Fuzzy Clustering Based Regression Model Forecasting: Weighted By Gustafson-Kessel Algorithm

N. Erilli
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Abstract

Regression analysis is one of the well-known methods of multivariate analysis and it is efficiently used in many research fields, especially forecasting problems. In order for the results of regression analysis to be effective, some assumptions must be valid. One of these assumptions is the heterogeneity problem. One of the methods used to solve this problem is the weighted regression method. Weighted regression is a useful method when one of the least-squares assumptions of constant variance in the residuals is violated (heteroscedasticity). This procedure can minimize the sum of weighted squared residuals to produce residuals with a uniform variance if the appropriate weight will be used. (homoscedasticity). In this study, the Gustafson-Kessel method, one of the fuzzy clustering analysis method, is used to determine weights for weighted regression analysis. GustafsonKessel's method is based on the minimization of the sum of weighted squared distances which is used Mahalanobis distance, between the data points and the cluster centres. With the fuzzy clustering method, each observation value is bound to the specified clusters in a specific order of membership. These membership degrees will be calculated as weights in the weighted regression analysis and estimation work will be done. In application, 5 simulation and 1 real-time data were estimated by the proposed method. The results were interpreted by comparing with Robust Methods (M and S estimator) and weighted with FCM Regression analysis. 2020 Turkish Journal of Forecasting by Giresun University, Forecast Research Laboratory is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
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基于Gustafson-Kessel算法加权的模糊聚类回归模型预测
回归分析是众所周知的多变量分析方法之一,在许多研究领域,特别是预测问题中得到了有效的应用。为了使回归分析的结果是有效的,一些假设必须是有效的。其中一个假设是异质性问题。解决这一问题的方法之一是加权回归法。当残差中方差恒定的最小二乘假设之一被违反(异方差)时,加权回归是一种有用的方法。如果使用适当的权重,则该程序可以最小化加权平方残差的总和,以产生具有均匀方差的残差。(方差齐性)。本研究采用模糊聚类分析方法之一的Gustafson-Kessel法确定权重进行加权回归分析。GustafsonKessel的方法是基于数据点和聚类中心之间的加权平方距离之和的最小化,该方法使用马氏距离。使用模糊聚类方法,每个观测值以特定的隶属度顺序绑定到指定的聚类中。这些隶属度将在加权回归分析和估计工作中作为权重计算。在实际应用中,利用该方法对5个仿真数据和1个实时数据进行了估计。通过比较稳健方法(M和S估计器)和FCM回归分析加权来解释结果。2020土耳其预测杂志由Giresun大学预测研究实验室根据知识共享署名-相同方式共享4.0国际许可协议授权。
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