Hello,
When testing a quantitative strategy, should we test it for the market we're going to use it for ?
Exemple :
I have 2 strategies, but I'm trading AAPL, S&P500 and Russel 2000 historical data.
My questions are :
1 - When we build / think of a strategy, is it just for one specific market or is it for different markets ?
2 - Market conditions are different, but we all know that markets are correlated, a profitable strategy could be profitable in a stock but not in another, or couldn't it ?
3 - If a tested strategy performed well (good Sharpe ratio, good returns curve, tolerable drawdowns) is supposed to be applied on real time, then why testing in the first place in historical data ? Why do we call it "testing" ? Doesn't "testing" mean reproducing all (or most of) common cases that the algorithm may execute ?
I am just confused with all of this. Could you please provide me with a simple, but a successive reasoning ?
Thank you all
When testing a quantitative strategy, should we test it for the market we're going to use it for ?
Exemple :
I have 2 strategies, but I'm trading AAPL, S&P500 and Russel 2000 historical data.
My questions are :
1 - When we build / think of a strategy, is it just for one specific market or is it for different markets ?
2 - Market conditions are different, but we all know that markets are correlated, a profitable strategy could be profitable in a stock but not in another, or couldn't it ?
3 - If a tested strategy performed well (good Sharpe ratio, good returns curve, tolerable drawdowns) is supposed to be applied on real time, then why testing in the first place in historical data ? Why do we call it "testing" ? Doesn't "testing" mean reproducing all (or most of) common cases that the algorithm may execute ?
I am just confused with all of this. Could you please provide me with a simple, but a successive reasoning ?
Thank you all