nimare.meta.ibma.WeightedLeastSquares
- class WeightedLeastSquares(tau2=0, *args, **kwargs)[source]
Bases:
nimare.base.MetaEstimatorWeighted least-squares meta-regression.
Changed in version 0.0.8:
[FIX] Remove single-dimensional entries of each array of returns (
dict).
New in version 0.0.4.
Provides the weighted least-squares estimate of the fixed effects given known/assumed between-study variance tau^2. When tau^2 = 0 (default), the model is the standard inverse-weighted fixed-effects meta-regression.
- Parameters
tau2 (
floator 1Dnumpy.ndarray, optional) – Assumed/known value of tau^2. Must be >= 0. Default is 0.
Notes
Requires
betaandvarcopeimages.Warning
Masking approaches which average across voxels (e.g., NiftiLabelsMaskers) will likely result in biased results. The extent of this bias is currently unknown.
All image-based meta-analysis estimators adopt an aggressive masking strategy, in which any voxels with a value of zero in any of the input maps will be removed from the analysis.
References
Brockwell, S. E., & Gordon, I. R. (2001). A comparison of statistical methods for meta-analysis. Statistics in Medicine, 20(6), 825–840. https://doi.org/10.1002/sim.650
See also
pymare.estimators.WeightedLeastSquaresThe PyMARE estimator called by this class.
- fit(dataset, drop_invalid=True)[source]
Fit Estimator to Dataset.
- Parameters
- Returns
MetaResult– Results of Estimator fitting.- Variables
inputs_ (
dict) – Inputs used in _fit.
Notes
The
fitmethod is a light wrapper that runs input validation and preprocessing before fitting the actual model. Estimators’ individual “fitting” methods are implemented as_fit, although users should callfit.