LogtES function

ES for t distributed geometric returns

ES for t distributed geometric returns

Estimates the ES of a portfolio assuming that geometric returns are Student-t distributed, for specified confidence level and holding period.

LogtES(...)

Arguments

  • ...: The input arguments contain either return data or else mean and standard deviation data. Accordingly, number of input arguments is either 5 or 6. In case there 5 input arguments, the mean and standard deviation of data is computed from return data. See examples for details.

    returns Vector of daily geometric return data

    mu Mean of daily geometric return data

    sigma Standard deviation of daily geometric return data

    investment Size of investment

    df Number of degrees of freedom in the t distribution

    cl VaR confidence level

    hp VaR holding period

Returns

Matrix of ES whose dimension depends on dimension of hp and cl. If cl and hp are both scalars, the matrix is 1 by 1. If cl is a vector and hp is a scalar, the matrix is row matrix, if cl is a scalar and hp is a vector, the matrix is column matrix and if both cl and hp are vectors, the matrix has dimension length of cl * length of hp.

Examples

# Computes ES given geometric return data data <- runif(5, min = 0, max = .2) LogtES(returns = data, investment = 5, df = 6, cl = .95, hp = 90) # Computes ES given mean and standard deviation of return data LogtES(mu = .012, sigma = .03, investment = 5, df = 6, cl = .95, hp = 90)

Author(s)

Dinesh Acharya

References

Dowd, K. Measuring Market Risk, Wiley, 2007.

  • Maintainer: Dinesh Acharya
  • License: GPL
  • Last published: 2016-03-11

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