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Showing papers by "William G. Macready published in 2004"


Proceedings ArticleDOI
04 Jul 2004
TL;DR: A general methodology for addressing the need for computationally inexpensive surrogate models and an accompanying method for selecting small designs that uses non-stationary Gaussian processes is explored.
Abstract: Computer experiments often require dense sweeps over input parameters to obtain a qualitative understanding of their response. Such sweeps can be prohibitively expensive, and are unnecessary in regions where the response is easy predicted; well-chosen designs could allow a mapping of the response with far fewer simulation runs. Thus, there is a need for computationally inexpensive surrogate models and an accompanying method for selecting small designs. We explore a general methodology for addressing this need that uses non-stationary Gaussian processes. Binary trees partition the input space to facilitate non-stationarity and a Bayesian interpretation provides an explicit measure of predictive uncertainty that can be used to guide sampling. Our methods are illustrated on several examples, including a motivating example involving computational fluid dynamics simulation of a NASA reentry vehicle.

67 citations