The Role of "Live" in Livestreaming Markets: Evidence Using Orthogonal Random Forest

Ziwei Cong, Jia Liu, Puneet Manchanda
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引用次数: 3

Abstract

The common belief about the growing medium of livestreaming is that its value lies in its "live" component. In this paper, we leverage data from a large livestreaming platform to examine this belief. We are able to do this as this platform also allows viewers to purchase the recorded version of the livestream. We summarize the value of livestreaming content by estimating how demand responds to price before, on the day of, and after the livestream. We do this by proposing a generalized Orthogonal Random Forest framework. This framework allows us to estimate heterogeneous treatment effects in the presence of high-dimensional confounders whose relationships with the treatment policy (i.e., price) are complex but partially known. We find significant dynamics in the price elasticity of demand over the temporal distance to the scheduled livestreaming day and after. Specifically, demand gradually becomes less price sensitive over time to the livestreaming day and is inelastic on the livestreaming day. Over the post-livestream period, demand is still sensitive to price, but much less than the pre-livestream period. This indicates that the value of livestreaming persists beyond the live component. Finally, we provide suggestive evidence for the likely mechanisms driving our results. These are quality uncertainty reduction for the patterns pre- and post-livestream and the potential of real-time interaction with the creator on the day of the livestream.
“直播”在直播市场中的作用:使用正交随机森林的证据
对于不断增长的直播媒体,人们普遍认为它的价值在于它的“直播”成分。在本文中,我们利用来自大型直播平台的数据来检验这一信念。我们能够做到这一点,因为这个平台也允许观众购买直播的录制版本。我们通过估算直播前、直播当天和直播后的需求对价格的反应来总结直播内容的价值。为此,我们提出了一个广义正交随机森林框架。这个框架允许我们在高维混杂因素存在的情况下估计异质性治疗效果,这些混杂因素与治疗政策(即价格)的关系是复杂的,但部分已知。我们发现需求的价格弹性在预定直播日和之后的时间距离上有显著的动态变化。具体来说,随着时间的推移,需求对直播日的价格敏感性逐渐降低,并且在直播日没有弹性。在直播后阶段,需求仍然对价格敏感,但远低于直播前阶段。这表明,直播的价值持续存在于直播组件之外。最后,我们为驱动我们结果的可能机制提供了启发性证据。这些是减少直播前后模式的质量不确定性,以及在直播当天与创作者进行实时互动的潜力。
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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