0000000000451213

AUTHOR

A. Gannoun

showing 2 related works from this author

Some extensions of multivariate sliced inverse regression

2007

Multivariate sliced inverse regression (SIR) is a method for achieving dimension reduction in regression problems when the outcome variable y and the regressor x are both assumed to be multidimensional. In this paper, we extend the existing approaches, based on the usual SIR I which only uses the inverse regression curve, to methods using properties of the inverse conditional variance. Contrary to the existing ones, these new methods are not blind for symmetric dependencies and rely on the SIR II or SIRα. We also propose their corresponding pooled slicing versions. We illustrate the usefulness of these approaches on simulation studies.

Statistics and ProbabilityMultivariate statisticsApplied MathematicsDimensionality reductionInverseOutcome variableModeling and SimulationStatisticsSliced inverse regressionStatistics::MethodologyStatistics Probability and UncertaintyConditional varianceRegression problemsMathematicsRegression curveJournal of Statistical Computation and Simulation
researchProduct

Un estimateur de la médiane spatiale conditionnelle par transformation-retransformation.

2005

[ SHS.ECO ] Humanities and Social Sciences/Economies and finances[SHS.ECO]Humanities and Social Sciences/Economics and Finance[SHS.ECO] Humanities and Social Sciences/Economics and Finance
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