log_likelihood

LinearModel.log_likelihood(data: DataFrame) ndarray

It computes the log likelihood of observations response_variable given a model 'mean' and 'variance'.

Parameters

data: pandas.DataFrame

Data to use for log likelihood computation. It cannot be empty. It must contain columns response_variable, 'mean' and 'variance'.

Returns

numpy.ndarray

Array of computed log likelihood. It has the same length of data. Each element is a log likelihood computation of each row of data.

Raises

TypeError

If data is not an instance of pandas.DataFrame.

ValueError

Notes

The log likelihood is computed as the log of the normal distribution probability density function:

\[l(y) = - \frac{1}{2} \log{2 \pi \sigma^2} - \frac{1}{2} \frac{\left(y - \mu \right)^2}{\sigma^2}\]

where \(\mu\) is the 'mean' column and \(\sigma^2\) is the 'variance' column.