BOOK

Nonparametric Expectile Regression for Conditional Autoregressive Expected Shortfall Estimation

Marcelo Brutti RighiYi YangPaulo Sergio Ceretta

RePEc: Research Papers in Economics   Publisher: Federal Reserve Bank of St. Louis

Abstract

Abstract In this chapter, we estimate the Expected Shortfall (ES) in conditional autoregressive expectile models by using a nonparametric multiple expectile regression via gradient tree boosting. This approach has the advantages generated by the flexibility of not having to rely on data assumptions and avoids the drawbacks and fragilities of a restrictive estimator such as Historical Simulation. We consider distinct specifications for the information sets that produce the ES estimates. The results obtained with simulated and real market data indicate that the proposed approach has good performance, with some distinctions between the specifications.

Keywords:
Estimator Autoregressive model Expected shortfall Nonparametric statistics Regression Nonparametric regression Conditional probability distribution Flexibility (engineering)

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Topics

Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Consumer Market Behavior and Pricing
Social Sciences →  Business, Management and Accounting →  Marketing
Financial Risk and Volatility Modeling
Social Sciences →  Economics, Econometrics and Finance →  Finance

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