The problem that we are going to solve here is that given a set of features that describe a house in Boston, our machine learning model must predict the house price. To train our machine learning model with boston housing data, we will be using scikit-learn’s boston dataset. In this dataset, each row describes a boston town or suburb. There are 506 rows and 13 attributes (features) with a target column (price)
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The problem that we are going to solve here is that given a set of features that describe a house in Boston, our machine learning model must predict the house price. To train our machine learning model with boston housing data, we will be using scikit-learn’s boston dataset. In this dataset, each row describes a boston town or suburb. There are 506 rows and 13 attributes (features) with a target column (price)