论文标题
深入加强学习方法和经济学应用的全面审查
Comprehensive Review of Deep Reinforcement Learning Methods and Applications in Economics
论文作者
论文摘要
经济学深入增强学习方法(DRL)方法的普及已成倍增加。 DRL通过加强学习(RL)和深度学习(DL)的多种功能,用于处理复杂的动态商业环境,提供了巨大的机会。 DRL的特征是可伸缩性,其可能与嘈杂和非线性经济数据模式相结合,以应用于高维问题。在这项工作中,我们首先考虑了经济学不同应用中DL,RL和Deep RL方法的简要回顾,从而提供了对艺术状态的深入了解。此外,还研究了DRL应用于经济应用的体系结构,以强调复杂性,鲁棒性,准确性,绩效,计算任务,风险限制和盈利能力。调查结果表明,与传统算法相比,DRL可以提供更好的性能和更高的准确性,同时在存在风险参数和不断增长的不确定性的情况下面临真正的经济问题。
The popularity of deep reinforcement learning (DRL) methods in economics have been exponentially increased. DRL through a wide range of capabilities from reinforcement learning (RL) and deep learning (DL) for handling sophisticated dynamic business environments offers vast opportunities. DRL is characterized by scalability with the potential to be applied to high-dimensional problems in conjunction with noisy and nonlinear patterns of economic data. In this work, we first consider a brief review of DL, RL, and deep RL methods in diverse applications in economics providing an in-depth insight into the state of the art. Furthermore, the architecture of DRL applied to economic applications is investigated in order to highlight the complexity, robustness, accuracy, performance, computational tasks, risk constraints, and profitability. The survey results indicate that DRL can provide better performance and higher accuracy as compared to the traditional algorithms while facing real economic problems at the presence of risk parameters and the ever-increasing uncertainties.