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首页> 外文期刊>International journal of general systems >Continuous-time mean variance portfolio with transaction costs: a proximal approach involving time penalization
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Continuous-time mean variance portfolio with transaction costs: a proximal approach involving time penalization

机译:具有交易成本的连续时间平均方差组合:涉及时间惩罚的近端方法

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摘要

This paper proposes a new continuous-time optimization solution that enables the computation of the portfolio problem (based on the utility option pricing and the shortfall risk minimization). We first propose a dynamical stock price process, and then, we transform the solution to a continuous-time discrete-state Markov decision processes. The market behavior is characterized by considering arbitrage-free and assessing transaction costs. To solve the problem, we present a proximal optimization approach, which considers time penalization in the transaction costs and the utility. In order to include the restrictions of the market, as well as those that imposed by the continuous-time space, we employ the Lagrange multipliers approach. As a result, we obtain two different equations: one for computing the portfolio strategies and the other for computing the Lagrange multipliers. Each equation in the portfolio is an optimization problem, for which the necessary condition of a maximum/minimum is solved employing the gradient method approach. At each step of the iterative proximal method, the functional increases and finally converges to a final portfolio. We show the convergence of the method. A numerical example showing the effectiveness of the proposed approach is also developed and presented.
机译:本文提出了一种新的连续时间优化解决方案,可以计算投资组合问题(基于实用程序选项定价和短缺风险最小化)。我们首先提出了一种动态股票价格过程,然后,我们将解决方案转换为连续时间离散状态马尔可夫决策过程。市场行为的特点是考虑无套利和评估交易成本。为了解决问题,我们提出了一种近端优化方法,其在交易成本和实用程序中考虑了时间惩罚。为了包括市场的限制,以及那些由连续时间空间强加的限制,我们采用了拉格朗日乘法器方法。结果,我们获得了两个不同的等式:一个用于计算投资组合策略,另一个用于计算拉格朗日乘法器。产品组合中的每个方程是优化问题,其中解决了采用梯度方法方法的最大/最小的必要条件。在迭代近端方法的每个步骤中,功能增加,最后收敛到最终的组合。我们展示了该方法的收敛性。还开发和呈现了显示所提出的方法的有效性的数值示例。

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