Abstract: Jamshidian and Zhu (1997) propose a discrete
grid method for simplifying the computation of Value at Risk (VaR) for
fixed-income portfolios. Their method relies on two
simplifications. First, the value of fixed income instruments is
modeled as depending on a small number of risk factors chosen using
principal components analysis. Second, they use a discrete
approximation to the distribution of the portfolio's value.
We show that their method has two serious shortcomings which imply it
cannot accurately estimate VaR for some fixed-income
portfolios. First, risk factors chosen using principal components
analysis will explain the variation in the yield curve, but they may
not explain the variation in the portfolio's value. This will be
especially problematic for portfolios that are hedged. Second, their
discrete distribution of portfolio value can be a poor approximation
to the true continuous distribution.
We propose two refinements to their method to correct these two
shortcomings. First, we propose choosing risk factors according to
their ability to explain the portfolio's value. To do this, instead of
generating risk factors with principal components analysis, we
generate them with a statistical technique called partial least
squares. Second, we compute VaR with a ``Grid Monte Carlo'' method
that uses continuous risk factor distributions while maintaining the
computational simplicity of a grid method for pricing. We illustrate
our points with several example portfolios where the Jamshidian-Zhu
method fails to accurately estimate VaR, while our refinements
succeed.
Keywords: Scenario simulation, principal components, partial least squares,Monte Carlo
Full paper (232 KB PDF)
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