Gaussian Process Regression (GPR) Representation in Predictive Model Markup Language (PMML).

IF 0.8 Q4 ENGINEERING, MANUFACTURING Smart and Sustainable Manufacturing Systems Pub Date : 2017-01-01 Epub Date: 2017-03-29 DOI:10.1520/SSMS20160008
J Park, D Lechevalier, R Ak, M Ferguson, K H Law, Y-T T Lee, S Rachuri
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引用次数: 30

Abstract

This paper describes Gaussian process regression (GPR) models presented in predictive model markup language (PMML). PMML is an extensible-markup-language (XML) -based standard language used to represent data-mining and predictive analytic models, as well as pre- and post-processed data. The previous PMML version, PMML 4.2, did not provide capabilities for representing probabilistic (stochastic) machine-learning algorithms that are widely used for constructing predictive models taking the associated uncertainties into consideration. The newly released PMML version 4.3, which includes the GPR model, provides new features: confidence bounds and distribution for the predictive estimations. Both features are needed to establish the foundation for uncertainty quantification analysis. Among various probabilistic machine-learning algorithms, GPR has been widely used for approximating a target function because of its capability of representing complex input and output relationships without predefining a set of basis functions, and predicting a target output with uncertainty quantification. GPR is being employed to various manufacturing data-analytics applications, which necessitates representing this model in a standardized form for easy and rapid employment. In this paper, we present a GPR model and its representation in PMML. Furthermore, we demonstrate a prototype using a real data set in the manufacturing domain.

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预测模型标记语言(PMML)中的高斯过程回归(GPR)表示。
本文描述了用预测模型标记语言(PMML)表示的高斯过程回归(GPR)模型。PMML是一种基于可扩展标记语言(XML)的标准语言,用于表示数据挖掘和预测分析模型,以及预处理和后处理数据。之前的PMML版本PMML 4.2没有提供表示概率(随机)机器学习算法的功能,而这种算法被广泛用于构建考虑相关不确定性的预测模型。新发布的PMML 4.3版本,其中包括GPR模型,提供了新的特性:预测估计的置信范围和分布。这两个特征为不确定度量化分析奠定了基础。在各种概率机器学习算法中,探地雷达由于能够在不预定义一组基函数的情况下表示复杂的输入和输出关系,以及通过不确定性量化预测目标输出而被广泛用于逼近目标函数。GPR正被用于各种制造数据分析应用,这就需要以标准化的形式表示该模型,以便于快速使用。本文提出了一种探地雷达模型及其在PMML中的表示。此外,我们还使用制造领域的真实数据集演示了原型。
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来源期刊
Smart and Sustainable Manufacturing Systems
Smart and Sustainable Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.50
自引率
0.00%
发文量
17
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