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An efficient optimization approach for a cardinality-constrained index tracking problem

机译:基数受限的索引跟踪问题的一种有效的优化方法

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In the practical business environment, portfolio managers often face business-driven requirements that limit the number of constituents in their tracking portfolio. A natural index tracking model is thus to minimize a tracking error measure while enforcing an upper bound on the number of assets in the portfolio. In this paper we consider such a cardinality-constrained index tracking model. In particular, we propose an efficient nonmonotone projected gradient (NPG) method for solving this problem. At each iteration, this method usually solves several projected gradient subproblems. We show that each subproblem has a closed-form solution, which can be computed in linear time. Under some suitable assumptions, we establish that any accumulation point of the sequence generated by the NPG method is a local minimizer of the cardinality-constrained index tracking problem. We also conduct empirical tests to compare our method with the hybrid evolutionary algorithm [P.R. Torrubiano and S. Alberto. A hybrid optimization approach to index tracking. Ann Oper Res. 166(1) (2009), pp. 57-71] and the hybrid half thresholding algorithm [F. Xu, Z. Xu and H Xue. Sparse index tracking: an L-1/2 regularization based model and solution, Submitted, 2012] for index tracking. The computational results demonstrate that our approach generally produces sparse portfolios with smaller out-of-sample tracking error and higher consistency between in-sample and out-of-sample tracking errors. Moreover, our method outperforms the other two approaches in terms of speed.
机译:在实际的业务环境中,投资组合经理经常面临业务驱动的要求,这些要求限制了其追踪投资组合中成分股的数量。因此,自然指数跟踪模型是在对投资组合中的资产数量施加上限的同时,最小化跟踪误差的度量。在本文中,我们考虑了这种受基数约束的索引跟踪模型。特别是,我们提出了一种有效的非单调投影梯度(NPG)方法来解决此问题。在每次迭代中,此方法通常解决几个投影梯度子问题。我们证明了每个子问题都有一个封闭形式的解决方案,该解决方案可以在线性时间内进行计算。在一些适当的假设下,我们确定NPG方法生成的序列的任何累加点都是基数约束索引跟踪问题的局部极小值。我们还进行了经验测试,以将我们的方法与混合进化算法进行比较。 Torrubiano和S.Alberto。索引跟踪的混合优化方法。安·奥珀水库166(1)(2009),第57-71页]和混合半阈值算法[F.徐,许志和薛红。稀疏索引跟踪:一种基于L-1 / 2正则化的模型和解决方案,2012年提交,用于索引跟踪。计算结果表明,我们的方法通常产生的稀疏投资组合具有较小的样本外跟踪误差,并且样本内和样本外跟踪误差之间的一致性更高。而且,我们的方法在速度上胜过其他两种方法。

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