Treatment Effects in Strategic Management: With an Application to Choosing Early Stage Venture Capital

Jorge Guzmán
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Abstract

This paper uses the Rubin Causal Model to formalize the treatment effects of a firm choice on its performance. Building from Porter, a firm choice can shape profitability through both strategy and operational effectiveness, but they are distinct in how they do so. The strategic treatment effect is the benefit that is predictable from a firm's characteristics (i.e., resources) and their joint configuration. The strategic determinant function is a mapping of resources to treatment effects, and the role of resource interactions in it determines the importance of coherence for a strategy. Under unconfoundedness, the strategic treatment effect, strategic determinant function, and coherence can be estimated in high-dimensional observational data using machine learning. I present an application estimating the gains from choosing venture capital as early stage financing versus other forms of capital. The results highlight the advantage of considering strategic benefits in this choice. For equity outcomes, there is no average treatment effect of early stage VC, but there is significant heterogeneity: some entrepreneurs can benefit substantially from raising early stage VC, while others be negatively affected. This heterogeneity is predictable from founder, industry and location characteristics. The estimated role of coherence in this choice is moderate. The formalizations in this paper also show that several additional assumptions are required when assessing strategic benefits compared to the usual causal inference. R code to replicate these functions will be included.
战略管理中的治疗效应:以早期风险投资选择为例
本文使用鲁宾因果模型来形式化企业选择对其绩效的处理效果。根据波特的理论,坚定的选择可以通过战略和运营效率来塑造盈利能力,但它们在如何做到这一点上是不同的。战略处理效应是从企业的特征(即资源)及其联合配置中可预测的收益。策略决定函数是资源到治疗效果的映射,资源相互作用在其中的作用决定了策略一致性的重要性。在无混杂情况下,利用机器学习可以估计高维观测数据的策略处理效果、策略决定函数和一致性。我提出了一个应用程序,估计选择风险资本作为早期融资与其他形式的资本的收益。结果突出了在这种选择中考虑战略利益的优势。对于股权结果,早期风险投资的处理效果不存在平均水平,但存在显著的异质性:一些企业家可以从早期风险投资中获得实质性收益,而另一些企业家则受到负面影响。这种异质性可以从创始人、行业和位置特征中预测出来。连贯性在这一选择中的估计作用是温和的。本文的形式化还表明,与通常的因果推理相比,在评估战略效益时需要几个额外的假设。R代码复制这些功能将包括在内。
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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