Endogeneity of marketing variables in multicategory choice models

Harald Hruschka
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Abstract

Abstract A regressor is endogenous if it is correlated with the unobserved residual of a model. Ignoring endogeneity may lead to biased coefficients. We deal with the omitted variable bias that arises if firms set marketing variables considering factors (demand shocks) that researchers do not observe. Whereas publications on sales response or brand choice models frequently take the potential endogeneity of marketing variables into account, multicategory choice models provide a different picture. To consider endogeneity in multicategory choice models, we follow a two-step Gaussian copula approach. The first step corresponds to an individual-level random coefficient version of the multivariate logit model. We analyze yearly shopping data for one specific grocery store, referring to 29 product categories. If the assumption of a Gaussian correlation structure is met, the copula approach indicates the endogeneity of a category-specific marketing variable in about 31% of the categories. The majority of marketing variables rated as endogenous are positively correlated with the omitted variable, implying that ignoring endogeneity leads to an overestimation of the coefficients of the respective marketing variable. Finally, we investigate whether taking endogeneity into account by the copula approach leads to different managerial implications. In this regard, we demonstrate that for our data ignoring endogeneity often suggests a level of marketing activity that is too high.
多品类选择模型中营销变量的内生性
如果回归量与模型的未观测残差相关,则回归量是内生的。忽略内生性可能导致系数偏倚。我们处理省略变量偏差,如果企业设置营销变量考虑因素(需求冲击),研究者没有观察到。然而,关于销售反应或品牌选择模型的出版物经常考虑到营销变量的潜在内生性,多品类选择模型提供了不同的画面。为了考虑多类别选择模型的内生性,我们采用了两步高斯copula方法。第一步对应于多元logit模型的个人水平随机系数版本。我们分析了一家特定杂货店的年度购物数据,涉及29种产品类别。如果满足高斯相关结构的假设,则copula方法表明约31%的类别中存在特定类别的营销变量的内生性。大多数被评为内生的营销变量与被省略的变量正相关,这意味着忽略内生性会导致对各自营销变量系数的高估。最后,我们研究了是否考虑内质性的copula方法会导致不同的管理含义。在这方面,我们证明,对于我们的数据忽略内生性往往表明营销活动的水平太高。
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