Cornish-Fisher Expansion for Commercial Real Estate Value at Risk
- 527 Downloads
- 2 Citations
Abstract
The computation of Value at Risk has traditionally been a troublesome issue in commercial real estate. Difficulties mainly arise from the lack of appropriate data, the non-normality of returns, and the inapplicability of many of the traditional methodologies. As a result, calculation of this risk measure has rarely been done in the real estate field. However, following a spate of new regulations such as Basel II, Basel III, NAIC and Solvency II, financial institutions have increasingly been required to estimate and control their exposure to market risk. As a result, financial institutions now commonly use “internal” Value at Risk (V a R) models in order to assess their market risk exposure. The purpose of this paper is to estimate distribution functions of real estate V a R while taking into account non-normality in the distribution of returns. This is accomplished by the combination of the Cornish-Fisher expansion with a certain rearrangement procedure. We demonstrate that this combination allows superior estimation, and thus a better V a R estimate, than has previously been obtainable. We also show how the use of a rearrangement procedure solves well-known issues arising from the monotonicity assumption required for the Cornish-Fisher expansion to be applicable, a difficulty which has previously limited the useful of this expansion technique. Thus, practitioners can find a methodology here to quickly assess Value at Risk without suffering loss of relevancy due to any non-normality in their actual return distribution. The originality of this paper lies in our particular combination of Cornish-Fisher expansions and the rearrangement procedure.
Keywords
Value at Risk Risk measurement Real estate finance Cornish-Fisher expansion Risk management Rearrangement proceduresReferences
- Acerbi, C. (2002). Spectral measures of risk: A coherent representation of subjective risk aversion. Journal of Banking & Finance, 26 (7), 1505–1518.CrossRefGoogle Scholar
- Artzner, P., Delbaen, F., Eber, J.-M., Heath, D. (1999). Coherent measures of risk. Mathematical finance, 9 (3), 203–228.CrossRefGoogle Scholar
- Barndorff-Nielsen, O., & Cox, D. (1989). Asymptotic techniques for use in statistics. Springer.Google Scholar
- Barton, D.E., & Dennis, K.E. (1952). The conditions under which gram-charlier and edgeworth curves are positive definite and unimodal. Biometrika, 39 (3-4), 425–427.CrossRefGoogle Scholar
- Bóna, M. (2004). A simple proof for the exponential upper bound for some tenacious patterns. Advances in Applied Mathematics, 33 (1), 192–198.CrossRefGoogle Scholar
- Booth, P., Matysiak, G., Ormerod, P. (2002). Risk measurement and management for real estate portfolios (Tech. Rep.) London.Google Scholar
- Byrne, P., & Lee, S. (1997). Real estate portfolio analysis under conditions of non-normality: The case of NCREIF. Journal of Real Estate Portfolio Management, 3 (1), 37–46.Google Scholar
- Chernozhukov, V., Fernndez-Val, I., Galichon, A. (2010). Rearranging EdgeworthCornishFisher expansions. Economic Theory, 42 (2), 419–435.CrossRefGoogle Scholar
- Cho, H., Kawaguchi, Y., Shilling, J. (2003). Unsmoothing commercial property returns: A revision to fishergeltnerwebb’s unsmoothing methodology. The Journal of Real Estate Finance and Economics, 27 (3), 393–405.CrossRefGoogle Scholar
- Cornish, E., & Fisher, R. (1937). Moments and cumulants in the specification of distributions. Revue de l’Institut International de Statistique / Review of the International Statistical Institute, 5 (4), 307–320.CrossRefGoogle Scholar
- Daníelsson, J., Jorgensen, B.N., Samorodnitsky, G., Sarma, M., de Vries, C.G. (2013). Fat tails, VaR and subadditivity. Journal of econometrics, 172 (2), 283–291.CrossRefGoogle Scholar
- Draper, N.R., & Tierney, D.E. (1973). Exact formulas for additional terms in some important series expansions. Communications in Statistics, 1 (6), 495–524.CrossRefGoogle Scholar
