Supervised Learning
In this kind of learning, we assume that the training examples are labeled.
There are two kinds of Supervised Learning problems:
Classification
Regression
Classification
It refers to the task of assigning a label to a given example i.e. to categorize it into one of multiply categories. Ex. spam/not spam, family car/not family car
Here, the output is discrete.
Regression
It refers to the task of predicting a real-valued output. Ex. prediction house value, temperature
Here, the output is continuous.
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