Dynamic Partial Sufficient Dimension Reduction
Sufficient dimension reduction aims for reduction of dimensionality of a regression without loss of information by replacing the original predictor with its lower-dimensional subspace. Partial (sufficient) dimension reduction arises when the predictors naturally fall into two sets, X and W, and we s...
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Zusammenfassung: | Sufficient dimension reduction aims for reduction of dimensionality of a
regression without loss of information by replacing the original predictor with
its lower-dimensional subspace. Partial (sufficient) dimension reduction arises
when the predictors naturally fall into two sets, X and W, and we seek
dimension reduction on X alone while considering all predictors in the
regression analysis. Though partial dimension reduction is a very general
problem, only very few research results are available when W is continuous. To
the best of our knowledge, these methods generally perform poorly when X and W
are related, furthermore, none can deal with the situation where the reduced
lower-dimensional subspace of X varies dynamically with W. In this paper, We
develop a novel dynamic partial dimension reduction method, which could handle
the dynamic dimension reduction issue and also allows the dependency of X on W.
The asymptotic consistency of our method is investigated. Extensive numerical
studies and real data analysis show that our {\it Dynamic Partial Dimension
Reduction} method has superior performance comparing to the existing methods. |
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DOI: | 10.48550/arxiv.1909.11948 |