DocumentCode :
2873076
Title :
Nonlinear prediction of conditional percentiles for value-at-risk
Author :
Chang, Isaac J. ; Weigend, Andreas S.
Author_Institution :
Stern Sch. of Bus., New York Univ., NY, USA
fYear :
1999
fDate :
1999
Firstpage :
118
Lastpage :
134
Abstract :
We propose, implement and evaluate an approach to predicting conditional distribution tail percentiles, which corresponds to value-at-risk (VaR) when applied to financial asset return series. Our approach differs from current methods for measuring VaR in two basic ways. Firstly, while the standard variance-covariance framework assumes that asset return distributions are normal, we make no assumptions about the shape of the entire distribution; instead we focus on estimating only the relevant percentile. Secondly, while the standard approach utilizes only the historical returns and covariances of the assets comprising the portfolio being measured, our method depends on other additional relevant exogenous variables. We use the mean weighted absolute error function (MWAE), a generalization of the well-known mean absolute error (MAE) cost function. It is a familiar statistical property that the MAE is minimized at the median, or 50th percentile of the data; the generalization allows for estimation of arbitrary p-percentiles. There are two methods to estimating values from data: a lazy method keeps all of the data to compute the desired value at any given point; in contrast, an eager method uses the data to estimate a model which is used to generate the desired output. We investigate two approaches for applying the MWAE to estimate tail percentiles, one using each method. The first, kernel percentile regression, is a lazy method, while the second, neural network percentile regression, is an eager method
Keywords :
financial data processing; minimisation; neural nets; probability; statistical analysis; MWAE; arbitrary p-percentiles; asset return distributions; conditional distribution tail percentiles; conditional percentiles; eager method; financial asset return series; historical returns; kernel percentile regression; lazy method; lazy method keeps; mean absolute error cost function; mean weighted absolute error function; neural network percentile regression; nonlinear prediction; relevant exogenous variables; standard approach; standard variance-covariance framework; statistical property; tail percentiles; value-at-risk; Cost function; Current measurement; Kernel; Measurement standards; Neural networks; Portfolios; Probability distribution; Reactive power; Shape; Tail;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence for Financial Engineering, 1999. (CIFEr) Proceedings of the IEEE/IAFE 1999 Conference on
Conference_Location :
New York, NY
Print_ISBN :
0-7803-5663-2
Type :
conf
DOI :
10.1109/CIFER.1999.771110
Filename :
771110
Link To Document :
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