From Noise to Bias: Overconfidence in New Product Forecasting

D. Feiler, Jordan D. Tong
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引用次数: 8

Abstract

We study decision behavior in the selection, forecasting, and production for a new product. In a stylized behavioral model and five experiments, we generate new insight into when and why this combination of tasks can lead to overconfidence (specifically, overestimating the demand). We theorize that cognitive limitations lead to noisy interpretations of signal information, which itself is noisy. Because people are statistically naive, they directly use their noisy interpretation of the signal information as their forecast, thereby underaccounting for the uncertainty that underlies it. This process leads to unbiased forecast errors when considering products in isolation, but leads to positively biased forecasts for the products people choose to launch due to a selection effect. We show that this selection-driven overconfidence can be sufficiently problematic that, under certain conditions, choosing the product randomly can actually yield higher profits than when individuals themselves choose the product to launch. We provide mechanism evidence by manipulating the interpretation noise through information complexity—showing that even when the information is equivalent from a Bayesian perspective, more complicated information leads to more noise, which, in turn, leads to more overconfidence in the chosen products. Finally, we leverage this insight to show that getting a second independent forecast for a chosen product can significantly mitigate the overconfidence problem, even when both individuals have the same information. This paper was accepted by Charles Corbett, operations management.
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从噪音到偏差:新产品预测中的过度自信
我们研究新产品在选择、预测和生产中的决策行为。在一个程式化的行为模型和五个实验中,我们对何时以及为什么这种任务组合会导致过度自信(特别是高估需求)产生了新的见解。我们的理论是,认知限制导致对信号信息的嘈杂解释,而信号信息本身就是嘈杂的。因为人们在统计上是天真的,他们直接使用他们对信号信息的嘈杂解释作为他们的预测,从而低估了其背后的不确定性。当孤立地考虑产品时,这个过程会导致无偏预测误差,但由于选择效应,会导致人们选择推出的产品的正偏预测。我们表明,这种选择驱动的过度自信可能会产生足够的问题,在某些条件下,随机选择产品实际上可以比个人自己选择产品时产生更高的利润。我们通过信息复杂性操纵解释噪声提供了机制证据,表明即使从贝叶斯的角度来看,信息是等效的,更复杂的信息也会导致更多的噪声,这反过来又会导致对所选产品的过度自信。最后,我们利用这一见解来表明,即使两个人拥有相同的信息,为所选产品获得第二个独立预测也可以显著缓解过度自信问题。这篇论文被运营管理的Charles Corbett接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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