Singha Estate Information Ratio

S Stock  THB 0.86  0.03  3.37%   
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Singha Estate Public has current Information Ratio of 0.0585. The Information Ratio is the ratio of the alpha component of total returns to the standard deviation of these excess alpha returns. The alpha component is the return that is attributable to the manager skill to time the market and is the residual after taking out the risk-free return and the beta components from the total returns. While the Sharpe ratio considers the standard deviation of the total returns, the information ratio considers the variability of only the alpha component of the return (which also forms the numerator). In other words, the information ratio is merely Jensen alpha divided by its standard deviation.

INFOR

 = 

ER[a] - ER[b]

STD[a]

 = 
0.0585
ER[a] = Expected return on investing in Singha Estate
ER[b] = Expected return on market index or selected benchmark
STD[a] =   Standard Deviation of returns on Singha Estate

Singha Estate Information Ratio Peers Comparison

Singha Information Ratio Relative To Other Indicators

Singha Estate Public is currently regarded as top stock in information ratio category among its peers. It is currently under evaluation in maximum drawdown category among its peers reporting about  307.08  of Maximum Drawdown per Information Ratio. The ratio of Maximum Drawdown to Information Ratio for Singha Estate Public is roughly  307.08 
The higher the information ratio, the greater the chances of the manager to make money in the future. The information ratio only looks to compute the return per unit of risk undertaken for the alpha component. This is important because alpha returns are risky, as they represent a zero-sum game for the market as a whole. In fact, the average alpha for the market as a whole is in practice slightly less than zero because of the transaction and other costs. Therefore, it is easy for a manager to take on alpha risk and lose money that will bite into the beta returns.
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