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Lecture-6: Multiple liner Regression with Python.
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In this video, we are going to discuss Multiple linear regression on the "50_Startups" dataset by using python to predict "profit" (using sklearn linear_model). "Profit" is a dependent variable which is depends on 4 independent variables namely "R&D Spend", "Administration", "Marketing Spend" and "State".
Find the 50_Startups dataset link.
Find the 50_Startups dataset link.
Lecture-6: Multiple liner Regression with Python.
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