In our regular likelihood function we would have .
With Generalized Linear Models we have . This means that each observation has its own parameters (set of parameters).
For example, suppose we have a random variable which follows a Poisson distribution. Denote this random variable as with parameter .
Suppose we can approximate the rate for each observation with some relationship like for some associated with each .
Then, our likelihood function would be as follows