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The benefits of incorporating utility dependencies in finite mixture probit models

机译:将效用依赖项纳入有限混合概率模型中的好处

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We propose an application of a new finite mixture multinomial conditional probit (FM-MNCP) model that accommodates preference heterogeneity and explicitly accounts for utility dependencies between choice alternatives considering both local and background contrast effects. The latter is accomplished by using a one-factor structure for segment-specific covariance matrices allowing for nonzero off-diagonal covariance elements. We compare the model to a finite mixture multinomial independent probit (FM-MNIP) model that as well accommodates heterogeneity but assumes independence. That way, we address the potential benefits of a model that additionally accounts for dependencies over a model that accommodates heterogeneity only. Our model comparison is based on empirical data for smoothies and is assessed in terms of fit, holdout validation, and market share predictions. One of the main findings of our empirical study is that allowing for utility dependencies may counterbalance the effects of considering heterogeneity, and vice versa. Additional findings from a simulation study indicate that the FM-MNCP model outperforms the FM-MNIP model with respect to parameter recovery.
机译:我们提出了一种新的有限混合多项式条件条件位(FM-MNCP)模型的应用,该模型可适应偏好异质性,并同时考虑本地和背景对比效应,从而明确考虑选择方案之间的效用依赖性。后者是通过对段特定的协方差矩阵使用单因子结构来实现的,该结构允许非零的非对角协方差元素。我们将该模型与有限混合多项式独立概率模型(FM-MNIP)进行了比较,该模型还可以容纳异质性但假定独立性。这样,我们解决了模型的潜在好处,该模型另外考虑了仅容纳异质性的模型的依赖性。我们的模型比较基于圆滑的经验数据,并根据拟合,保持验证和市场份额预测进行评估。我们的经验研究的主要发现之一是,允许效用依赖性可以抵消考虑异质性的影响,反之亦然。仿真研究的其他结果表明,就参数恢复而言,FM-MNCP模型优于FM-MNIP模型。

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