adelie.state.gaussian_pin_cov#
- adelie.state.gaussian_pin_cov(*, A: MatrixCovBase32 | MatrixCovBase64, constraints: list[ConstraintBase32 | ConstraintBase64], groups: ndarray, alpha: float, penalty: ndarray, screen_set: ndarray, lmda_path: ndarray, rsq: float, screen_beta: ndarray, screen_grad: ndarray, screen_is_active: ndarray, active_set_size: int, active_set: ndarray, max_active_size: int | None = None, max_iters: int = 100000, tol: float = 1e-07, rdev_tol: float = 0.0001, newton_tol: float = 1e-12, newton_max_iters: int = 1000, n_threads: int = 1)[source]#
Creates a Gaussian, pin, covariance method state object.
Define the following quantities:
\(X_c\) as \(X\) if
intercept
isFalse
and otherwise the column-centered version.\(y_c\) as \(y - \eta^0\) if
intercept
isFalse
and otherwise the centered version.
- Parameters:
- AUnion[MatrixCovBase32, MatrixCovBase64]
Covariance matrix \(X_c^\top W X_c\). It is typically one of the matrices defined in
adelie.matrix
submodule.- constraints(G,) list[Union[ConstraintBase32, ConstraintBase64]]
List of constraints for each group.
constraints[i]
is the constraint object corresponding to groupi
. Ifconstraints[i]
isNone
, then thei
th group is unconstrained. IfNone
, every group is unconstrained.- groups(G,) ndarray
List of starting indices to each group where G is the number of groups.
groups[i]
is the starting index of thei
th group.- alphafloat
Elastic net parameter. It must be in the range \([0,1]\).
- penalty(G,) ndarray
Penalty factor for each group in the same order as
groups
. It must be a non-negative vector.- screen_set(s,) ndarray
List of indices into
groups
that correspond to the screen groups.screen_set[i]
isi
th screen group.screen_set
must contain at least the true (optimal) active groups when the regularization is given bylmda
.- lmda_path(L,) ndarray
The regularization path to solve for. It is recommended that the path is sorted in decreasing order.
- rsqfloat
The change in unnormalized \(R^2\) given by \(\|y_c-X_c\beta_{\mathrm{old}}\|_{W}^2 - \|y_c-X_c\beta_{\mathrm{curr}}\|_{W}^2\). Usually, \(\beta_{\mathrm{old}} = 0\) and \(\beta_{\mathrm{curr}}\) is given by
screen_beta
.- screen_beta(ws,) ndarray
Coefficient vector on the screen set.
screen_beta[b:b+p]
is the coefficient for thei
th screen group wherek = screen_set[i]
,b = screen_begins[i]
, andp = group_sizes[k]
. The values can be arbitrary but it is recommended to be close to the solution atlmda
.- screen_grad(ws,) ndarray
Gradient \(X_{c,k}^\top W (y_c-X_c\beta)\) on the screen groups \(k\) where \(\beta\) is given by
screen_beta
.screen_grad[b:b+p]
is the gradient for thei
th screen group wherek = screen_set[i]
,b = screen_begins[i]
, andp = group_sizes[k]
.- screen_is_active(s,) ndarray
Boolean vector that indicates whether each screen group in
groups
is active or not.screen_is_active[i]
isTrue
if and only ifscreen_set[i]
is active.- active_set_sizeint
Number of active groups.
active_set[i]
is only well-defined fori
in the range[0, active_set_size)
.- active_set(G,) ndarray
List of indices into
screen_set
that correspond to active groups.screen_set[active_set[i]]
is thei
th active group. An active group is one with non-zero coefficient block, that is, for everyi
th active group,screen_beta[b:b+p] == 0
wherej = active_set[i]
,k = screen_set[j]
,b = screen_begins[j]
, andp = group_sizes[k]
.- max_active_sizeint, optional
Maximum number of active groups allowed. The function will return a valid state and guarantees to have active set size less than or equal to
max_active_size
. IfNone
, it will be set to the total number of groups. Default isNone
.- max_itersint, optional
Maximum number of coordinate descents. Default is
int(1e5)
.- tolfloat, optional
Coordinate descent convergence tolerance. Default is
1e-7
.- rdev_tolfloat, optional
Relative percent deviance explained tolerance. If the difference of the last two training percent deviance explained exceeds the last training percent deviance explained scaled by this quantity, then the solver terminates. Default is
1e-4
.- newton_tolfloat, optional
Convergence tolerance for the BCD update. Default is
1e-12
.- newton_max_itersint, optional
Maximum number of iterations for the BCD update. Default is
1000
.- n_threadsint, optional
Number of threads. Default is
1
.
- Returns:
- wrap
Wrapper state object.