4

I want to build a histogram for the normal distribution and update the plot when the mean, standard deviation and sample size are changed; analogue to the post here.

However, I struggle with the update function. In the example above

l, = plot(f(S, 1.0, 1.0))

and

def update(val):
    l.set_ydata(f(S, sGmax.val, sKm.val))

are used but how would this have to be changed when a histogram is plotted? So, I am not sure how to use the return values from plt.hist, pass them properly to update and then update the plot accordingly. Could anyone explain this?

This is my code:

import numpy as np
import matplotlib.pyplot as plt
from matplotlib.widgets import Slider


def update(val):
    mv = smean.val
    stdv = sstd.val
    n_sample = round(sn.val)
    # what needs to go here? how to replace xxx
    xxx(np.random.normal(mv, stdv, n_sample))
    plt.draw()


ax = plt.subplot(111)
plt.subplots_adjust(left=0.25, bottom=0.25)

m0 = -2.5
std0 = 1
n0 = 1000
n_bins0 = 20

nd = np.random.normal(m0, std0, n0)

# what needs to be returned here?
plt.hist(nd, normed=True, bins=n_bins0, alpha=0.5)

axcolor = 'lightgray'
axmean = plt.axes([0.25, 0.01, 0.65, 0.03], axisbg=axcolor)
axstd = plt.axes([0.25, 0.06, 0.65, 0.03], axisbg=axcolor)
axssize = plt.axes([0.25, 0.11, 0.65, 0.03], axisbg=axcolor)

smean = Slider(axmean, 'Mean', -5, 5, valinit=m0)
sstd = Slider(axstd, 'Std', 0.1, 10.0, valinit=std0)
sn = Slider(axssize, 'n_sample', 10, 10000, valinit=n0)

smean.on_changed(update)
sstd.on_changed(update)
sn.on_changed(update)

plt.show()
3

One option is to clear the axis and just replot the histogram. The other option, more in the spirit of l.set_value approach of the matplotlib slider example would be to generate the histogram data with numpy, use a bar chart and update this using bar.set_height and bar.set_x with a rescale on the axis. The complete example is then:

import numpy as np
import matplotlib.pyplot as plt
from matplotlib.widgets import Slider


def update(val):
    mv = smean.val
    stdv = sstd.val
    n_sample = round(sn.val)
    nd = np.random.normal(loc=mv, scale=stdv, size=n_sample)
    #Update barchart height and x values
    hist, bins = np.histogram(nd, normed=True, bins=n_bins0)
    [bar.set_height(hist[i]) for i, bar in enumerate(b)]
    [bar.set_x(bins[i]) for i, bar in enumerate(b)]
    ax.relim()
    ax.autoscale_view()
    plt.draw()


def reset(event):
    mv.reset()
    stdv.reset()
    n_sample.reset()


ax = plt.subplot(111)
plt.subplots_adjust(left=0.25, bottom=0.25)

m0 = -2.5
std0 = 1
n0 = 1000
n_bins0 = 20

nd = np.random.normal(m0, std0, n0)
hist, bins = np.histogram(nd, normed=True, bins=n_bins0)
b = plt.bar(bins[:-1], hist, width=.3)

axcolor = 'lightgray'
axmean = plt.axes([0.25, 0.01, 0.65, 0.03], axisbg=axcolor)
axstd = plt.axes([0.25, 0.06, 0.65, 0.03], axisbg=axcolor)
axssize = plt.axes([0.25, 0.11, 0.65, 0.03], axisbg=axcolor)

smean = Slider(axmean, 'Mean', -5, 5, valinit=m0)
sstd = Slider(axstd, 'Std', 0.1, 10.0, valinit=std0)
sn = Slider(axssize, 'n_sample', 10, 10000, valinit=n0)

smean.on_changed(update)
sstd.on_changed(update)
sn.on_changed(update)

plt.show()

UPDATE:

Version using clear axis (ax.cla()) and redraw ax.hist(...),

import numpy as np
import matplotlib.pyplot as plt
from matplotlib.widgets import Slider


def update(val):
    mv = smean.val
    stdv = sstd.val
    n_sample = round(sn.val)
    nd = np.random.normal(loc=mv, scale=stdv, size=n_sample)
    #Redraw histogram
    ax.cla()
    ax.hist(nd, normed=True, bins=n_bins0, alpha=0.5)
    plt.draw()


def reset(event):
    mv.reset()
    stdv.reset()
    n_sample.reset()


ax = plt.subplot(111)
plt.subplots_adjust(left=0.25, bottom=0.25)

m0 = -2.5
std0 = 1
n0 = 1000
n_bins0 = 20

nd = np.random.normal(m0, std0, n0)
plt.hist(nd, normed=True, bins=n_bins0, alpha=0.5)

axcolor = 'lightgray'
axmean = plt.axes([0.25, 0.01, 0.65, 0.03], axisbg=axcolor)
axstd = plt.axes([0.25, 0.06, 0.65, 0.03], axisbg=axcolor)
axssize = plt.axes([0.25, 0.11, 0.65, 0.03], axisbg=axcolor)

smean = Slider(axmean, 'Mean', -5, 5, valinit=m0)
sstd = Slider(axstd, 'Std', 0.1, 10.0, valinit=std0)
sn = Slider(axssize, 'n_sample', 10, 10000, valinit=n0)

smean.on_changed(update)
sstd.on_changed(update)
sn.on_changed(update)

plt.show()
  • Since you basically (need to) redraw everything in this solution (bars, ticks, ticklabels) there is no gain in prefering this over the ax.clear() ax.hist() solution. So you might want to give the code for the (easier) solution as well. – ImportanceOfBeingErnest Mar 13 '17 at 13:36
  • That seems to get the job done, thanks (upvoted)! If you could update the code according to @ImportanceOfBeingErnest suggestion, I would highly appreciate that. – Cleb Mar 13 '17 at 13:52
  • I've added the example, redrawing may end up being slower if you're redrawing lots of bars, although I'm not sure if blitting works for a slider... – Ed Smith Mar 13 '17 at 14:10
  • That's fantastic, thanks. Unfortunately, I cannot upvote twice :) I wait for a few more hours if something better shows up and if not accept it. – Cleb Mar 13 '17 at 14:57

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