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On data-based optimal stopping under stationarity and ergodicity

机译:平稳性和遍历性下基于数据的最优停车

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摘要

The problem of optimal stopping with finite horizon in discrete time is considered in view of maximizing the expected gain. The algorithm proposed in this paper is completely nonparametric in the sense that it uses observed data from the past of the process up to time ?n+1, n σ N, not relying on any specific model assumption. Kernel regression estimation of conditional expectations and prediction theory of individual sequences are used as tools. It is shown that the algorithm is universally consistent: the achieved expected gain converges to the optimal value for n→∞whenever the underlying process is stationary and ergodic. An application to exercising American options is given, and the algorithm is illustrated by simulated data.
机译:考虑到最大化期望增益,考虑了离散时间中有限水平的最佳停止问题。本文所提出的算法在某种意义上是完全非参数的,因为它使用了从过程的过去到时间ηn+ 1,nσN的观测数据,而不依赖于任何特定的模型假设。使用条件期望的核回归估计和单个序列的预测理论作为工具。结果表明,该算法具有普遍的一致性:无论基础过程是平稳的还是遍历遍历的,对于n→∞,所获得的预期增益都收敛于最优值。给出了行使美式期权的应用,并通过仿真数据说明了该算法。

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