Using Linear Regression for Predictive Modeling in R

@machinelearnbot 

Predictive models are extremely useful for forecasting future outcomes and estimating metrics that are impractical to measure. For example, data scientists could use predictive models to forecast crop yields based on rainfall and temperature, or to determine whether patients with certain traits are more likely to react badly to a new medication. Before we talk about linear regression specifically, let's remind ourselves what a typical data science workflow might look like. A lot of the time, we'll start with a question we want to answer, and do something like the following: Linear regression is one of the simplest and most common supervised machine learning algorithms that data scientists use for predictive modeling. In this post, we'll use linear regression to build a model that predicts cherry tree volume from metrics that are much easier for folks who study trees to measure.

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