I am trying to figure out how to properly use scikit-learn's SGDRegressor model.
in order to fit to a dataset I need to call a `function fit(X,y)`

where **x** is a numpy array of shape (n_samples,n_features), and y is a 1d numpy array of length n_samples. I am trying to figure out what **y** is supposed to represent.

for instance my data appears as so:

my features are years starting in 1972, and the values are a corresponding value for that year. I am trying to predict the values for years in the future such as 2008, or 2012. I am assuming that each row in my data should represent a row/sample in X where each element in that is the value for a year. in that case what would y be? I was thinking that y should just be the years, but then y would be of length n_features instead of n_samples. if y is to be of length n_samples then what could y possibly be that is of length 5(number of samples in the data shown below). I am thinking I must transform this data some way.