论文标题

强化学习算法的混合平均野外控制游戏

Reinforcement Learning Algorithm for Mixed Mean Field Control Games

论文作者

Angiuli, Andrea, Detering, Nils, Fouque, Jean-Pierre, Lauriere, Mathieu, Lin, Jimin

论文摘要

我们提出了一个新的组合\ textIt {平均字段控制游戏}(MFCG)问题,该问题可以解释为协作组之间的竞争游戏及其解决方案之间的竞争游戏,为组之间的NASH平衡。玩家在每个组中协调他们的策略。一个例子是修改经典交易者的问题。一群交易者最大化自己的财富。他们面临交易,自己的终端职位以及小组中平均持有的成本。资产价格受所有代理商的交易影响。我们提出了三个时期的增强学习算法,以近似于此类MFCG问题的解决方案。我们在基准线性季度规格上测试了我们提供分析解决方案的算法。

We present a new combined \textit{mean field control game} (MFCG) problem which can be interpreted as a competitive game between collaborating groups and its solution as a Nash equilibrium between groups. Players coordinate their strategies within each group. An example is a modification of the classical trader's problem. Groups of traders maximize their wealth. They face cost for their transactions, for their own terminal positions, and for the average holding within their group. The asset price is impacted by the trades of all agents. We propose a three-timescale reinforcement learning algorithm to approximate the solution of such MFCG problems. We test the algorithm on benchmark linear-quadratic specifications for which we provide analytic solutions.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源