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An actor-critic-based portfolio investment method inspired by benefit-risk optimization

机译:受利益风险优化启发的基于行为者-批判的证券投资方法

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摘要

How to get maximal benefit within a range of risk in securities market is a very interesting and widely concerned issue. Meanwhile, as there are many complex factors that affect securities' activity, such as the risk and uncertainty of the benefit, it is very difficult to establish an appropriate model for investment. Aiming at solving the curse of dimension and model disaster caused by the problem, we use the approximate dynamic programming to set up a Markov decision model for the multi-time segment portfolio with transaction cost. A model-based actor-critic algorithm under uncertain environment is proposed, where the optimal value function is obtained by iteration on the basis of the constrained risk range and a limited number of funds, and the optimal investment of each period is solved by using the dynamic planning of limited number of fund ratio. The experiment indicated that the algorithm could get a stable investment, and the income could grow steadily.
机译:如何在证券市场的一定风险范围内获得最大利益是一个非常有趣和广泛关注的问题。同时,由于影响证券活动的因素很多,例如收益的风险和不确定性,因此很难建立合适的投资模型。为了解决由问题引起的维数和模型灾难的祸害,我们采用近似动态规划的方法,建立了具有交易成本的多时间段投资组合的马尔可夫决策模型。提出了一种在不确定环境下基于模型的actor-critic算法,该算法在受限风险范围和有限数量资金的基础上,通过迭代获得最优价值函数,并通过求解最优投资期来求解。动态规划有限数量的资金比例。实验表明,该算法可以得到稳定的投资,收益可以稳定增长。

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