函数估计中模型选择的信息度量

T. Alpcan
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引用次数: 0

摘要

提出了一种有限信息下的函数估计模型选择框架,其中只有一小组(有噪声的)数据点可用于推断感兴趣的非凸未知函数。该框架引入了量化模型复杂性的信息论度量,并用于函数估计问题的多目标表述。研究了观测所得信息与模型复杂度之间的复杂关系。将该框架应用于高斯过程回归中的超参数选择问题。由于其通用性,所引入的框架适用于各种设置和具有信息限制的实际问题,如信道估计,黑盒优化和双重控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information metrics for model selection in function estimation
A model selection framework is presented for function estimation under limited information, where only a small set of (noisy) data points are available for inferring the nonconvex unknown function of interest. The framework introduces information-theoretic metrics which quantify model complexity and are used in a multi-objective formulation of the function estimation problem. The intricate relationship between information obtained through observations and model complexity is investigated. The framework is applied to the hyperparameter selection problem in Gaussian Process Regression. As a result of its generality, the framework introduced is applicable to a variety of settings and practical problems with information limitations such as channel estimation, black-box optimisation, and dual control.
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