196 Optimizing Optimization
the mean/standard deviation, the mean/semi – standard deviation, the mean/
value at risk (5%), and the mean/expected loss. The black lines represent the
frontiers if it is assumed that the returns are elliptically distributed. In this case,
a quadratic programming algorithm has solved for the optimal mean/standard
deviation portfolio with no short selling for a number of target returns. The
portfolio weights were then used to compute a history of returns to obtain the
–3.00 –2.50 –2.00 –1.50 –1.00 –0.50 0.00 0.50 1.00 1.50Value at risk (5%) Expected lossRisk measure (% per day)Semi–standard
deviationStandard
deviation
2.000.080.070.060.050.040.030.020.010.00Expected return (% per day)Figure 8.2 Risk frontiers obtained using quadratic programming and 128,000 simulated
portfolios. Black line: frontiers using weights from solving minimum standard deviation
frontiers with no short selling. Grey line: frontiers obtained using the simulated portfolios
where portfolio weights are derived by minimizing standard deviation.
Table 8.1 Summary statistics for eight stocksRank Stock Average St Dev Min Max Skewness Kurtosis
1 NAB 0.058 1.407 13.871 4.999 0.823 9.688
2 CBA 0.066 1.254 7.131 7.435 0.188 5.022
3 BHP 0.008 1.675 7.617 7.843 0.107 4.205
4 ANZ 0.073 1.503 7.064 9.195 0.122 4.617
5 WBC 0.059 1.357 6.397 5.123 0.181 3.985
6 NCP 0.013 2.432 14.891 24.573 0.564 11.321
7 RIO 0.035 1.659 12.002 7.663 0.069 5.360
8 WOW 0.078 1.482 8.392 11.483 0.025 6.846
Note : Stocks are ranked by market capitalization on 30 August 2002. The statistics are based on
1,836 daily returns, and expressed as percentage per day. Average is the sample mean; St Dev is the
sample standard deviation; Min is the minimum observed return; Max is the maximum observed
return; Skewness is the sample skewnees; and Kurtosis is the sample kurtosis.