Nonlinear analysis of retail performance

D. Vaccari
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引用次数: 0

Abstract

A new class of models is proposed for use in economic correlation and forecasting. The new model, termed the multivariable polynomial regression (MPR) model, is essentially a multiple regression model with polynomial and cross-product (interaction) terms. For example, if Y is a function of Q, R, and S, terms can be included such as QR/sup 2/S or Q/sup 3/S. MPR models can be fitted using conventional multiple regression software, although an automated program facilitates the analysis. Only terms which are statistically significant are retained in the model. MPR models are likely to be applicable to low-to-moderate dimensionality problems as are encountered in economics. If the number of independent variables is not too great, MPR models compare favorably to artificial neural network (ANN) models: MPR models can provide a better fit with fewer coefficients; as a result there is less overfitting of "memorizing" of data; the fitting procedure converges absolutely; MPR models result in a simple explicit equation for prediction or analysis; standard statistical tests can be applied to all coefficients and forecast predictions. The technique was applied to correlation of the performance of retail stores to a set of thirteen potential causative variables. An MPR model was developed which was able to explain 82% of the variation in the gross margin of the stores under study.
零售业绩的非线性分析
提出了一类用于经济关联和预测的新模型。这个新模型被称为多变量多项式回归(MPR)模型,本质上是一个具有多项式和交叉积(相互作用)项的多元回归模型。例如,如果Y是Q、R和S的函数,则可以包含QR/sup 2/S或Q/sup 3/S等项。MPR模型可以使用传统的多元回归软件进行拟合,尽管自动化程序有助于分析。只有统计上显著的项才会保留在模型中。MPR模型可能适用于经济学中遇到的中低维问题。如果自变量的数量不太大,MPR模型优于人工神经网络(ANN)模型:MPR模型可以用更少的系数提供更好的拟合;因此,“记忆”数据的过度拟合较少;拟合过程绝对收敛;MPR模型为预测或分析提供了一个简单的显式方程;标准统计检验可适用于所有系数和预测预测。该技术被应用于零售商店的业绩与一组13个潜在的致病变量的相关性。开发了一个MPR模型,该模型能够解释研究中商店毛利率的82%的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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