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Solving norm constrained portfolio optimization via coordinate-wise descent algorithms

机译:通过按位下降算法求解范数受限的投资组合优化

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摘要

A fast method based on coordinate-wise descent algorithms is developed to solve portfolio optimization problems in which asset weights are constrained by l_q norms for 1 ≤ q ≤ 2. The method is first applied to solve a minimum variance portfolio (mvp) optimization problem in which asset weights are constrained by a weighted l_1 norm and a squared l2 norm. Performances of the weighted norm penalized mvp are examined with two benchmark data sets. When the sample size is not large in comparison with the number of assets, the weighted norm penalized mvp tends to have a lower out-of-sample portfolio variance, lower turnover rate, fewer numbers of active constituents and shortsale positions, but higher Sharpe ratio than the one without such penalty. Several extensions of the proposed method are illustrated; in particular, an efficient algorithm for solving a portfolio optimization problem in which assets are allowed to be chosen grouply is derived.
机译:提出了一种基于协调下降算法的快速方法来解决投资组合优化问题,其中资产权重受l_q范数约束为1≤q≤2。该方法首先用于求解最小方差投资组合(mvp)优化问题。哪些资产权重受加权的l_1范数和平方的l2范数约束。使用两个基准数据集检查了加权范数受惩罚的mvp的性能。当样本数量与资产数量相比不大时,加权范式惩罚性MVP往往具有较低的样本外投资组合方差,较低的周转率,较少的活跃成分数量和卖空头寸,但夏普比率较高比没有这种惩罚的人举例说明了所提出方法的几个扩展。特别地,推导了用于解决允许组合选择资产的资产组合优化问题的有效算法。

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