2021
DOI: 10.1002/num.22844
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Cluster‐based gradient method for stochastic optimal control problems with elliptic partial differential equation constraint

Abstract: In this article, we establish a cluster-based gradient method (CGM) by combining K-means clustering algorithm and stochastic gradient descent (SGD). By clustering the sampling solutions, we use the cluster centroids to represent sampling data and give an estimate to the full gradient. It is well known that the full gradient descent (FGD) can provide the steepest descent direction for finding a local minimum of the desired stochastic control problems. However, the huge computational requirements, which is propo… Show more

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