Online Learning of Portfolio Ensembles with Sector Exposure Regularization
نویسندگان
چکیده
We consider online learning of ensembles of portfolio selection algorithms and aim to regularize risk by encouraging diversification with respect to a predefined risk-driven grouping of stocks. Our procedure uses online convex optimization to control capital allocation to underlying investment algorithms while encouraging non-sparsity over the given grouping. We prove a logarithmic regret for this procedure with respect to the best-in-hindsight ensemble. We applied the procedure with known mean-reversion portfolio selection algorithms using the standard GICS industry sector grouping. Empirical Experimental results showed an impressive percentage increase of risk-adjusted return (Sharpe ratio).
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ورودعنوان ژورنال:
- CoRR
دوره abs/1604.03266 شماره
صفحات -
تاریخ انتشار 2016