nimare.meta.ibma.Hedges
- class Hedges(*args, **kwargs)[source]
Bases:
nimare.base.MetaEstimatorHedges meta-regression estimator.
Changed in version 0.0.8:
[FIX] Remove single-dimensional entries of each array of returns (
dict).
New in version 0.0.4.
Estimates the between-subject variance tau^2 using the Hedges & Olkin (1985) approach.
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
Hedges LV, Olkin I. 1985. Statistical Methods for Meta‐Analysis.
See also
pymare.estimators.HedgesThe 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.