Question

You are a senior data analyst at Snap Inc and you use the following data in...

You are a senior data analyst at Snap Inc and you use the following data in order to predict the number of social media posts uploaded by a user by using the number of connections they have on the platform:

n = 50
SST = 70
SSR = 39.2213

c.How useful do you think this regression model is for predicting the number of posts uploaded by the variation of the number of connections?

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Answer #1

TOPIC:Coefficient of determination.

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