Many problems we find in science, engineering, and business are of the following form. We have a variable and we want to model/predict a variable . Importantly, these variables are paired like . In the most simple scenario, known as simple linear regression, both and are uni-dimensional continuous random variables. By continuous, we mean a variable represented using real numbers (or floats, if you wish), and using NumPy, you will represent the variables or as one-dimensional arrays. Because this is a very common model, the variables get proper names. We call the variables the dependent, predicted, or outcome variables, and the variables the independent, predictor, or input variables. When is a matrix (we have different variables), we have what is known as multiple linear regression. In this and the following chapter, we will explore these and other...
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