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Hybrid stock-investment models and asset allocation

机译:混合股票投资模型和资产分配

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We consider a class of hybrid stock-investment models involving geometric Brownian motions modulated by a continuous-time Markov chain. Our objective is to find nearly optimal asset allocation strategies to maximize the expected returns. The use of the Markov chain stems from the consideration of capturing the market trends as well as various economic factors. To incorporate various economic factors into consideration, the underlying Markov chain inevitably has a large state space. To reduce the complexity, we suggest a hierarchical approach resulting in singularly perturbed switching diffusion processes. By aggregating the states of the Markov chains in each weakly irreducible class into a single state, we obtain a limit switching diffusion process. Using such asymptotic properties, we then obtain nearly optimal asset allocation policies.
机译:我们考虑一类混合证券投资模型,该模型涉及由连续时间马尔可夫链调制的几何布朗运动。我们的目标是找到近乎最佳的资产配置策略,以使预期收益最大化。马尔可夫链的使用源于对捕获市场趋势以及各种经济因素的考虑。为了考虑各种经济因素,潜在的马尔可夫链不可避免地具有很大的国家空间。为了降低复杂度,我们建议采用分层方法,以使开关扩散过程受到奇异的扰动。通过将每个弱不可约类中的马尔可夫链的状态汇总为一个状态,我们得到了一个极限切换扩散过程。利用这种渐近性质,我们便获得了近乎最佳的资产配置政策。

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