Data-based Automatic Discretization of Nonparametric Distributions
classification
💰 econ.GN
q-fin.EC
keywords
nonparametricdistributionsgaussianportfolioalgorithmalthoughapplicationassuming
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Although using non-Gaussian distributions in economic models has become increasingly popular, currently there is no systematic way for calibrating a discrete distribution from the data without imposing parametric assumptions. This paper proposes a simple nonparametric calibration method based on the Golub-Welsch algorithm for Gaussian quadrature. Application to an optimal portfolio problem suggests that assuming Gaussian instead of nonparametric shocks leads to up to 17% overweighting in the stock portfolio because the investor underestimates the probability of crashes.
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