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Modelling method with missing values based on clustering and support vector regression

机译:基于聚类和支持向量回归的缺失值建模方法

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摘要

Most real application processes belong to a complex nonlinear system with incomplete information. It is difficult to estimate a model by assuming that the data set is governed by a global model. Moreover, in real processes, the available data set is usually obtained with missing values. To overcome the shortcomings of global modeling and missing data values, a new modeling method is proposed. Firstly, an incomplete data set with missing values is partitioned into several clusters by a K-means with soft constraints (KSC) algorithm, which incorporates soft constraints to enable clustering with missing values. Then a local model based on each group is developed by using SVR algorithm, which adopts a missing value insensitive (MVI) kernel to investigate the missing value estimation problem. For each local model, its valid area is gotten as well. Simulation results prove the effectiveness of the current local model and the estimation algorithm.
机译:大多数实际应用程序流程属于信息不完整的复杂非线性系统。通过假设数据集由全局模型控制很难估计模型。而且,在实际过程中,可用的数据集通常是在缺少值的情况下获得的。为了克服全局建模和数据值丢失的缺点,提出了一种新的建模方法。首先,通过带有软约束的K均值(KSC)算法将具有缺失值的不完整数据集划分为多个群集,该算法结合了软约束以使具有缺失值的聚类成为可能。然后利用SVR算法建立了基于每个组的局部模型,该模型采用缺失值不敏感(MVI)内核研究缺失值估计问题。对于每个局部模型,也将获得其有效区域。仿真结果证明了当前局部模型和估计算法的有效性。

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