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Neural Networks and the Multinomial Logit for Brand Choice Modelling: a Hybrid Approach

机译:神经网络和用于品牌选择建模的多项式Lo​​git:一种混合方法

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The study of brand choice decisions with multiple alternatives has been successfully modelled for more than a decade using the Multinomial Logit model. Recently, neural network modelling has received increasing attention and has been applied to an array of marketing problems such as market response or segmentation. We show that a Feedforward Neural Network with Softmax output units and shared weights can be viewed as a generalization of the Multinomial Logit model. The main difference between the two approaches lies in the ability of neural networks to model non-linear preferences with few (if any) a priori assumptions about the nature of the underlying utility function, while the Multinomial Logit can suffer from a specification bias. Being complementary, these approaches are combined into a single framework. The neural network is used as a diagnostic and specification tool for the Logit model, which will provide interpretable coefficients and significance statistics. The method is illustrated on an artificial dataset where the market is heterogeneous. We then apply the approach to panel scanner data of purchase records, using the Logit to analyse the non-linearities detected by the neural network.
机译:十多年来,使用多项式Lo​​git模型成功地模拟了具有多种选择的品牌选择决策。最近,神经网络建模越来越受到关注,并已应用于一系列营销问题,例如市场响应或细分。我们表明,具有Softmax输出单位和共享权重的前馈神经网络可以看作是多项式Lo​​git模型的推广。两种方法之间的主要区别在于,神经网络能够以很少的(如果有的话)对基础效用函数的性质进行先验假设来对非线性偏好进行建模,而多项式Lo​​git可能会遭受规格偏差。作为补充,这些方法被组合到一个框架中。神经网络被用作Logit模型的诊断和规范工具,它将提供可解释的系数和显着性统计数据。在市场异构的人工数据集上说明了该方法。然后,我们使用Logit分析此方法对采购记录的面板扫描仪数据进行分析,以分析神经网络检测到的非线性。

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