Pearsonr and p value

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: 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

• 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.
`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.