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Is there a standard, effective way of producing a QQ-Plot using Plotly?

I would be interested in testing the normal/log-normal fit of my data.

1 Answer 1

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Alright, here is how I think the state of affairs is now [2020 edit]:

Say we have 500 random draws from a distribution which we think might be the lognormal distribution:

X_lognorm = np.random.lognormal(mean=0.0, sigma=1.7, size=500)

Plotting

Imports

import numpy as np
from scipy import stats
import plotly.graph_objects as go

Run plotly

qq = stats.probplot(X_lognorm, dist='lognorm', sparams=(1))
x = np.array([qq[0][0][0], qq[0][0][-1]])

fig = go.Figure()
fig.add_scatter(x=qq[0][0], y=qq[0][1], mode='markers')
fig.add_scatter(x=x, y=qq[1][1] + qq[1][0]*x, mode='lines')
fig.layout.update(showlegend=False)
fig.show()

enter image description here

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    I applied this to a plotly dash script but I had to make the figure as a go.Figure object. That is, instead of fig = dict(data=data, layout=layout) I had fig = go.Figure(data, layout=layout) .
    – David_G
    Commented Jun 23, 2020 at 2:18
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    Things have changed since 2018 :) I have updated the code (not the plot though). It's much simpler now.
    – Sandu Ursu
    Commented Jun 23, 2020 at 22:21
  • Hey, the docs say "probplot generates a probability plot, which should not be confused with a Q-Q or a P-P plot. Statsmodels has more extensive functionality of this type, see statsmodels.api.ProbPlot" which might be worth bearing in mind if you explicitly want a qq plot (docs = docs.scipy.org/doc/scipy/reference/generated/…) Commented Nov 13, 2021 at 7:31

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