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Data-based structure selection for unified discrete grey prediction model

机译:统一离散灰色预测模型的基于数据的结构选择

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Grey models have been reported to be promising for time series prediction with small samples, but the diversity kinds of model structures and modelling assumptions restrains their further applications and developments. In this paper, a novel grey prediction model, named discrete grey polynomial model, is proposed to unify a family of univariate discrete grey models. The proposed model has the capacity to represent most popular homogeneous and non-homogeneous discrete grey models and furthermore, it can induce some other novel models, thereby highlighting the relationship between the models and their structures and assumptions. Based on the proposed model, a data-based algorithm is put forward to select the model structure adaptively. It reduces the requirement for modeler's knowledge from an expert system perspective. Two numerical experiments with large-scale simulations are conducted and the results show its effectiveness. In the end, two real case tests show that the proposed model benefits from its adaptive structure and produces reliable multi-step ahead predictions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:据报道,灰色模型有望用于小样本的时间序列预测,但是模型结构和建模假设的多样性限制了它们的进一步应用和发展。本文提出了一种新颖的灰色预测模型,称为离散灰色多项式模型,以统一一族单变量离散灰色模型。所提出的模型具有表示最流行的同构和非同构离散灰色模型的能力,此外,它还可以归纳出一些其他新颖的模型,从而突出了模型与其结构和假设之间的关系。基于所提出的模型,提出了一种基于数据的算法来自适应地选择模型结构。从专家系统的角度来看,它减少了对建模者知识的需求。进行了两个具有大规模模拟的数值实验,结果表明了其有效性。最后,两个真实案例测试表明,所提出的模型受益于其自适应结构,并产生了可靠的多步提前预测。 (C)2019 Elsevier Ltd.保留所有权利。

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