📚 node [[linear_regression|linear regression]]
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garden/KGBicheno/Artificial Intelligence/Introduction to AI/Week 3 - Introduction/Definitions/Linear_Regression.md by @KGBicheno
linear regression
Go back to the [[AI Glossary]]
Using the raw output y^1
of a linear model as the actual prediction in a regression model. The goal of a regression problem is to make a real-valued prediction. For example, if the raw output y^1
of a linear model is 8.37, then the prediction is 8.37.
Contrast linear regression with logistic regression. Also, contrast regression with classification.
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