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Don't use deprecated np.random.random_integers. #13088
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Original file line number | Diff line number | Diff line change |
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@@ -82,9 +82,8 @@ | |
# properties of the original sample, and a boxplot is one visual tool | ||
# to make this assessment | ||
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numDists = 5 | ||
randomDists = ['Normal(1,1)', ' Lognormal(1,1)', 'Exp(1)', 'Gumbel(6,4)', | ||
'Triangular(2,9,11)'] | ||
random_dists = ['Normal(1,1)', ' Lognormal(1,1)', 'Exp(1)', 'Gumbel(6,4)', | ||
'Triangular(2,9,11)'] | ||
N = 500 | ||
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norm = np.random.normal(1, 1, N) | ||
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@@ -95,15 +94,14 @@ | |
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# Generate some random indices that we'll use to resample the original data | ||
# arrays. For code brevity, just use the same random indices for each array | ||
bootstrapIndices = np.random.random_integers(0, N - 1, N) | ||
normBoot = norm[bootstrapIndices] | ||
expoBoot = expo[bootstrapIndices] | ||
gumbBoot = gumb[bootstrapIndices] | ||
lognBoot = logn[bootstrapIndices] | ||
triaBoot = tria[bootstrapIndices] | ||
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data = [norm, normBoot, logn, lognBoot, expo, expoBoot, gumb, gumbBoot, | ||
tria, triaBoot] | ||
bootstrap_indices = np.random.randint(0, N, N) | ||
data = [ | ||
norm, norm[bootstrap_indices], | ||
logn, logn[bootstrap_indices], | ||
expo, expo[bootstrap_indices], | ||
gumb, gumb[bootstrap_indices], | ||
tria, tria[bootstrap_indices], | ||
] | ||
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fig, ax1 = plt.subplots(figsize=(10, 6)) | ||
fig.canvas.set_window_title('A Boxplot Example') | ||
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@@ -126,21 +124,19 @@ | |
ax1.set_ylabel('Value') | ||
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# Now fill the boxes with desired colors | ||
boxColors = ['darkkhaki', 'royalblue'] | ||
numBoxes = numDists*2 | ||
medians = list(range(numBoxes)) | ||
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||
for i in range(numBoxes): | ||
box_colors = ['darkkhaki', 'royalblue'] | ||
num_boxes = len(data) | ||
medians = np.empty(num_boxes) | ||
for i in range(num_boxes): | ||
box = bp['boxes'][i] | ||
boxX = [] | ||
boxY = [] | ||
for j in range(5): | ||
boxX.append(box.get_xdata()[j]) | ||
boxY.append(box.get_ydata()[j]) | ||
boxCoords = np.column_stack([boxX, boxY]) | ||
box_coords = np.column_stack([boxX, boxY]) | ||
# Alternate between Dark Khaki and Royal Blue | ||
k = i % 2 | ||
boxPolygon = Polygon(boxCoords, facecolor=boxColors[k]) | ||
ax1.add_patch(boxPolygon) | ||
ax1.add_patch(Polygon(box_coords, facecolor=box_colors[i % 2])) | ||
# Now draw the median lines back over what we just filled in | ||
med = bp['medians'][i] | ||
medianX = [] | ||
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@@ -149,39 +145,40 @@ | |
medianX.append(med.get_xdata()[j]) | ||
medianY.append(med.get_ydata()[j]) | ||
ax1.plot(medianX, medianY, 'k') | ||
medians[i] = medianY[0] | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. this line can be lifted out of the internal loop (and overwrites |
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medians[i] = medianY[0] | ||
# Finally, overplot the sample averages, with horizontal alignment | ||
# in the center of each box | ||
ax1.plot([np.average(med.get_xdata())], [np.average(data[i])], | ||
ax1.plot(np.average(med.get_xdata()), np.average(data[i]), | ||
color='w', marker='*', markeredgecolor='k') | ||
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# Set the axes ranges and axes labels | ||
ax1.set_xlim(0.5, numBoxes + 0.5) | ||
ax1.set_xlim(0.5, num_boxes + 0.5) | ||
top = 40 | ||
bottom = -5 | ||
ax1.set_ylim(bottom, top) | ||
ax1.set_xticklabels(np.repeat(randomDists, 2), | ||
ax1.set_xticklabels(np.repeat(random_dists, 2), | ||
rotation=45, fontsize=8) | ||
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# Due to the Y-axis scale being different across samples, it can be | ||
# hard to compare differences in medians across the samples. Add upper | ||
# X-axis tick labels with the sample medians to aid in comparison | ||
# (just use two decimal places of precision) | ||
pos = np.arange(numBoxes) + 1 | ||
upperLabels = [str(np.round(s, 2)) for s in medians] | ||
pos = np.arange(num_boxes) + 1 | ||
upper_labels = [str(np.round(s, 2)) for s in medians] | ||
weights = ['bold', 'semibold'] | ||
for tick, label in zip(range(numBoxes), ax1.get_xticklabels()): | ||
for tick, label in zip(range(num_boxes), ax1.get_xticklabels()): | ||
k = tick % 2 | ||
ax1.text(pos[tick], top - (top*0.05), upperLabels[tick], | ||
horizontalalignment='center', size='x-small', weight=weights[k], | ||
color=boxColors[k]) | ||
ax1.text(pos[tick], .95, upper_labels[tick], | ||
transform=ax1.get_xaxis_transform(), | ||
horizontalalignment='center', size='x-small', | ||
weight=weights[k], color=box_colors[k]) | ||
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# Finally, add a basic legend | ||
fig.text(0.80, 0.08, str(N) + ' Random Numbers', | ||
backgroundcolor=boxColors[0], color='black', weight='roman', | ||
fig.text(0.80, 0.08, f'{N} Random Numbers', | ||
backgroundcolor=box_colors[0], color='black', weight='roman', | ||
size='x-small') | ||
fig.text(0.80, 0.045, 'IID Bootstrap Resample', | ||
backgroundcolor=boxColors[1], | ||
backgroundcolor=box_colors[1], | ||
color='white', weight='roman', size='x-small') | ||
fig.text(0.80, 0.015, '*', color='white', backgroundcolor='silver', | ||
weight='roman', size='medium') | ||
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@@ -213,10 +210,10 @@ def fakeBootStrapper(n): | |
return med, CI | ||
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inc = 0.1 | ||
e1 = np.random.normal(0, 1, size=(500,)) | ||
e2 = np.random.normal(0, 1, size=(500,)) | ||
e3 = np.random.normal(0, 1 + inc, size=(500,)) | ||
e4 = np.random.normal(0, 1 + 2*inc, size=(500,)) | ||
e1 = np.random.normal(0, 1, size=500) | ||
e2 = np.random.normal(0, 1, size=500) | ||
e3 = np.random.normal(0, 1 + inc, size=500) | ||
e4 = np.random.normal(0, 1 + 2*inc, size=500) | ||
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treatments = [e1, e2, e3, e4] | ||
med1, CI1 = fakeBootStrapper(1) | ||
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the deprecated call