile(data2d,bins,0.1)
    c90list=binpercentile(data2d,bins,0.9)    
    centerbins=[(x+y)/2.0 for x,y in zip(bins[:-1],bins[1:])]
    centerbins.insert(0,0)
    medianlist.insert(0,0)
    c10list.insert(0,0)
    c90list.insert(0,0)
    plt.plot(centerbins,c10list,'r--')
    plt.plot(centerbins,c90list,'r--')
    plt.plot(centerbins,medianlist,'r-')
    imagefilename='%s.%s'%('.'.join(infile.split('.')[0:-1]),'diffmed.pdf')
    plt.savefig(imagefilename)

This gives the equivalent of the standard deviation bands:

# generate random variables
x,y = generate_random()

# bin the values and determine the envelopes
df = bin_by(x, y, nbins=25, bins = None)

###
# Plot 1
###
# determine the colors
cols = ['#EE7550', '#F19463', '#F6B176']

with plt.style.context('fivethirtyeight'): 
    # plot the 3rd stdv
    plt.fill_between(df.x, df['5th'], df['95th'], alpha=0.7,color = cols[2])
    plt.fill_between(df.x, df['10th'], df['90th'], alpha=0.7,color = cols[1])
    plt.fill_between(df.x, df['25th'], df['75th'], alpha=0.7,color = cols[0])
    # plt the line
    plt.plot(df.x, df['median'], color = '1', alpha = 0.7, linewidth = 1)
    # plot the points
    plt.scatter(x, y, facecolors='white', edgecolors='0', s = 5, lw = 0.7)

plt.savefig('fig1.png', facecolor='white', edgecolor='none')
plt.show()


def bin_by(x, y, nbins=30, bins = None):
    """
    Divide the x axis into sections and return groups of y based on its x value
    """
    if bins is None:
        bins = np.linspace(x.min(), x.max(), nbins)

    bin_space = (bins[-1] - bins[0])/(len(bins)-1)/2

    indicies = np.digitize(x, bins + bin_space)

watercolor plot

Bit of a discussion and link to my github from my blog

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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