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I am analyzing some data in pandas and plotting correlations between two variables using sns.jointplot() function. The results for correlation between these two function looks like this: enter image description here

The value for pearsonr is 0.41 and p is 5e-18. What can i infer from these two values. Is there a good relationship between these two variables are not.

Also if I want to just display pearsonr on the plot, how should I change my code. Below is the code that I a using currently.

ax=sns.jointplot(df['Comfort'], df['Assurance'],data=df, kind="kde", color='r');
  • What do you mean by if I want to just display pearsonr on the plot, how should I change my code? – sentence May 18 at 9:28
  • By default pearsonr and p value are displayed, as you can see in the image. I don't want p-value to be displayed on the plot. – Shah5105 May 18 at 16:14
  • What is your seaborn's version? – sentence May 18 at 16:30
  • @sentence its 0.8.1 – Shah5105 May 18 at 20:04
  • your question about seaborn version made me chance seaborn version from 0.8.1 to 0.9.0 . Doing so make me get rid of pearsonr and p-value from the plot. Thanks @sentence for pointing in the right direction. But coming back to my first part of my initial question that what does pearsonr and p value of 0.41 and 5e-18 respectively infer about the correlation of my two variables. – Shah5105 May 18 at 20:36
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The value for pearsonr is 0.41 and p is 5e-18. What can i infer from these two values. Is there a good relationship between these two variables are not.

Roughly speaking:

  • The size of a correlation coefficient (0.41) suggests a low positive correlation.
  • p-value (5e-18) suggests that the correlation coefficient is statistically significant, being much less than 0.01 (0.01 ---> the risk of concluding that a correlation exists when, actually, no correlation exists is 1%).
  • please, remember that Pearson correlation coefficient only measures linear relationships. You can get Pearson correlation coefficient 0 for variables (datasets) with a strong nonlinear relationship. Moreover, you are assuming that your variables (datasets) are normally distributed.

Also if I want to just display pearsonr on the plot, how should I change my code.

seaborn 0.9.0 does not display that information. To add that information, you can compute the value using scipy.stats.pearsonr, then showing it as part of the title of your figure.

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