<div class="csl-bib-body">
<div class="csl-entry">Bura, E. (2022, November 10). <i>Ensemble Conditional Variance Estimation for Sufficient Dimension Reduction</i> [Presentation]. Applied Probability Seminar, Department of Statistics, Columbia University, New York, United States of America (the).</div>
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/153722
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dc.description.abstract
Conditional Variance Estimation (CVE) and Ensemble Conditional Variance Estimation (ECVE) are novel sufficient dimension reduction (SDR) methods in regressions with continuous response and predictors. Conditional Variance Estimation applies to additive error regressions with continuous predictors and link function and ECVE to general non-additive error regression models. Both operate under the assumption that the predictors can be replaced by a lower dimensional projection without loss of information. They are semiparametric forward regression model-based exhaustive sufficient dimension reduction estimation methods that are shown to be consistent under mild assumptions.
CVE outperforms mean average variance estimation (MAVE) and ECVE outperforms central subspace mean average variance estimation (csMAVE), their main competitors, under several simulation settings and in benchmark data set analyses.
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dc.language.iso
en
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dc.subject
Regression
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dc.subject
semi-parametric
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dc.subject
linear sufficient reduction
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dc.subject
central subspace
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dc.subject
ensembles
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dc.title
Ensemble Conditional Variance Estimation for Sufficient Dimension Reduction