首页> 外文期刊>International Journal of Research in Marketing >Uncovering audience preferences for concert features from single-ticket sales with a factor-analytic random-coefficients model
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Uncovering audience preferences for concert features from single-ticket sales with a factor-analytic random-coefficients model

机译:使用因子分析随机系数模型从单人票销售中发现观众对音乐会功能的偏好

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摘要

To better plan their programs, producers of performing arts events require forecasting models that relate ticket sales to the multiple features of a program. The framework we develop, test and implement uncovers audience preferences for the features of an event program from single-ticket sales while accounting for interactions among program features and for preference heterogeneity across markets. We develop a factor-analytic random-coefficients model that overcomes four major methodological challenges. First, the historical data available from each market is limited, preventing the estimation of models at the market level and requiring some form of shrinkage estimator that also takes into account the diversity in preferences across markets as well as the fact that preferences for the many (26 in our application) program features are correlated across markets, requiring the estimation of a large covariance matrix for these preferences across markets. Our proposed factor-analytic regression formulation parsimoniously captures the principal components of the correlated preferences and provides shrinkage estimates at the individual market level. The second challenge we face is the fact that orchestras differ on how they sell season subscriptions, leading to substantial unobserved effects on ticket sales across orchestras; an added benefit of our random-coefficients approach is that it incorporates a random effect that captures any shift in the dependent variable caused by unobservable factors across all events in each individual market, such as the unobservable effect of season subscriptions on single-ticket sales.the third methodological challenge is that program features are likely to interact requiring the estimation of a large set of pair-wise interactions. we solve this problem by mapping the interactions on a reduced space; arriving at a more parsimonious model formulation. the fourth methodological challenge relates to implementation of the model results beyond the relatively small sample of markets for which historical data were available. to overcome this limitation; we demonstrate how our model can be applied to markets not included in our sample; first using only managerial insight regarding the similarity between the focal market and the ones in our sample and by updating this subjective prior as ticket sales data become available.
机译:为了更好地计划他们的节目,表演艺术活动的制作者需要将门票销售与节目的多个功能相关联的预测模型。我们开发,测试和实施的框架从单人票销售中揭示了受众对活动计划功能的偏好,同时考虑了计划功能之间的相互作用以及跨市场的偏好异质性。我们开发了一种可以克服四个主要方法挑战的因子分析随机系数模型。首先,每个市场可用的历史数据是有限的,这阻止了在市场级别上对模型的估计,并且需要某种形式的收缩估计器,该估计器还考虑了跨市场的偏好的多样性以及对许多(我们的应用中有26个)程序功能与各个市场相关,因此需要针对这些跨市场的偏好估算较大的协方差矩阵。我们提出的因子分析回归公式可以简化捕获相关偏好的主要组成部分,并提供各个市场水平上的收缩估计。我们面临的第二个挑战是,乐团在销售季票的方式上有所不同,从而导致整个乐团的门票销售受到不可观的影响。我们的随机系数方法的另一个好处是,它合并了一个随机效应,该效应可以捕获因各个市场中所有事件中不可观察因素引起的因变量变化,例如,季票订购对单人票销售的不可观察影响。第三个方法上的挑战是程序功能可能会相互作用,因此需要估计大量的成对相互作用。我们通过在缩小的空间上映射交互来解决此问题;得出更简化的模型公式。第四种方法学挑战涉及超出可获得历史数据的相对较小市场样本的模型结果的实现。克服这一限制;我们演示了如何将我们的模型应用于样本中未包含的市场;首先仅使用有关焦点市场与样本中市场之间相似性的管理洞察力,并在获得门票销售数据时更新此主观先验。

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