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A Bayesian methodology for simultaneously detecting and estimating regime change points and variable selection in multiple regression models for marketing research

机译:在市场研究的多个回归模型中同时检测和估计制度变更点和变量选择的贝叶斯方法

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摘要

We present a Bayesian change point multiple regression methodology which simultaneously estimates the location of change points/regimes, the corresponding subset of independent variables per regime, as well as the associated regimes' regression parameters. Unlike existing switching multiple regression models, our method does not require the presence of all independent variables in each regime to detect change points. This allows us to relax the minimum size constraint on each regime as fewer observations are needed to estimate the unknown regression coefficients. Thus our method provides a means to search for small regimes where only a few independent variables are significant. Note that accuracy of change points can drastically affect the identified models within each regime. As the number of change points in the data is typically unknown, we have provided a probability based model selection heuristic to determine its value. Both synthetic and real data sets are utilized to demonstrate that our procedure can yield better fitted models over aggregate OLS regression models and traditional MLE based regime switching models. Furthermore, an actual prescription drug data application involving a promotion response model is used to gainfully illustrate the methodology.
机译:我们提出了一种贝叶斯变化点多元回归方法,该方法可以同时估计变化点/区域的位置,每个方案的独立变量的相应子集,以及相关方案的回归参数。与现有的转换多元回归模型不同,我们的方法不需要在每个方案中都存在所有自变量来检测变化点。这使我们可以放宽每个方案的最小尺寸限制,因为需要更少的观察来估计未知回归系数。因此,我们的方法提供了一种搜索只有少数几个自变量有意义的小体制的方法。请注意,更改点的准确性会严重影响每个方案中已识别的模型。由于数据中变化点的数量通常是未知的,因此我们提供了一种基于概率的模型选择启发式方法来确定其值。综合数据集和实际数据集均被用来证明我们的程序比总的OLS回归模型和传统的基于MLE的方案切换模型能产生更好的拟合模型。此外,使用涉及促销响应模型的实际处方药数据应用程序来有效地说明该方法。

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