5

suppose i have the following:

x1 = np.random.randn(50)
y1 = np.random.randn(50) * 100
x2 = np.random.randn(50)
y2 = np.random.randn(50) * 100

df1 = pd.DataFrame({'x1':x1, 'y1': y1})
df2 = pd.DataFrame({'x2':x2, 'y2': y2})

sns.lmplot('x1', 'y1', df1, fit_reg=True, ci = None)
sns.lmplot('x2', 'y2', df2, fit_reg=True, ci = None)

this will create 2 separate plots. how can i add the data from df2 onto the SAME graph? all the seaborn examples i have found online seem to focus on how you can create adjacent graphs (say, via the 'hue' and 'col_wrap' options). also, i prefer not to use the dataset examples where an additional column might be present as this does not have a natural meaning in the project i am working on.

if there is a mixture of matplotlib/seaborn functions that are required to achieve this, i would be grateful if someone could help illustrate. thanks!

6

You could use seaborn's FacetGrid class to get desired result. You would need to replace your plotting calls with these lines:

# sns.lmplot('x1', 'y1', df1, fit_reg=True, ci = None)
# sns.lmplot('x2', 'y2', df2, fit_reg=True, ci = None)
df = pd.concat([df1.rename(columns={'x1':'x','y1':'y'})
                .join(pd.Series(['df1']*len(df1), name='df')), 
                df2.rename(columns={'x2':'x','y2':'y'})
                .join(pd.Series(['df2']*len(df2), name='df'))],
               ignore_index=True)

pal = dict(df1="red", df2="blue")
g = sns.FacetGrid(df, hue='df', palette=pal, size=5);
g.map(plt.scatter, "x", "y", s=50, alpha=.7, linewidth=.5, edgecolor="white")
g.map(sns.regplot, "x", "y", ci=None, robust=1)
g.add_legend();

This will yield this plot:

enter image description here

Which is if I understand correctly is what you need.

Note that you will need to pay attention to .regplot parameters and may want to change the values I have put as an example.

  • may i ask why you have semicolons at the end of the last line of code and the one 3 above it? also, why was this down-voted? – laszlopanaflex Mar 16 '16 at 16:16
  • also, is there ANY documentation anywhere that explains the .map() method used in your suggestion? in general, the seaborn documentation leaves some room to be desired. in particular, i am wondering why you could not use the .map() approach you suggested but with the sns.lmpot instead of the plt.scatter one. i.e. something like: g.map(sns.lmplot, 'x', 'y', df, fit_reg=True, ci = None) i cannot seem to get this to work – laszlopanaflex Mar 17 '16 at 1:59
  • 1
    Difficult to say why it was down-voted - must be a typo ;-) Semicolon at the end of the line is suppress output of the command (I use ipython notebook` where it gets visible. Docs give some explanation on the .map() method. In essence it does just that maps plotting command with data. However it will work with 'low-level' plotting commands like regplot, and not lmlplot, which is actually calling regplot behind the scene. – Primer Mar 17 '16 at 18:00
  • thanks! one last clarification - if i wanted the red and blue dots above to be empty circles, how could I do that? i have tried adding facecolor = 'none' into first .map() function call but it does not seem to have an effect – laszlopanaflex Mar 22 '16 at 17:14
  • Normally plt.scatter would take parameters: c='none', edgecolor='r' to make non-filled markers. But seaborn is interfering the process and enforcing color to the markers, so I don't see an easy/straigtforward way to fix this, but to manipulate ax elements after seaborn has produced the plot, which is best to be addressed as part of a different question. – Primer Mar 22 '16 at 20:22

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