Comptes Rendus. Mathématique (Jun 2021)

Dimension reduction in spatial regression with kernel SAVE method

  • Affossogbe, Mètolidji Moquilas Raymond,
  • Nkiet, Guy Martial,
  • Ogouyandjou, Carlos

DOI
https://doi.org/10.5802/crmath.187
Journal volume & issue
Vol. 359, no. 4
pp. 475 – 479

Abstract

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We consider the smoothed version of sliced average variance estimation (SAVE) dimension reduction method for dealing with spatially dependent data that are observations of a strongly mixing random field. We propose kernel estimators for the interest matrix and the effective dimension reduction (EDR) space, and show their consistency.