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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian additive adaptive basis tensor product models for modeling high dimensional surfaces: an application to high-throughput toxicity testing
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Bayesian additive adaptive basis tensor product models for modeling high dimensional surfaces: an application to high-throughput toxicity testing

机译:贝叶斯添加剂自适应基础张量产品模型用于建模高尺寸表面:高通量毒性测试的应用

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摘要

Many modern datasets are sampled with error from complex high-dimensional surfaces. Methods such as tensor product splines or Gaussian processes are effective and well suited for characterizing a surface in two or three dimensions, but they may suffer from difficulties when representing higher dimensional surfaces. Motivated by high throughput toxicity testing where observed dose-response curves are cross sections of a surface defined by a chemical's structural properties, a model is developed to characterize this surface to predict untested chemicals' dose-responses. This manuscript proposes a novel approach that models the multidimensional surface as a sum of learned basis functions formed as the tensor product of lower dimensional functions, which are themselves representable by a basis expansion learned from the data. The model is described and a Gibbs sampling algorithm is proposed. The approach is investigated in a simulation study and through data taken from the US EPA's ToxCast high throughput toxicity testing platform.
机译:许多现代数据集采用来自复杂的高维表面的错误进行采样。诸如张量产品样条或高斯工艺的方法是有效的,并且非常适合于在两个或三维中表征表面,但是当代表更高的尺寸表面时它们可能遭受困难。由高通量毒性测试的激励,其中观察剂量 - 响应曲线是由化学结构特性定义的表面的横截面,开发了一种模型以表征该表面以预测未测试的化学品的剂量 - 反应。该稿件提出了一种新颖的方法,该方法将多维表面模拟为形成为较低尺寸函数的张量产物的学习基本函数的总和,它们本身可以通过从数据学习的基础扩展来表示。描述了模型,提出了一种GIBBS采样算法。该方法在模拟研究中进行了研究,并通过来自美国EPA的ToxCast高通量毒性测试平台的数据。

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