Metrics Spectral#
spectral
#
| FUNCTION | DESCRIPTION |
|---|---|
spectral_gap |
Compute spectral gap between leading eigenvalues. |
spectral_gap_preservation |
Compare spectral gaps between source and target eigenvalue spectra. |
eigenvalue_reconstruction_error |
Compute reconstruction error between eigenvalues and target eigenvalues. |
eigenvector_alignment |
Measure alignment between dominant eigenspaces from two methods. |
Functions#
spectral_gap(eigenvalues: torch.Tensor, n_states: int | None = None, relative: bool = False, eps: float = torch.finfo(torch.float32).eps) -> torch.Tensor
#
Compute spectral gap between leading eigenvalues.
The spectral gap is the difference between the n_states-th eigenvalue
and the (n_states + 1)-th eigenvalue. A larger spectral gap indicates
better separation between dominant and subdominant eigenspaces, which is
desirable for identifying metastable states or dominant structures.
| PARAMETER | DESCRIPTION |
|---|---|
eigenvales
|
Eigenvalues in descending order, shape (n_eigenvalues, ).
TYPE:
|
n_states
|
Index for gap computation. If None, finds maximum gap.
TYPE:
|
relative
|
If True, return relative gap (gap / eigval[n_states - 1]).
TYPE:
|
eps
|
Small value to avoid division by zero.
TYPE:
|
| RETURNS | DESCRIPTION |
|---|---|
Tensor
|
Spectral gap value. |
Examples:
>>> eigval = torch.tensor([1.0, 0.9, 0.7, 0.1, 0.05])
>>> spectral_gap(eigval, n_states=3)
0.6
>>> spectral_gap(eigval, n_states=3, relative=True)
0.857...
Find maximum spectral gap:
Source code in spectre/metrics/spectral.py
spectral_gap_preservation(eigenvalues: torch.Tensor, eigenvalues_target: torch.Tensor, n_states: int | None = None, reduce: str = 'relative_error', eps: float = torch.finfo(torch.float32).eps) -> torch.Tensor
#
Compare spectral gaps between source and target eigenvalue spectra.
Evaluates how well target preserves the spectral gap structure of source.
| PARAMETER | DESCRIPTION |
|---|---|
eigenvalues
|
Source eigenvalues, shape (n_eigen, ).
TYPE:
|
eigenvalues_target
|
Target eigenvalues, shape (n_eigen, ).
TYPE:
|
n_states
|
Index for gap computation. If None, uses maximum gap from source.
TYPE:
|
reduce
|
Comparison reduce: "relative_error", "absolute_error", "correlation".
TYPE:
|
eps
|
Small value to avoid division by zero.
TYPE:
|
| RETURNS | DESCRIPTION |
|---|---|
Tensor
|
Preservation reduce value. |
Examples:
>>> eigenvalues = torch.tensor([1.0, 0.9, 0.7, 0.1])
>>> eigenvalues_target = torch.tensor([0.98, 0.88, 0.68, 0.12])
>>> spectral_gap_preservation(eigenvalues, eigenvalues_target, n_states=3)
0.033...
Using correlation reduce:
>>> spectral_gap_preservation(
... eigenvalues,
... eigenvalues_target,
... n_states=3,
... reduce="correlation",
... )
0.999...
Source code in spectre/metrics/spectral.py
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eigenvalue_reconstruction_error(eigenvalues: torch.Tensor, eigenvalues_target: torch.Tensor, reduce: str = 'mse', weights: torch.Tensor | None = None, eps: float = torch.finfo(torch.float32).eps) -> torch.Tensor
#
Compute reconstruction error between eigenvalues and target eigenvalues.
| PARAMETER | DESCRIPTION |
|---|---|
eigenvalues
|
Predicted eigenvalues, shape (n_eigen, ).
TYPE:
|
eigenvalues_target
|
True/reference eigenvalues, shape (n_eigen, ).
TYPE:
|
reduce
|
Reduction operation: "mse", "mae", "relative", "correlation".
TYPE:
|
weights
|
Optional weights for eigenvalues (higher weight for leading eigenvalues), shape (n_eigen, ).
TYPE:
|
eps
|
Small value to avoid division by zero.
TYPE:
|
| RETURNS | DESCRIPTION |
|---|---|
Tensor
|
Reconstruction error value. |
Examples:
>>> eig = torch.tensor([0.95, 0.85, 0.65, 0.15])
>>> eig_target = torch.tensor([1.0, 0.9, 0.7, 0.1])
>>> eigenvalue_reconstruction_error(eig, eig_target, reduce="mse")
0.00625
With weights emphasizing leading eigenvalues:
>>> weights = torch.tensor([4.0, 2.0, 1.0, 0.5])
>>> eigenvalue_reconstruction_error(eig, eig_target, weights=weights)
0.00833...
Source code in spectre/metrics/spectral.py
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eigenvector_alignment(eigenvectors: torch.Tensor, eigenvectors_target: torch.Tensor, n_eigen: int | None = None, reduce: str = 'subspace_overlap') -> torch.Tensor
#
Measure alignment between dominant eigenspaces from two methods.
Computes how well the leading eigenvectors from a target method align with those from a source method.
| PARAMETER | DESCRIPTION |
|---|---|
eigenvectors
|
Source eigenvectors, shape (n_samples, n_eigenvectors).
TYPE:
|
eigenvectors_target
|
Target eigenvectors, shape (n_samples, n_eigenvectors).
TYPE:
|
n_eigen
|
Number of leading components to compare. If None, uses all components.
TYPE:
|
reduce
|
Alignment reduce: "subspace_overlap", "grassmann", "canonical_angles".
TYPE:
|
| RETURNS | DESCRIPTION |
|---|---|
Tensor
|
Alignment reduce value. Higher values indicate better alignment. |
Examples:
>>> eigenvectors = torch.randn(100, 5)
>>> eigenvectors_target = eigenvectors + 0.1 * torch.randn(100, 5)
>>> eigenvector_alignment(eigenvectors, eigenvectors_target, n_eigen=3)
0.95...
Using Grassmann distance:
>>> eigenvector_alignment(
... eigenvectors,
... eigenvectors_target,
... n_eigen=3,
... reduce="grassmann",
... )
0.12...
Source code in spectre/metrics/spectral.py
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