statsmodels.discrete.discrete_model.Probit.score_obs¶
method
-
Probit.
score_obs
(params)[source]¶ Probit model Jacobian for each observation
- Parameters
- paramsarray-like
The parameters of the model
- Returns
- jacarray-like
The derivative of the loglikelihood for each observation evaluated at params.
Notes
\[\frac{\partial\ln L_{i}}{\partial\beta}=\left[\frac{q_{i}\phi\left(q_{i}x_{i}^{\prime}\beta\right)}{\Phi\left(q_{i}x_{i}^{\prime}\beta\right)}\right]x_{i}\]for observations \(i=1,...,n\)
Where \(q=2y-1\). This simplification comes from the fact that the normal distribution is symmetric.