Nonparametric conditional autoregressive expectile model via neural network with applications to estimating financial risk

Qifa Xu, Xi Liu, Cuixia Jiang, Keming Yu

Research output: Contribution to journalArticlepeer-review

Abstract

The parametric conditional autoregressive expectiles (CARE) models have been developed to estimate expectiles, which can be used to assess value at risk and expected shortfall. The challenge lies in parametric CARE modeling is the specification of a parametric form. To avoid any model misspecification, we propose a nonparametric CARE model via neural network. The nonparametric CARE model can be estimated by a classical gradient based nonlinear optimization algorithm, and the consistency of nonparametric conditional expectile estimators is established. We then apply the nonparametric CARE model to estimating value at risk and expected shortfall of six stock indices. Empirical results for the new model is competitive with those classical models and parametric CARE models.
Original languageEnglish
Pages (from-to)882-908
JournalApplied Stochastic Models in Business and Industry
Volume32
Issue number6
DOIs
Publication statusPublished - 10 Nov 2016

Keywords

  • expectiles
  • quantile
  • neural network
  • nonparametric conditional autoregressive expectiles
  • value at risk
  • expected shortfall

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