- Edelstein, R.H., & Quan, D.C. (2006). How does appraisal smoothing bias real estate returns measurement?. The Journal of Real Estate Finance and Economics, 32 (1), 41–60.CrossRefGoogle Scholar
- European Insurance and Occupational Pensions Authority. (2010). Solvency II Calibration Paper, CEIOPS-SEC-40-10. European Commission.Google Scholar
- Fallon,W. (1996). Calculating value-at-risk Wharton, Financial Institutions Center, before (Working Paper No. 96-49).Google Scholar
- Farrelly, K. (2012).Measuring the risk of unlisted property funds - a forward looking analysis. 19th Annual European Real Estate Society Conference in Edinburgh, Scotland.Google Scholar
- Fisher, J.D., Geltner, D.M., Webb, R.B. (1994). Value indices of commercial real estate: A comparison of index construction methods. The Journal of Real Estate Finance and Economics, 9 (2), 137–164.CrossRefGoogle Scholar
- Geltner, D. (1993). Estimating market values from appraised values without assuming an efficient market. Journal of Real Estate Research, 8 (3), 325–345.Google Scholar
- Geltner, D., Miller, N., Clayton, J., Eichholtz, P. (2007). Commercial real estate analysis and investments, 2nd edition. Cincinnati: South-Western College Publishing Co/Cengage Learning.Google Scholar
- Gordon, J.N., & Tse, E.W.K. (2003). VaR: a tool to measure leverage risk. The Journal of Portfolio Management, 29 (5), 62–65.CrossRefGoogle Scholar
- Jorion, P. (2007). Value at risk: the new benchmark for managing financial risk. New York: McGraw-Hill.Google Scholar
- Kendall, M.G., Stuart, A., Ord, J.K., O’Hagan, A. (1994). Kendall’s advanced theory of statistics, vol.1. London: Edward Arnold.Google Scholar
- Lee, S., & Higgins, D. (2009). Evaluating the Sharpe performance of the Australian property investment markets. Pacific Rim Property Research Journal, 15 (3), 358–370.CrossRefGoogle Scholar
- Liow, K.H. (2008). Extreme returns and value at risk in international securitized real estate markets. Journal of Property Investment & Finance, 26 (5), 418–446.CrossRefGoogle Scholar
- Lizieri, C., & Ward, C. (2000). Commercial real estate return distributions: A review of literature and empirical evidence (Working Paper No. rep-wp2000- 01).Google Scholar
- Lorentz, G.G. (1953). An inequality for rearrangements. The American Mathematical Monthly, 60 (3), 176.CrossRefGoogle Scholar
- Myer, F.C.N., & Webb, J.R. (1994). Statistical properties of returns: Financial assets versus commercial real estate. The Journal of Real Estate Finance and Economics, 8 (3), 267–82.CrossRefGoogle Scholar
- Pritsker, M. (1997). Evaluating value at risk methodologies: Accuracy versus computational time. Journal of Financial Services Research, 12 (2-3), 201–242.CrossRefGoogle Scholar
- Rockafellar, R.T., & Uryasev, S. (2002). Conditional value-at-risk for general loss distributions. Journal of Banking & Finance, 26 (7), 1443–1471.CrossRefGoogle Scholar
- Spiring, F. (2011). The refined positive definite and unimodal regions for the gram-charlier and edgeworth series expansion. Advances in Decision Sciences, 2011, 1–18.CrossRefGoogle Scholar
- Young, M., & Graff, R. (1995). Real estate is not normal: A fresh look at real estate return distributions. The Journal of Real Estate Finance and Economics, 10 (3), 225–59.CrossRefGoogle Scholar
- Young, M., Lee, S., Devaney, S. (2006). Non-normal real estate return distributions by property type in the UK. Journal of Property Research, 23 (2), 109–133.CrossRefGoogle Scholar
- Young, M.S. (2008). Revisiting non-normal real estate return distributions by property type in the U.S. The Journal of Real Estate Finance and Economics, 36 (2), 233–248.CrossRefGoogle Scholar
- Zangari, P. (1996). How accurate is the delta-gamma methodology. RiskMetrics Monitor, 3rd quarter, 12-29.Google Scholar
- Zhou, J., & Anderson, R. (2012). Extreme risk measures for international REIT markets. The Journal of Real Estate Finance and Economics, 45 (1), 152–170.CrossRefGoogle Scholar