Robust linear models with support for the M-estimators listed under Norms.
See Module Reference for commands and arguments.
# Load modules and data
import statsmodels.api as sm
data = sm.datasets.stackloss.load()
data.exog = sm.add_constant(data.exog)
# Fit model and print summary
rlm_model = sm.RLM(data.endog, data.exog, M=sm.robust.norms.HuberT())
rlm_results = rlm_model.fit()
print rlm_results.params
Detailed examples can be found here:
| RLMResults(model, params, ...) | Class to contain RLM results |
| AndrewWave([a]) | Andrew’s wave for M estimation. |
| Hampel([a, b, c]) | Hampel function for M-estimation. |
| HuberT([t]) | Huber’s T for M estimation. |
| LeastSquares | Least squares rho for M-estimation and its derived functions. |
| RamsayE([a]) | Ramsay’s Ea for M estimation. |
| RobustNorm | The parent class for the norms used for robust regression. |
| TrimmedMean([c]) | Trimmed mean function for M-estimation. |
| TukeyBiweight([c]) | Tukey’s biweight function for M-estimation. |
| estimate_location(a, scale[, norm, axis, ...]) | M-estimator of location using self.norm and a current estimator of scale. |
| Huber([c, tol, maxiter, norm]) | Huber’s proposal 2 for estimating location and scale jointly. |
| HuberScale([d, tol, maxiter]) | Huber’s scaling for fitting robust linear models. |
| mad(a[, c, axis, center]) | The Median Absolute Deviation along given axis of an array |
| huber | Huber’s proposal 2 for estimating location and scale jointly. |
| hubers_scale | Huber’s scaling for fitting robust linear models. |
| stand_mad(a[, c, axis]) |