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,')
    bins = np.linspace(0.0, 0.2, 21)
    centerbins=[(x+y)/2.0 for x,y in zip(bins[:-1],bins[1:])]

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')

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

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