Large-sample estimation and inference in multivariate single-index models

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Date
2019-05
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English
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Elsevier
Abstract

By optimizing index functions against different outcomes, we propose a multivariate single-index model (SIM) for development of medical indices that simultaneously work with multiple outcomes. Fitting of a multivariate SIM is not fundamentally different from fitting a univariate SIM, as the former can be written as a sum of multiple univariate SIMs with appropriate indicator functions. What have not been carefully studied are the theoretical properties of the parameter estimators. Because of the lack of asymptotic results, no formal inference procedure has been made available for multivariate SIMs. In this paper, we examine the asymptotic properties of the multivariate SIM parameter estimators. We show that, under mild regularity conditions, estimators for the multivariate SIM parameters are indeed

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Wu, J., Peng, H., & Tu, W. (2019). Large-sample estimation and inference in multivariate single-index models. Journal of Multivariate Analysis, 171, pp 382-396. https://doi.org/10.1016/j.jmva.2019.01.003
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Journal of Multivariate Analysis
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