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Forecasting with cue information: A comparison of multiple regression with alternative forecasting approaches

机译:带有提示信息的预测:多元回归与其他预测方法的比较

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摘要

Multiple linear regression (MLR) is a popular method for producing forecasts when data on relevant independent variables (or cues) is available. The accuracy of the technique in forecasting the impact on Greek TV audience shares of programmes showing sport events is compared with forecasts produced by: (1) a simple bivariate regression model, (2) three different types of artificial neural network, (3) three forms of nearest neighbour analysis and (4) human judgment. MLR was found to perform relatively poorly. The application of Theil's bias decomposition and a Brunswik lens decomposition suggested that this was because of its inability to handle complex non-linearities in the relationship between the dependent variable and the cues and its tendency to overfit the in-sample data. Much higher accuracy was obtained from forecasts based on a simple bivariate regression model, a simple nearest neighbour procedure and from two of the types of artificial neural network. (c) 2006 Elsevier B.V. All rights reserved.
机译:当有关相关自变量(或线索)的数据可用时,多元线性回归(MLR)是一种用于生成预测的流行方法。将该技术预测显示体育赛事的节目对希腊电视观众份额的影响的准确性与以下各项产生的预测进行了比较:(1)一个简单的二元回归模型;(2)三种不同类型的人工神经网络;(3)三种最近邻分析的形式和(4)人为判断。发现MLR的性能相对较差。 Theil偏倚分解和Brunswik透镜分解的应用表明,这是因为它无法处理因变量和线索之间的关系中的复杂非线性,并且其倾向于过度拟合样本数据。从基于简单的双变量回归模型,简单的最近邻居程序以及两种人工神经网络类型的预测中获得的准确性更高。 (c)2006 Elsevier B.V.保留所有权利。

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