The Sharpe ratio is defined as the ratio
where and r0 is the risk-free rate (μ and Σ proxies for portfolio return and risk). For more information, see Portfolio Optimization Theory.
Portfolios that maximize the Sharpe ratio are portfolios on the efficient frontier that satisfy several theoretical conditions in finance. For example, such portfolios are called tangency portfolios since the tangent line from the risk-free rate to the efficient frontier taps the efficient frontier at portfolios that maximize the Sharpe ratio.
To obtain efficient portfolios that maximizes the Sharpe ratio, the
estimateMaxSharpeRatio function accepts a
object and obtains efficient portfolios that maximize the Sharpe Ratio.
Suppose that you have a universe with four risky assets and a riskless asset and you want to obtain a portfolio that maximizes the Sharpe ratio, where, in this example, r0 is the return for the riskless asset.
r0 = 0.03; m = [ 0.05; 0.1; 0.12; 0.18 ]; C = [ 0.0064 0.00408 0.00192 0; 0.00408 0.0289 0.0204 0.0119; 0.00192 0.0204 0.0576 0.0336; 0 0.0119 0.0336 0.1225 ]; p = Portfolio('RiskFreeRate', r0); p = setAssetMoments(p, m, C); p = setDefaultConstraints(p); pwgt = estimateMaxSharpeRatio(p); display(pwgt)
pwgt = 0.4251 0.2917 0.0856 0.1977
If you start with an initial portfolio,
estimateMaxSharpeRatio also returns purchases and sales to get from your
initial portfolio to the portfolio that maximizes the Sharpe ratio. For example, given
an initial portfolio in
pwgt0, you can obtain purchases and sales
from the previous
pwgt0 = [ 0.3; 0.3; 0.2; 0.1 ]; p = setInitPort(p, pwgt0); [pwgt, pbuy, psell] = estimateMaxSharpeRatio(p); display(pwgt) display(pbuy) display(psell)
pwgt = 0.4251 0.2917 0.0856 0.1977 pbuy = 0.1251 0 0 0.0977 psell = 0 0.0083 0.1144 0