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Analyzing Moment-to-Moment Data Using a Bayesian Functional Linear Model: Application to TV Show Pilot Testing

机译:使用贝叶斯函数线性模型分析矩对矩数据:在电视节目试播测试中的应用

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Researchers often collect continuous consumer feedback (moment-to-moment, or MTM, data) to understand how consumers respond to a variety of experiences (e.g., viewing a TV show, undergoing a colonoscopy). Analyzing how MTM judgments are integrated into overall evaluations allows researchers to determine how the structure of an experience influences consumers' post-experience satisfaction. However, this analysis is challenging because of the functional nature of MTM data. As such, previous research has typically been limited to identifying the influence of heuristics, such as relying on the average intensity, peak, and ending. We develop a Bayesian functional linear model to study how the different "moments" in the MTM data contribute to the overall judgment. Our approach incorporates a (temporally) weighted average of MTM data as well as specific "patterns" such as peak and trough, thus nesting previous approaches such as the "peak-end" rule as special cases. We apply our methodology to analyze data on TV show pilots collected by CBS. Our results reveal several interesting empirical findings. First, the last quintile of a TV show is weighted about four times as much as each of the first four quintiles. Second, patterns such as peak and trough do not play substantial roles in driving overall evaluations for TV shows. Finally, the last quintile is more important for procedural dramas than for serial dramas. We discuss the managerial implications of our results and other potential applications of our general methodology.
机译:研究人员通常会收集持续的消费者反馈(瞬间到瞬间或MTM数据),以了解消费者如何响应各种体验(例如,观看电视节目,进行结肠镜检查)。分析MTM判断如何整合到总体评估中,可以使研究人员确定体验的结构如何影响消费者的体验后满意度。但是,由于MTM数据的功能性质,该分析具有挑战性。因此,以前的研究通常仅限于确定启发式方法的影响,例如依赖于平均强度,峰值和终止。我们开发了一个贝叶斯函数线性模型,以研究MTM数据中不同的“时刻”如何影响总体判断。我们的方法结合了(临时)MTM数据的加权平均值以及特定的“模式”(例如峰和谷),因此将以前的方法(例如“峰值”法则)嵌套为特例。我们运用我们的方法来分析CBS收集的电视节目飞行员的数据。我们的结果揭示了一些有趣的经验发现。首先,电视节目的最后五分之一的权重大约是前四个五分之一的四倍。其次,诸如高峰和低谷之类的模式在推动电视节目的整体评估中没有实质性的作用。最后,对于程序剧而言,最后五分之一要比连续剧更重要。我们讨论了结果的管理含义以及一般方法的其他潜在应用。

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